-
M2()
family no longer requires row-wise removal of missing data to behave correctly. As such, thena.rm
argument has been removed as it is no longer required (requested by Ulrich Schroeders) -
Added support for latent regression ACOV/SE estimation with Oakes method in
mirt()
-
Related to both points below, general MLTM (Embretson, 1984) added when itemtype is specified as
PC1PL
and anitemdesign
set is used, where formula must include the name of the factor in the formula expressions. See examples in themirt
documentation (requested by Susan Embretson) -
Added
PC1PL
itemtype to more easily specify conjunctive models with slopes fixed to 1 and estimation of the latent variance term, mimicking theRasch
itemtype family -
mirt()
andmultipleGroup()
gainitemdesign
anditem.formula
arguments to fit fixed item design characteristics (e.g. LLTMs; Fischer, 1983) to all or a subset of items. Arguments are similar to those inmixedmirt()
, though currently not as flexible -
Partially-compensatory family of
itemtypes
now behave more consistently when loading structures specified where trace lines products are only computed for dimensions with non-zero slopes -
RCI()
gains ashiny
logical to create an interactive scoring interface
-
The
model
argument inbfactor()
can now be specified using themirt.model()
syntax to include more cognitively friendly tracking of item names and respective locations (requested by Afshin Khosravi) -
Add
reverse.score()
function for reverse scoring specific items within amatrix
ordata.frame
-
Fixed issue related to missing data patterns that resulted in bias when estimating the hyper-parameters in single and multi-group models (reported by Paul Jewsbury)
-
mirt.model()
syntax gains a negation operator for omitting specific observed/latent groups from specifications. For example, the following will omit "Group3" identifies from between groups equality constraint definitionsCONSTRAINB[-Group3] = ...
-
RMSD_DIF()
now supports datasets that follow vertical scaling structures (i.e., when groups answer some items but not others). Requested by Alexandre Jaloto -
M2()
functions now compute null model and SRMR fall all models whenever possible, including the latent class variance (reported by Hynek Cigler) -
VCOV memory leak bugfix for mixture models (see Github issue #247)
-
Standardized residuals for point estimates now returned in
personfit()
when passingreturn.resids=TRUE
(requested by Raymond Hernandez)
-
Fix for
DIF()
when sparse data included with mixed item formats (reported by Heather Leigh Kayton) -
When computing category-level information curves include the negative Hessian in computations (reported by Milica Kabic)
-
Allow missing data patterns in
personfit()
, as well as a new option to return all raw item by person residuals (requested by George Karabatsos) -
Fix Zero-inflated model example in
multipleGroup()
, which required the discontinuous trait location to be populated explicitly with acustomTheta
syntax (reported by Brooke Magnus) -
Empirical reliability estimates in
fscores()
andempirical_rxx()
include option to use the true score variance as an estimate of the observed score variance (suggested by Hynek Cigler)
-
technical
list gains anconstrain
argument for specifying equality constraints with negative relationships (e.g.,a12 = -a21
). Requested by Berend Terluin -
Added unipolar log‑logistic model (Lucke, 2015) itemtype, specified as
itemtype = 'ULL'
. Note that this automatically changes a number of internal defaults, such as using a log-normal(0,1) density for the latent traits, and where thetheta_lim
is specified to be positive -
Added complementary log‑log model (Shim, Bonifay, and Wiedermann, 2022) itemtype, specified as
itemtype = 'CLL'
-
Added
itemtype = '5PL'
model for unidimensional dichotomous data to included asymmetric response functions. Example inhelp(mirt)
also demonstrates asymmetric 2PL model as the 5PL itself is very unstable and requires strong priors -
Methods using Quasi-Monte Carlo integration post-convergence were not respecting correlated latent variable structures (reported by George Kephart when using
M2()
) -
Bugfix for
fscores()
when supplying mixture models that was introduced by changing previous classification default for latent class models (reported by Karel Veldkamp) -
residuals()
gains ap.adjust
argument for FWE control -
DRF()
gains aDIF.cat
argument to compute statistics on a per-category basis when studying polytomous items -
expected.test()
gains aprobs.only
logical to return probability functions for each category (only used whenindividual = TRUE
) -
Small bug fixes in C++ code that resulted in memory leaks
-
For models fit using
mdirt()
thefscores()
EAP and EAPsum methods now always returns classification probabilities as the default (reported by Matthew Madison) -
SIBTEST()
gains aDIF
logical to perform DIF tests acrosssuspect_set
-
DIF()
andSIBTEST()
gain apairwise
logical input to perform pairwise post-hoc comparisons for multi-group applications -
DRF()
gainsgroups2test
argument and friends for multi-group models
-
infit and outfit statistics can now be computed in
itemfit()
when missing data are present (requested by Hanif on the mirt-package forum: https://groups.google.com/g/mirt-package/c/_mA3YbMmbzM/m/CydOl-F4BQAJ?utm_medium=email&utm_source=footer) -
coef(..., IRTpars=TRUE)
is now applied to multidimensional IRT models, provided that the item contains simple structure (suggested by Sverre Ofstad) -
Fixed
match()
bug inSIBTEST()
when total score is missing (reported by Ziying Li) -
fscores(..., method ='EAPsum')
now supports returning the ACOV matrices, matching the behaviour of the other estimators -
Store previously defined
customItems
andcustomGroup
lists for use in secondary functions (e.g.,DIF()
,boot.mirt()
, etc). Reported by Nataly Beribisky -
Combining priors with equality constraints no longer uses multiple prior definitions in the likelihood computations. Hence, constrained parameters are now treated as though they are a single parameter with only one prior distribution (reported by Matthias von Davier in the context of multiple-group models with between group item priors)
-
Added a
groups2test
argument toDIF()
to isolate individual grouping variable specification when using more than 2 groups -
Implicit argument 'invariance' stored in multiple-group objects now automatically used in
boot.mirt()
(previously had to be manually passed) -
Bugfix when using
items2test
in DIF when input is a character vector (reported by @jbuncher) -
Bug fixes for multiple-group DIF testing with
DIF()
when using more than two groups (reported by Ruben Neda and Davin Díaz García)
-
boot.mirt()
gains aboot.fun
argument to accept user-defined functions for extracting the associated statistics to bootstrap -
When
verbose = TRUE
inresiduals()
a set of summary statistics is reported for easier flagging -
itemfit()
arguments changed to accommodate outputting tables more consistently. Now a singlereturn.tables
argument is used to specify which tables to return -
anova()
removes support for theverbose
flag, and instead labels the rows of the resulting output to identify the models -
X2
andG2
classes of item-fit statistics now better deal with large missing value vectors on a per-item basis for better consistency -
technical
list gains astoreEMhistory
flag to store the EM history (requested by @netique) -
DRF()
gains best-fitting prior support (currently limited to Gaussian distributions) -
Correct index subset caused by tmp row removals in MG objects (fixes #227)
-
Progress bar added automatically (controlled via the
verbose
argument) when using several of the package's secondary functions (e.g.,fscores()
,DIF()
,'DRF()
,mdirt()
, etc) -
Added
itemstats()
function to give basic item information statistics -
Item-EFA models now automatically flips negative signs in rotate solutions (e.g., via
summary()
) according to the sign of the largest observed loading (allows easier interpretation of the resulting correlation matrix) -
response.pattern
deals with completely missing vectors now (issue #220) -
residuals()
gains aapprox.z
logical to transform LD values into approximate z-ratios -
mirt()
,mixedmirt()
, andmultipleGroup()
now havemodel = 1
to fit a unidimensional IRT model by default
-
Added
covdata
argument tofscores()
to allow latent regression covariate information as well. Example added tofscores()
documentation to demonstrate this addition -
Added
RCI()
function to compute reliable change index via IRT modelling -
Added delta method SE in
coef(., IRTpars = TRUE)
for the nominal and nested-logit models -
itemfit()
gains aS_X2.plot
argument to visualize the expected-observed probability differences based on the S-X2 conditional sum-score strategy -
Added
type = 'EAPsum'
toplot()
generic to view an expected vs observed sum-scores plot -
itemfit()
gains ap.adjust
argument to allow for p-value adjustments in the output for all methods -
anova()
generic now supports a...
input to compare many nested models, compared in sequence -
Added
type = 'threshold'
toitemplot()
to plot cumulative probability information (requested by Azman Sami) -
Fixed Bug
Error in if (any(SEtmp < 0))
that appeared due new R 4.0+ behaviour (reported by Ziying Li and Caroline Böhm) -
Fix bug in
itemfit()
when plotting multiple-group objects -
Bugfix in
fscores()
report on which row failed to converge when datsets contain response patterns that were completely missing
-
Previous
technical = list(removeEmptyRows = TRUE)
input now deprecated. Response patterns that are now completely missing are supplied NA placeholders within estimation and post-estimation supporting functions (e.g.,fscores()
,personfit()
,fixed()
, etc) -
Added
converged
element inDIF()
output to evaluate whether the nested model iteration converged -
Added support for plausible-value draws in
fscores()
when usingresponse.pattern
argument -
Fix
SE.type = 'Fisher'
computation in multi-group models (reported by Felix Zimmer) -
Switch
par
andf
inputs innumerical_deriv()
-
Added
gen.difficulty()
to compute the generalized difficulty statistics described by Ali, Chang, and Anderson (2015) for polytomous response models (suggested by Alexander Freund) -
Added
RMSD_DIF()
to compute marginal effect size measure recently used in PISA anlayses when investigating 'badness-of-fit' DIF effects when using constrained multiple-group models -
extract.group()
now explicitly requires the group name to be passed rather than the group number (this is a far more natural route) -
plot(..., type =)
now supports'trace'
,'infotrace'
,'itemscore'
, and''
for two-dimensional models to create faceted graphics -
Added
read.mirt()
function back to package now thatplink
is again available on CRAN -
Syntax input from the
car
package'slht()
function adopted withinmirt
'swald()
function for easier specifications (see examples) -
Better cope with syntax definitions of models in
DIF()
, particularly with theCONSTRAINB
form (reported by Hao Wu) -
Corrected outer-product summation for
SE.type = 'Fisher'
computation (reported by Felix Zimmer) -
Added
fixedCalib()
function to perform the five fixed-calibration methods describe by Kim (2006) -
Empirical histogram
dentype
convergence tolerance no longer modified (default now the same as the Gaussiandentype
criteria) -
Fix for GGUMs using model syntax input (was ignoring the slope loading specifications; reported by Ben Listyg)
-
fixed
traditional2mirt()
math for gpcm when 5 or more category items are supplied (reported by Aiden Loe)
-
OpenMP support added to E-step portion of the package, where number of threads can be specified via the
mirtCluster()
function argumentomp_threads
. Special thanks to Matthias von Davier for providing theomp reduction
code in theEstep.cpp
file -
Behaviour of
mirt(..., large)
has now been modified, wherelarge = TRUE
now skips computing the unique response patterns for datasets that likely contain little to no repeated response patterns (suggested by Matthias von Davier). The previous two-step behaviour is now achieved by passinglarge = 'return'
, storing this list object, and passing it back to thelarge
input argument -
Positive/negative sign remove from chi-square components in
residuals(type = 'LD')
(requested by Cengiz Zopluoglu to help avoid confusion). Sign is still however present in the standardized correlation estimates -
itemtype = 'rsm'
reported the incorrect information functions due to use of - instead of + fromtraditional2mirt()
(reported by Nasser Hasan) -
column names of the
fscores()
results now correspond to the model syntax definition names instead of the previous F# convention -
fix
method = 'classify'
option infscores()
when more than two mixtures are fitted (reported by Lisa Limeri) -
fix bug in
'drop_sequential'
scheme inDIF()
introduced in the previous version of mirt due to some internal organization changes (reported by Balal Izanloo) -
allow infit/outfit statistics to be computed for non-Rasch models (suggested by Alexander Freund for use with GGUMs)
-
added
p.adjust
argument toDRF()
(requested by Keri J. S. Brady) -
support for computation of the ACOV matrix when the variance of the specific factors are freely estimated in
bfactor()
-
fix for
invariance = 'free_var'
argument inmultipleGroup()
for multidimensional models with correlated traits, which previously fixed the correlation parameters inadvertently (reported by Ruoyi Zhu) -
use proper
mins
internal when usingextract.group()
to keep the original minimum response scoring pattern (reported by Adam Ťápal) -
bugfix for single-group models for
draw_parameters()
(reported by Keri Brady and @ddueber) -
numeric model specification in
bfactor()
bug patched when intervals were not 1 unit apart due to NA placeholders (reported by Luis Manuel Lozano) -
latent trait/class names now are forced to be different than the data column names (bug reported by Nathan Carter)
-
fixed
X2*_df
andPV_Q1*
when missing data pattern resulted in dropped categories (reported by Mac Pank)
-
added
likert2int()
to convert Likert-type character/factor responses to integer data -
estfun()
gains acentering
argument to center the scores (contributed by Rudolf Debelak) -
impute
argument initemfit()
andM2()
have been deprecated in favour of removing data row-wise viana.rm=TRUE
-
Acceptance ratio when using MH samplers now returned prior to 'Stage 2' during estimation so that these ratios are better behaved. As well, an heuristic improved method for increasing/decreasing the acceptance ratios is now implemented
-
Added
return_seq_model
toDIF()
to return the final MG model on the last iteration of the sequential search schemes -
Bugfix in
DIF()
when sequential scheme was selected but no items contained DIF on the first iteration (reported by Scott Withrow) -
SIBTEST()
gains aplot
argument to create various plots depicting the (weighted) differences between the focal subtest versus the matched subtest information -
residuals()
gains a'JSI'
type to compute the JSI statistics proposed by Edwards et al. (2018) -
residuals()
gains an'expfull'
type to compute an expected value table for all possible response patterns (not just those observed in the data) -
Fix for
key
variable for nested-logit models when data are collapsed to have equal intervals (reported by Emil Kirkegaard) -
Added delta method for IRT parameter transformations when using multiple-group models (reported by Alex Miller)
-
empirical.poly.collapse
argument added toitemfit()
to plot expected score functions for polytomous items (suggested by Keri Brady) -
SRMSR now reported in
M2()
for GGUMs (suggested by Bo on the mirt-package forum) -
weights
argument added toestfun.AllModelClass
to allow for the inclusion ofsurvey.weights
to calculate the scores -
DIF()
now simplifies the output by default rather than returning lists fromanova()
. Wald tests are always simplified -
Where applicable, RMSEA statistics are reported in
itemfit()
for tests that return suitable X2 and df components -
Fix negative TLI and CFI values when using the C2 statistic from the
M2()
function (reported by Jake Kraska and Charlie Iaconangelo) -
Fix delta method SEs for
'gpcm'
itemtype (reported by Lennart Schneider)
-
When lower/upper bounded parameters are included the default optimizer is now 'nlminb' rather than 'L-BFGS-B'. This is mainly due to the instability in the 'L-BFGS-B' algorithm which is prone to converging instantly for unknown reasons
-
mdirt()
gains aitem.Q
list to specify Q-matrices at the item-category level for each item -
createItem()
functions gain an optional argument to the function definitions to allow for list-specified data from functions such asmirt()
via a silentmirt(..., customItemsData)
argument -
lattice
auto.key
default now reports lines rather than points. This is now more consistent when, for example, color theme is changed to black and white in the trellis window -
Added Differential Response Function (DRF) statistics from upcoming publication (Chalmers, accepted) in a new function entitled
DRF()
. These are related to compensatory and non-compensatory measures of response bias for DIF, DBF, and DTF available from the SIBTEST framework but for IRT model fitted within the multiple-group estimation framework -
structure
argument added tomdirt()
function to allow log-linear models for simplifying the profile probability model computations -
export internally used
traditional2mirt()
function to transform a small selection of classical IRT parameterizations into the slope-intercept form -
fix
survey.weights
input for multiple group models (reported by Leigh Allison) -
fix
itemtype = "rsm"
block restriction when items contain unequal category lengths (reported by Aiden Loe) -
SIBTEST()
computation of beta coefficient changed to match Shealy and Stout's (1993) form ofp_k * (Y_R - Y_F)
(was previouslyp_k * (Y_F - Y_R)
; reported by Craig Wells). As well,Jmin
default is increased to 5 to avoid conservative Type I error behavior in longer tests -
Fix negative chi-square differences in
DIF()
function due to non-converged sub-models (reported by Daniel McKelvey)
-
M2()
function gains atype
input to distinguish between the univariate-bivariate collapsed M2* statistic and the bivariate only collapsed C2 statistic (Cai and Monro, 2014). C2 can be useful for polytomous items when there are too few degrees of freedom to compute the fully collapsed M2* -
multipleGroup()
gains thedentype
argument to allow for mixture IRT models to be fitted (e.g.,dentype = 'mixture-3'
fits a three-class mixture model). This also allow modifications such as the zero-inflated IRT model to be fitted -
technical
gains azeroExtreme
logical flag to assign survey weights of 0 to extreme response patterns (FALSE by default). This may be required when Woods' extrapolation-interpolation method is used with empirical histograms to avoid ill defined extrapolated densities -
fscores()
,itemfit()
,M2()
, andresiduals()
gain ause_dentype_estimate
argument to compute EAP-based scores whenever the latent trait density was estimated (e.g., via empirical histograms) -
Empirical histograms can now be now scaled to [0,1] using Woods' extrapolation-interpolation method via the input
dentype = 'empiricalhist_Woods'
. Degrees of freedom updated to reflect this change, and 121 quadrature points are used instead of the previous 199 for better stability -
Semi-parametric Davidian curve estimation of the shape of the latent trait distribution in unidimensional IRT models was contributed by Oguzhan Ogreden, as well the associated components used within this framework (such as the interpolation-extrapolation method described by Woods, 2006). This estimation method is available through the new
dentype
input. mirt also now links to thedcurver
package to obtain the associated computation functions in the EM algorithm -
M2()
,itemfit()
,SIBTEST()
, andfscores()
gain anna.rm
logical to remove rows of missing data -
fscores()
gains aappend_response.pattern
logical to indicate whether response patterns via theresponse.pattern
input should be appended to the factor score results -
new
dentype
argument added to estimation-based functions to specify the density structure of the latent traits (default is'Gaussian'
). This update breaks the previousempiricalhist
logical option -
anova()
will accept a single fitted model object and return information related to AIC, BIC, log-likelihood, etc -
Hannan–Quinn (HQ) Criterion added to
anova()
-
Added multidimensional version of sequential response model (e.g., Tutz, 1990). Includes
itemtype = 'sequential'
for the multidimensional 2PL variant, anditemtype = 'Tutz'
for the Rasch variant -
Printing IRT parameters via
coef(mod, IRTpars = TRUE)
now computes the delta method for theg
andu
terms as well. Interpreting these is generally not recommended due to their bounded parameter nature (CIs can be outside the range [0,1]), but are included for posterity -
createItem()
gains abytecompile
flag to indicate whether the internal functions should be byte-compiled before using (default is TRUE) -
Special
GROUP
location holder inmirt.model()
to index the group-level hyper-parameter terms -
key2binary()
gains ascore_missing
flag to indicate whether missing values should be scored as 0 or left as NA -
createItem()
gains support forderivType = 'symbolic'
andderivType.hss = 'symbolic'
to symbolically compute the gradient/Hessian functions (template code-base contributed by Chen-Wei Liu) -
createItem()
gains aderivType.hss
argument to distinguish gradient from Hessian numerical computations -
mdirt()
gains support forcreateItem()
inputs -
More plotting points added to default
plot()
anditemplot()
generics to create smoother traceline functions
-
fix
simdata()
bug for newggum
itemtype -
fix new grouping syntax specification in
mirt.model()
when combining START and FIXED (reported by Garron Gianopulos) -
fix
IRTpars = TRUE
input when itemtype wasRasch
(reported by Benjamin Shear)
-
mod2values()
and passingpars = 'values'
now returndata.frame
objects without any factor variables (previously the defaults todata.frame()
were used, which created factors for all categorical variables by default) -
Add
monopoly
itemtype to fit unidimensional monotonic polynomial item response model for polytomous data (see Falk and Cai, 2016) -
Add
ggum
itemtype to fit unidimensional/multidimensional graded unfolding model (e.g., Roberts & Laughlin, 1996). Special thanks to David King for providing the necessary C++ derivative functions and starting values -
Square brackets can now be included in the
mirt.model()
syntax to indicate group-specific constraints, priors, starting/fixed values, and so on. These are all of the general form"CONSTRAIN [group1, group2] = ..."
or"FIXED [group1] = ..."
-
Added delta method for several classical IRT parameterization (via
coef(model, IRTpars = TRUE)
) when a suitable information matrix was previously estimated -
numDeriv
dependency removed becausenumerical_deriv()
now supports a local Richardson extrapolation type. For best accuracy, this is now used as the default throughout the package -
createItem()
andlagrange()
now use Richardson extrapolation as default instead of the less accurate forward/central difference method -
estfun()
function added to extract gradient information directly from fitted objects (contributed by Lennart Schneider) -
simdata()
gains anequal.K
argument to redraw data until$K$ categories are populated for a given item -
Fix initialization of
fscores()
when using 'MH' plausible value imputations (reported by Charlie Iaconangelo) -
Various other small bug fixes and performance improvements, fixes for Solaris compatibility, and run a small number of examples during R CMD check
-
mdirt()
now supports latent regression covariate predictors. Associated function (e.g.,fscores()
) also include the latent regression information for discrete models by default -
SIBTEST()
replaced with the asymptotic sampling distribution version of CSIBTEST described by Chalmers (accepted) -
calcNull
set toFALSE
by default -
Sandwich ACOV estimate now uses the Oakes estimate in the computations rather than the intensive Louis form (which require low-level coding of the item-level Hessian terms). Added a new
SE.type = 'sandwich.Louis'
for the original sandwich VCOV estimate in the previous version of mirt -
fix latent regression models with QMCEM and MCEM algorithms (reported by Seongho Bae)
-
fscores()
gains amax_theta
argument to apply upper/lower bounds to iterative searching algorithms (issue reported by Sebastian Born), and astart
input to set the starting values as well (primarily useful in mirtCAT to reduce iterations) -
alabama
package optimizer no longer used. Replaced with generic interface fromnloptr
package to support numerous optimizers with greater control instead. Associated inputs (e.g.,alabama_args
) replaced as well -
Export missing S4 methods for external R packages to import
-
MDIFF and MDISC no longer in normal ogive metric (1.702 scaling value removed)
-
added
QMC
option toresiduals()
forLD
andLDG2
methods. Also globally set the number of QMC points to 5000 throughout the package for consistency -
info_if_converged
andlogLik_if_converged
added totechnical
list to indicate whether the information matrix and stochastic log-likelihood should be computed only when the model converges. Default is nowTRUE
for both -
added
'MCEM'
method for Monte Carlo EM. An associatedMCEM_draws
function added to thetechnical
list as well to control the number of draws throughout the EM cycles -
support for information matrix computations for QMCEM method added (e.g., Oakes, crossprod, Louis)
-
globally improve numerical efficiency of QMC methods, including the QMCEM estimator
-
include missing data values in
itemfit()
for parametric bootstrap methods to replicate missing data pattern -
ensure that nest-logit models have at least 3 categories (reported by Seongho Bae)
-
convergence set to FALSE if any
g > u
is found in the 4PL model -
in verbose console output the log-posterior is printed when priors are included in the EM (previously was only the marginal likelihood)
-
various bug fixes to SIBTEST, particularly for very small sample sizes
-
anova()
LRT comparison gains abounded
logical to indicate whether a bounded parameter is being compared, as well as amix
argument to indicate the mixture of chi-squared distributions -
MH-RM estimation
optimizer
argument can now be modified toBFGS
,L-BFGS-B
, andNR
instead of the defaultNR1
-
a distinction between the
NR
optimizer in the EM and MH-RM applications is included, where the MH-RM now defaults toNR1
to indicate a single Newton-Raphson update that uses an RM filtered Hessian term -
method = 'SEM'
added to perform the stochastic EM algorithm (first two stages of the MH-RM algorithm setup).
Alternatively, settingtechnical = list(NCYCLES = NA)
when using the MH-RM algorithm now returns the stochastic EM results -
added
multidim_matrix
option toiteminfo()
to expose computation of information matrices -
bounded parameter spaces handled better when using the NR optimizer
-
various bug fixes and performance improvements
-
SE.type = 'Oakes'
set as the new default when computing standard errors via the ACOV matrix when using the EM algorithm -
new
SE.type = 'Oakes'
to compute Oakes' 1999 form of the observed information matrix using central difference approximation. Applicable for all IRT models (including customized IRT types) -
added support for
gpcmIRT
andrsm
itemtypes for traditional generalized partial credit model and Rasch rating scale model (which may be modified for a generalized rating scale model by freeing the slope parameters) -
SE.type = 'Fisher'
now supports the inclusion of latent distribution hyper-parameters. Officially, all SE-types now provide proper hyper-parameter influence in the information matrices -
wrapped various output objects as
mirt_df
,mirt_matrix
, andmirt_list
class to avoid the need for passing adigits
argument for rounding output in the console. Now, returned objects are never rounded, which makes writing Monte Carlo simulation code safer in that rounded results will not appear in the results -
added Stone's (2000) fit statistics and forthcoming PV-Q1 fit statistics to
itemfit()
- patched underflow bug in
fscores()
when EAP estimates were used in extremely long (1000+ item) tests. Error now reported when this happens. Using MAP estimates in these extreme situations is essentially equivalent and now recommended
-
add information about the number of freely estimated parameters to
print()
generic -
in
plot()
,auto.key
is only disabled whenfacet_items = FALSE
for dichotomous items. Also, adjusted ordering ofplot(mod, type = 'itemscore')
to reflect actual item ordering in the data -
Stretched the theoretical bounds of the y-axis for score-based functions in
plot()
anditemplot()
(e.g., 3PL models will now always stretch to S(theta) = 0) -
plot(mod, type = 'score')
not supports thewhich.items
input to make expected score plots for bundles of items -
penalized term added to EM algorithm estimation subroutines to help keep the covariance matrix of the latent trait parameters positive definite in the M-step (helps convergence properties of the optimizers, especially 'L-BFGS-B'). To turn this penalized term off use
technical = list(keep_vcov_PD = FALSE)
-
added
type = 'itemscore'
toplot()
generic to plot faceted version of the item scoring functions. Particularly useful when investigating DIF withmultipleGroup()
-
better support for
splines
itemtype in multiple-group models
-
fix problem with 'EAPsum' in
fscores()
whenresponse.pattern
input supplied (reported by Eva de Schipper) -
plot(mod, type = 'rxx')
now uses the latent variance in the computations (reported by Amin Mousavi) -
fix syntax input when customized IRT models are supplied
-
df
adjustment for theS_X2
item-fit statistic for models where the latent trait hyper-parameters have been estimated -
itemfit()
andpersonfit()
properly detect dichotomous Rasch models which have been defined with the constrained slopes approach -
argument
'fit_stats'
now used initemfit()
to replace longer list of logicals (e.g.,itemfit(mod, S_X2 = FALSE, X2 = TRUE, infit = FALSE, ...)
). Now fit stats are explicitly requested through a character vector input. Default still uses the S_X2 statistic -
when using
'lnorm'
prior lower bound automatically set to 0, and with'beta'
prior the lower and upper bounds are set to [0,1] -
mdirt()
now usesoptimizer = 'nlminb'
by default -
revert using default 'penalized version of the BFGS algorithm' instead of L-BFGS-B when box-constraints are used (introduced in version 1.19)
-
Neale & Miller 1997 approximation added to
PLCI()
(default still computes exact PL CIs) -
type = 'score'
supported for multiple group models initemplot()
-
added
poly2dich
function to quickly change polytomous response data to a comparable matrix of dichotomous response data
-
a penalized version of the BFGS algorithm is now used instead of the L-BFGS-B when upper and lower bounds are included (provides more robust estimates)
-
the variances of the orthogonal factors in
bfactor()
can now be freely estimated. This allows modeling of designs such as the testlet response model (example included in the documentation) -
new
spline
itemtype to model B-spline response functions for dichotomous models. Useful for diagnostic purposes after detecting item-misfit. Additional arguments can be passed to thespline_args
list input to control the behaviour of the splines for each item. Currently limited to unidimensional models only -
fscores()
gains aplausible.type
argument to select between normal approximation PVs or Metropolis-Hastings samples (suggested by Yang Liu) -
mdirt()
has been modified to support DINA, DINO, located latent class, and other diagnostic classification models. Additionally, thecustomTheta
input required to build customized latent class patterns has been changed from the previously cumbersome
mdirt(..., technical = list(customTheta = Theta))
to simplymdirt(..., customTheta = Theta)
-
simdata()
gains aprob.list
input to supply a list of matrices with probability values to be sampled from (useful when specialized response functions outside the package are required) -
simdata()
supports 'lca' itemtypes for latent class model generation -
improved M2 accuracy when latent trait variances are estimated
-
corrected behaviour of
M2()
when linear constraints are applied (M2 test was previously too conservative when constraints were used). This affects single as well as multiple-group models (reported by Rudolf Debelak) -
add plausible values for latent class and related models estimated from
mdirt()
-
multipleGroup()
throws proper error when vertical scaling is not identified correctly due to NAs -
S-X2 itemfit statistic fix when very rare expected categories appear (reported by Seongho Bae)
-
mdirt()
function now includes explicit parameters for the latent class intercepts (in log-form). This implies that correct standard errors can be computed using various methods (e.g., SEM, Richardson, etc) -
new
customGroup()
function to define hyper-parameter objects for the latent trait distributions (generally assumed to be Gaussian with a mean and covariance structure) -
new
boot.LR()
function to perform a parametric bootstrap likelihood-ratio test between nested models. Useful when testing nested models which contain bounded parameters (e.g., testing a 3PL versus a 2PL model) -
adjust the
lagrange()
function to use the full information matrix (was previously only a quasi-lagrange approximation) -
greatly improved speed in
simdata()
, consequently changes the default seed
-
fix crash error in
mirtmirt()
for multidimensional models with lr.random effects (reported by Diah Wihardini) -
expbeta
prior starting values fix by setting to the mean of the prior rather than the mode (reported by Insu Paek)
-
itemfit()
function reworked so that all statistics have their own input flag (e.g.,Zh = TRUE
,infit = TRUE
, etc). Additionally, only S-X2 is computed by default and X2/G2 (and the associated graphics and tables) are computed using 10 fixed bins -
added
empirical.table
argument to return tables of expected/observed values forX2
andG2
-
group.bins
andgroup.fun
argument added toitemfit()
to control the size of the bins and the central tendancy function forX2
andG2
computations -
'expbeta'
option added to implement a beta prior specifically for theg
andu
parameters which internally have been transformed to logits (performes the back transformation before computing the values) -
check whether multiple-group models contain enough data to estimate parameters uniquely when no constraints are applied
-
set the starting values the same when using
parprior
list ormirt.model()
syntax (reported by Insu Paek) -
empirical_ES()
function added for effect size estimates in DIF/DBF/DTF analyses (contributed by Adam Meade)
-
standardized loadings not correct when factor correlations included in confirmatory models (reported by Seongho Bae)
-
MDISC
andMDIFF
values were missing the 1.702 multiplicitive constant (reported by Yi-Ling Cheng) -
fix information trace-lines in multiple-group plots (reported by Conal Monaghan)
-
suppress standard errors in exploratory models when
rotate != 'none'
(suggested by Hao Wu) -
sequential schemes in
DIF()
generated the wrong results (reported by Adam Meade) -
M2()
was not properly accounting for latent variance terms (reported by Ismail Cuhadar)
-
enable
lr.random
input tomixedmirt()
for multilevel-IRT models which are not from the Rasch family -
add common
vcov()
andlogLik()
methods -
latent regression EM models now have standard error computation supporte with the 'complete', 'forward', 'central', and 'Richardson' methods
-
new
areainfo()
function to compute the area under information curves within specified ranges (suggested by Conal Monaghan) -
method = 'BL'
supported for multiple-group models. As well,SE.type = 'numerical'
included to return the observed-data ACOV matrix from the call tooptim()
(can only be used when theBL
method is selected) -
new
SE.type = 'FMHRM'
to compute information matrix based on a fixed number of MHRM draws, and an associatedtechnical = list(MHRM_SE_draws)
argument has been added to control the number of draws -
added
lagrange
(i.e., score) test function for testing whether parameters should be freed in single and multiple group models estimated with the EM algorithm -
numerical_deriv
function made available for simple numerical derivatives, which may be useful when defining fast custom itemtype derivative terms -
SE.type
used to compute the ACOV matrix gained three numerical estimates for the forward difference ('forward'), central difference ('central'), and Richardson extropolation ('Richardson')
- SE methods based on the Louis (1982) computations no longer contain NA placeholders for the latent trait hyper-parameters
-
added SIBTEST and crossed-SIBTEST procedures with the new function
SIBTEST()
-
added
empirical_plot
function for building empirical plots (with potential smoothing) when conditioning on the total score -
more low-level elements included in
extract.mirt()
function -
added
grsmIRT
itemtype for classical graded rating scale form (contributed by KwonHyun Kim) -
added missing analytic Hessian terms when
gpcm_mats
are used (contributed by Carl Falk)
- fixed row-removal bug when using
technical = list(removeEmptyRows = TRUE)
(reported by Aaron Kaat)
- the structure of the output objects now contains considerably fewer S4 slots, and instead are
organized into more structured list elements such as
Data
,Model
,Fit
, and so on. Additionally, the information matrix has slot has been removed in favour of providing the asymptotic covariance matrix (a.k.a., the inverse of the information matrix)
-
added
extract.mirt()
function to allow more convenient extracting of internal elements -
crossprod
SE.type now incorporates latent variable information (replaces NA placeholders) -
changed the default
full.scores = FALSE
argument toTRUE
infscores()
-
added
profile
argument toplot()
formdirt()
objects so that profile plots can be generated -
converge_info
option added tofscores()
to return convergence information -
add
removeEmptyRows
option totechnical
list
-
return a vector of
NA
s when WLE estimation has a Fisher information matrix with a determinant of 0 (reported by Christopher Gess) -
fix df in multiple-group models with crossed between/within constrains (reported by Leah Feuerstahler)
-
compute residuals when responses are sparse, and return
NaN
when residual could not be computed (reported by Aaron Kaat)
-
adjust plausible values format for multiple group objects
-
simdata()
gains amodel
input to impute data from pre-organized models (useful in conjunction with mirtCAT or to generate datasets from already converged models). Also gains amins
argument to specify what the lowest category should be for each item ifmodel
is not supplied (default is 0) -
number of
SEMCYCLES
increased from 50 to 100 in the MH-RM algorithm, and RM gain rate changed fromc(.15, .65)
toc(.1, .75)
-
further improve item fit statistics when using imputations
-
facet plots now try to keep the items in their respective order
-
panel theme for lattice plots changed from default to a lighter blue colour, and legend now automatically placed on the right hand side rather than the top
- fix for Q3 computations (noticed by Katherine Castellano)
-
when using prior distributions, starting values now automatically set equal to the mode of the prior distribution, and appropriate lower and upper parameter bounds are supplied
-
added
NEXPLORE
term tomirt.model()
to specify exploratory models via the syntax -
add
itemGAM()
function to provide a non-linear smoother for better understanding mis-functioning items (and without loosing established precision by reverting to purely non-parametric IRT methods) -
category scores are now automatically recoded to have spaces of 1, and a message is printed if/when this occurs
-
added
MDISC()
andMDIFF()
functions -
the inclusion of prior parameter distributions will now report the log-posterior rather than the log-likelihood. Functions such as
anova()
will also report Bayesian criteria rather than the previous likelihood-based model comparison statistics -
impute
argument initemfit()
andM2()
now use plausible values instead of point estimates -
START
syntax element inmirt.model()
now supports multiple parameters, andFIXED
argument added to declare parameters as 'fixed' at their staring values -
added
LBOUND
andUBOUND
syntax support inmirt.model()
-
report proper lower and upper bounds in starting values data frame and from
mod2values()
-
invariance
argument tobfactor()
now automatically indexes the second-tier factors to make multiple-group testing withbfactor()
easier -
remove
rotate
andTarget
arguments from model objects, and pass these only through axillary functions such assummary()
,fscores()
, etc -
model
based arguments now can be strings, which are passed tomirt.model()
. This is now the preferred method for defining models syntactically, though the previous methods will still work -
integration range (
theta_lim
) globally set toc(-6, 6)
, and number of default quadrature nodes have systematically increased in parameter estimation functions. This will slightly change some numerical results, but provides more consistence throughout the package -
add
theta_lim
arguments to various functions -
better control of QMC grid, and more effective usage for higher dimensions
-
internal code organization now makes it easier to add user defined
itemtype
s (which can be natively added into the package, if requested)
-
fix conservative imputation standard errors in
itemfit()
andM2()
(reported by Irshad Mujawar) -
fixed plausible value draws for multidimensional latent regression models (reported by Tongyun Li)
-
don't allow crossprod, Louis, or sandwich information matrices when using custom item types (reported by Charlie Rutgers)
-
when using
coef(mod, printSE=TRUE)
theg
andu
parameters are relabeled tologit(g)
andlogit(u)
to represent the internal labels -
added various facet plots for three dimensional models to
plot()
generic -
support
optimizer = 'nlminb'
, and pass optimizer control arguments to acontol
list -
added
fixef()
function to extract expected values implied by the fixed effect parameters in latent regression models -
added
gpcm_mats
argument to estimation functions for specifying a customize scoring pattern for multidimensional generalized partial credit models -
added
custom_theta
input tofscores()
for including customized integration grids -
add a
suppress
argument toresiduals()
andM2()
to suppress local dependence values less than this specific value -
print a message in
DIF()
andDTF()
when hyper-parameters are not freely estimated in focal groups -
constraits for hetorogenous item names added to
mirt.model()
syntax -
WLE support for multidimensional models added
-
added
'SEcontour'
argument toplot()
generic -
use NA's in
fscores()
when response patterns contain all NA responses (suggested by Tomasz Zoltak)
-
S-X2 in
itemfit()
now returns appropriate values for multiple-group models -
multidimensional plausible value imputation fix (reported by KK Sasa)
-
plot(..., type = 'infotrace')
for multiple group objects fixed (reported by Danilo Pereira)
-
fscores()
nows acceptsmethod = "plausible"
to draw a single plausible value set -
plot()
default type is nowscore
, and will accept rotation arguments for exploratory models (default rotation is'none'
) -
imputeMissing()
supports a list of plausible values to generate multiple complete datasets -
new
custom_den
input tofscores()
to use custom prior density functions for Bayesian estimates -
more optimized version of the 'WLE' estimator in
fscores()
-
empirical reliability added when
method = 'EAPsum'
infscores()
-
new
START
argument inmirt.model()
for specifying simple starting values one parameter at a time
-
fix carryover print-out error in
summary()
when confirmatory models were estimated -
bound contraints not were not included for group hyper-parameters (reported by KK Sasa)
-
improved estimation efficiency when using MH-RM algorithm. As a result, the default seed was changed, therefore results from previous versions will be slightly different
-
objects of class 'ExploratoryClass' and 'ConfirmatoryClass' have been merged into a single class 'SingleGroupClass' with an
exploratory
logical slot -
the
technical = list(SEtol)
criteria for approximating the information matrix was lowered to 1e-4 inmixedmirt()
to provide better standard error estiamtes
-
boot.mirt
now uses the optimizer used to estimate the model (default previously was EM) -
mixedmirt
now supports interaction effects in random intercepts, including cross-level interactions -
added
averageMI()
function to compute multiple imputation averages for the plausible values methodology using Rubin's 1987 method -
plausible value imputation now available in
fscores()
using the newplausible.draws
numeric input -
add
return.models
argument toDIF()
to return estimated models with free/constrained parameters -
latent regression models added to
mixedmirt()
for non-Rasch models using the newlr.formula
input -
mirt.model()
syntax can now define within individual item equality constraints by using more than 1 parameter specification name in the syntax -
latent regression models added to
mirt()
function by using the newcovdata
andformula
inputs -
added confidence envelope plots to
PLCI.mirt
, and throw warnings when intervals could not be located -
coef()
now accepts asimplify
logical, indicating whether the items should be collapsed to a matrix and returned as a list of length 2 (suggested by Michael Friendly)
-
bias correction in variance estimates
mixedmirt
when random effects are included (reported by KK Sasa) -
fix missing data imputation bug in
itemfit()
(reported by KK Sasa) -
M2 statistic for bifactor/two-tier models was overly conservative
-
better checks for numerical underflow issues
-
use triangle 0's for identifying exploratory IFA models. As such, standard errors/condition numbers for exploratory models can be estimated again
-
sirt
package added to suggests list. Special thanks to Alexander Robitzsch (author ofsirt
) for developing useful wrapper functions for mirt such asmirt.wrapper.coef()
,tam2mirt()
, and
lavaan2mirt()
. As well, many examples insirt
demonstrate the possibility of estimating specialized IRT models withmirt
, such as the: Ramsay quotient, latent class, mixed Rasch, located latent class, probabilistic Guttman, nonparametric, discrete graded membership, and multidimensional IRT discrete traits, DINA, and Rasch copula models. -
exploratory IRT models are no longer rotated by default in
coef()
, and now requires an explicitrotate
argument -
computation of
S_X2
statistic initemfit
now much more stable for polytomous item types -
support for the
plink
package now unofficially dropped because it was removed from CRAN -
data inputs are now required to have category spacing codings exactly equal to 1 (e.g., [0, 1, 2, ...]; patterns such as [0, 2, 3] which are implicitly missing spaces are now invalid)
-
mdirt
function added to model discrete latent variables such as latent class analysis for dichotomous and polytomous items. Can be used to model several other discrete IRT models as well, such as the located latent class model, multidimensional IRT with discrete traits, DINA models, etc. See the examples and documentation for details -
axillary support for
DiscreteClass
objects added toitemfit()
,M2()
,fscores()
,wald()
, andboot.mirt()
-
the S-X2 statistic available in
itemfit()
has been generalized to include multidimensional models -
the method
'QMCEM'
has been added for quasi-Monte Carlo integration inmirt()
andmultipleGroup()
for estimating higher dimensional models with greater accuracy (suggested by Alexander Robitzsch). Several axillary function such asfscores()
,itemfit()
, andM2()
also now contain anQMC
argument (or will accept one through the ... argument) to use the same integration scheme for better accuracy in higher dimensional models -
nonlinear parameter constraints for EM estimation can be specified by using the
Rsolnp
andalabama
packages by passingoptimizer = 'solnp'
andoptimizer = 'alabama'
, as well as the relevant package arguments through thesolnp_ags
andalabama_ags
list inputs -
itemnames
argument added tomirt.model()
to allow model specifications using raw item names rather than location indicators -
accelerate
argument changed from logical to character vector, now allowing three potential options: 'Ramsay' (default), 'squarem', and 'none' for modifying the EM acceleration approach
-
fixed bug in
bfactor()
starting values when NAs were specified in themodel
argument -
adjust overly optimistic termination criteria in EM algorithm
-
for efficiency, the Hessian is no longer computed in
fscores()
unless it is required in the returned object -
estimation with
method = 'MHRM'
now requires and explicitlySE=TRUE
call to compute the information matrix. The matrix is now computed using the ML estimates rather than approximated sequentially after each iteration (very unstable), and therefore a separate stage is performed. This provides much better accuracy in the computations
-
new
extract.group()
function to extract a single group object from an objects previously returned bymultipleGroup()
-
return the SRMSR statistic in
M2()
along with the residual matrix (suggested by Dave Flora) -
accept
Etable
default input incustomPriorFun
(suggested by Alexander Robitzsch) -
vignette files for the package examples are now hosted on Github and can be accessed by following the link mentioned in the vignette location in the index or
?mirt
help file -
E-step is now computed in parallel (if available) following a
mirtCluster()
definition -
run no M-step optimizations by passing
TOL = NaN
. Useful to have the model converge instantly with all parameters exactly equal to the starting values -
confidence envelope plots in
itemplot()
generate shaded regions instead of dotted lines, and confidence interval plots added toplot()
generic through theMI
input -
passes to
fscores()
slightly more optimized for upcoming mirtCAT package release -
method = 'EAPsum'
argument tofscores()
support for multidimensional models
-
fix forcing all SEs MHRM information matrix computations to be positive
-
imputeMissing()
crash fix for multiple-group models -
fix divide-by-0 bug in the E-step when number of items is large
-
fix crash in EM estimation with
SE.type = 'MHRM'
-
calculating the information matrix for exploratory item factor analysis models has been disabled since the rotational indeterminacy of the model results in improper parameter variation
-
changed default
theta_lim
toc(-6,6)
and number of quadrature defaults increased as well -
@Data
slot added for organizing data based arguments. Removed several data slots from estimated objects as a consequence -
removed 'Freq' column when passing a
response.pattern
argument tofscores()
-
increase number of Mstep iterations proportionally in quasi-Newton algorithms as the estimation approaches the ML location
-
'rsm' itemtype removed for now until optimized version is implemented
-
link to
mirt
vignettes on Github have been registered with theknitr
package and are now available through the package index -
optimizer
argument added to estimation function to switch the default optimizer. Multiple optimizers are now available, including the BFGS (EM default), L-BFGS-B, Newton-Raphson, Nelder-Mead, and SANN -
new
survey.weights
argument can be passed to parameter estimation functions (i.e.,mirt()
) to apply so-called stratification/survey-weights during estimation -
returnList
argument added tosimdata()
to return a list containing the S4 item objects, Theta matrix, and simulated data -
support custom item type
fscores()
computations whenresponse.pattern
is passed instead of the original data -
impute
option foritemfit()
andM2()
to estimate statistics via plausible imputation when missing data are present -
multidimensional ideal-point models added for dichotomous items
-
M2* statistic added for polytomous item types
-
Bock and Lieberman (
'BL'
) method argument added (not recommend for serious use)
-
large bias correction in information matrix and standard errors for models that contain equality constraints (standard errors were too high)
-
drop dimensions fix for nested logit models
-
default
SE.type
changed tocrossprod
since it is better at detecting when models are not identified compared toSEM
, and is generally much cheaper to compute for larger models -
M-step optimizer now automatically selected to be 'BFGS' if there are no bounded parameters, and 'L-BFGS-B' otherwise. Some models will have notably different parameter estimates because of this, but should have nearly identical model log-likelihoods
-
better shiny UI which adapts to the itemtype specifically, and allows for classical parameter inputs (special thanks to Jonathan Lehrfeld for providing code that inspired both these changes)
-
scores.only option now set to
TRUE
infscores()
-
type = 'score'
for plot generics no longer adjusts the categories for expected test scores -
M-step optimizer in EM now deters out-of-order graded response model intercepts (was a problem if the startvalues were too far from the ML estimate in graded models)
-
return.acov
logical added tofscores()
to return a list of matrices containing the ACOV theta values used to compute the SEs (suggested by Shiyang Su) -
printCI
logical option tosummary()
to print confidence intervals for standardized loadings -
new
expected.test()
function, which is an extension ofexpected.item()
but for the whole test -
mirt.model()
syntax supports multiple * combinations inCOV =
for more easily specifying covariation blocks between factors. Also allows variances to be freed by specifying the same factor name, e.g.,F*F
-
full.scores.SE
logical option forfscores()
to return standard errors for each respondent -
multiple imputation (MI) option in
fscores()
, useful for obtaining less biased factor score estimates when model parameter variability is large (usually due to smaller sample size) -
group-level (i.e., means/covariances) equality constrains are now available for the EM algorithm
-
theta_lim
input toplot()
,itemplot()
, andfscores()
for modifying range of latent values evaluated
-
personfit()
crash for multipleGroup objects since itemtype slot was not filled (reported by Michael Hunter) -
fix crash in two-tier models when correlations are estimated (reported by David Wu)
-
R 3.1.0 appears to evaluate List objects differently at the c level causing strange behaviour, therefore slower R versions of some internal function (such as mirt:::reloadPars()) will be used until a patch is formed
-
behaviour of
mvtnorm::dmvnorm
changed as of version 0.9-9999, causing widely different convergence results. Similar versions of older mvtnorm functions are now implemented instead
-
fitIndices()
replaced withM2()
function, and currently limited to only dichotomous items of class 'dich' -
bfactor()
default SE.type set to 'crossprod' rather than 'SEM' -
generalized partial credit models now display fixed scoring coefs
-
TOL
convergence criteria moved outside of thetechnical
input to its own argument -
restype
argument toresiduals()
changed totype
to be more consistent with the package -
removed
fitted()
sinceresiduals(model, type = 'exp')
gives essentially the same output -
mixedmirt has
SE
set toTRUE
by default to help construct a more accurate information matrix -
if not specified, S-EM
TOL
dropped to1e-6
in the EM, andSEtol = .001
for each parameter to better approximate the information matrix
-
two new
SE.type
inputs: 'Louis' and 'sandwich' for computing Louis' 1982 computation of the observed information matrix, and for the sandwich estimate of the covariance matrix -
as.data.frame
logical option forcoef()
to convert list to a row-stacked data.frame -
type = 'scorecontour'
added toplot()
for a contour plot with the expected total scores -
type = 'infotrace'
added toitemplot()
to plot trace lines and information on the same plot, andtype = 'tracecontour'
for a contour plot using trace lines (suggested by Armi Lantano) -
mirt.model()
support for multi-line inputs -
new
type = 'LDG2'
input forresiduals()
to compute local dependence stat based on G2 instead of X2, andtype = 'Q3'
added as well -
S-EM computation of the information matrix support for latent parameters, which previously was only effective when estimation item-level parameters. A technical option has also been added to force the information matrix to be symmetric (default is set to
TRUE
for better numerical stability) -
new
empirical.CI
argument initemfit()
used when plotting confidence intervals for dichotomous items (suggested by Okan Bulut) -
printSE
argument can now be passed tocoef()
for printing the standard errors instead of confidence intervals. As a consequence,rawug
is automatically set toTRUE
(suggested by Olivia Bertelli) -
second-order test and condition number added to estimated objects when an information matrix is computed
-
tables
argument can be passed toresiduals()
to return all observed and expected tables used in computing the LD statistics
-
using
scores.only = TRUE
for multipleGroup objects returns the correct person ordering (reported by Mateusz Zoltak) -
read.mirt()
crash fix for multiple group analyses objects (reported by Felix Hansen) -
updated math for
SE.type = 'crossprod'
-
facet_items
argument added to plot() to control whether separate plots should be constructed for each item or to merge them onto a single plot -
three dimensional models supported in
itemplot()
for typestrace
,score
,info
, andSE
-
new DIF() function to quicky calculate common differential item functioning routines, similar to how IRTLRDIF worked. Supports likelihood ratio testings as well as the Wald approach, and includes forward and backword sequential DIF searching methods
-
added a
shiny = TRUE
option toitemplot()
to run the interactive shiny applet. Useful for instructive purposes, as well as understanding how the internal parameters of mirt behave -
type = 'trace'
andtype = 'infotrace'
support added toplot
generic for multiple group objects -
fscores(..., method = 'EAPsum')
returns observed and expected values, along with general fit statistics that are printed to the console and returned as a 'fit' attribute -
removed multinomial constant in log-likelihood since it has no influence on nested model comparisons
-
SE.type = 'crossprod'
andFisher
added for computing the parameter information matrix based on the variance of the Fisher scoring vector and complete Fisher information matrix, respectively -
customPriorFun
input to technical list now available for utilizing user defined prior distribution functions in the EM algorithm -
empirical histogram estimation now available in
mirt()
andmultipleGroup()
for unidimensional models. Additional plottype = 'empiricalhist'
also added to theplot()
generic -
re-implement
read.mirt()
with better consistency checking between theplink
package
-
starting values for
multipleGroup()
now returns proper estimated parameter information from theinvariance
input argument -
remove
as.integer()
in MultipleGroup df slot -
pass proper item type when using custom pattern calles in
fscores()
-
return proper object in personfit when gpcm models used
-
GenRandomPars
logical argument now supported in thetechnical = list()
input. This will generate random starting values for freely estimated parameters, and can be helpful to determine if obtained solutions are local minimums -
seperate
free_var
andfree_cov
invariance options available in multipleGroup -
new
CONSTRAIN
andCONSTRAINB
arguments inmirt.model()
syntax for specifying equality constraints explicitly for parameters accross items and groups. Also thePRIOR = ...
specification was brought back and uses a similar format as the new CONSTRAIN options -
plot(..., type = 'trace')
now supports polytomous and dichotomous tracelines, andtype = 'infotrace'
has a better y-axis range -
removed the '1PL' itemtype since the name was too ambiguous. Still possible to obtain however by applying slope constraints to the 2PL/graded response models
-
plot()
contains a which.items argument to specify which items to plot in aggregate type, such as'infotrace'
and'trace'
-
fitIndicies()
will returnCFI.M2
andTLI.M2
if the argumentcalcNull = TRUE
is passed. CFI stats also normed to fall between 0 and 1 -
data.frame returned from
mod2values()
andpars = 'values'
now contains a column indicating the internal item class -
use
ginv()
from MASS package to improve accuracy infitIndices()
calculation of M2
-
fix error thrown in
PLCI.mirt
when parameter value is equal to the bound -
fix the global df values, and restrict G2 statistic when tables are too sparse
-
PLCI.mirt()
function added for computing profiled likelihood standard errors. Currently only applicable to unidimensional models -
prior distributions returned in the
pars = 'values'
data.frame along with the input parameters, and can be edited and returned as well -
full.scores option for
residuals()
to compute residuals for each row in the original data -
bfactor()
can include an additional model argument for modeling two-tier structures introduced by Cai (2010), and now supports a'group'
input for multiple group analyses -
added a general Ramsey (1975) acceleration to EM estimation by default. Can be disable with
accelerate = FALSE
(and is done so automatically when estimating SEM standard errors) -
renamed response.vector to response.pattern in
fscores()
, and now supports matrix input for computing factor scores on larger data sets (suggested by Felix Hansen) -
total.info logical added to
iteminfo()
to return either total item information or information from each category -
mirt.model()
supports the so-called Q-matrix input format, along with a matrix input for the covariance terms -
MH-RM algorithm now accessible by passing
mirt(..., method = 'MHRM')
, andconfmirt()
function removed completely.confmirt.model()
also renamed tomirt.model()
-
support for polynomial and interaction terms in EM estimation
-
lognormal priors may now be passed to parprior
-
iterative computations in
fscores()
can now be run in parallel automatically following amirtCluster()
definition -
mirtCluster()
function added to make utilizing parallel cores more convenient. Globally removed the cl argument for multi-core objects -
updated documentation for data sets by adding relevant examples, and added Bock1997 data set for replicating table 3 in van der Linden, W. J. & Hambleton, R. K. (1997) Handbook of modern item response theory
-
general speed improvements in all functions
-
WLE estimation fixed and now estimates extreme response patterns
-
exploratory starting values no longer crash in datasets with a huge number of NAs, which caused standard deviations to be zero
-
math fix for beta priors
-
support for random effect predictors now available in
mixedmirt()
, along with arandef()
function for computing MAP predictions for the random parameters -
EAPsum support in
fscores()
for mixed item types -
for consistency with current IRT software (rather than TESTFACT and POLYFACT), the scaling constant has been set to D = 1 and fixed at this value
-
nominal.highlow option added to specify which categories are the highest and lowest in nominal models. Often provide better numerical stability when utilized. Default is still to use the highest and lowest categories
-
increase number of draws in the Monte Carlo calculation of the log-likelihood from 3000 to 5000
-
when itemtype all equal 'Rasch' or 'rsm' models the latent variance parameter(s) are automatically freed and estimated
-
mixedmirt()
more supportive of user defined R formulas, and now includes an internal 'items' argument to create the item design matrix used to estimate the intercepts. More closely mirrors the results from lme4 for Rasch models as well (special thanks to Kevin Joldersma for testing and debugging) -
drop.zeros
option added to extract.item and itemplot to reduce dimensionality of factor structures that contain slopes equal to zero -
EM tolerance (TOL argument) default dropped to .0001 (originally .001)
-
type = 'score'
andtype = 'infoSE'
added toplot()
generic for expected total score and joint test standard error/information -
custom latent mean and covariance matrix can be passed to
fscores()
for EAP, MAP, and EAPsum methods. Also applies topersonfit()
anditemfit()
diagnostics -
scores.only option to
fscores()
for returning just the estimated factor scores -
bfactor can include NA values in the model to omit the estimation of specific factors for the corresponding item
-
limiting values in z.outfit and z.infit statistics for small sample sizes (fix suggested by Mike Linacre)
-
missing data gradient bug fix in MH-RM for dichotomous item models
-
global df fix for multidimensional confirmatory models
-
SEM information matrix computed with more accuracy (M-step was not identical to original EM), and fixed when equality constrains are imposed
-
new
'#PLNRM'
models to fit Suh & Bolt (2010) nested logistic models -
'large'
option added to estimation functions. Useful when the datasets being analysed are very large and organizing the data becomes a computationally burdensome task that should be avoided when fitting new models. Also, overall faster handling of datasets -
plot()
,fitted()
, andresiduals()
generic support added for MultipleGroup objects -
CFI and X2 model statistics added, and output now includes fit stats w.r.t. both G2 and X2
-
z stats added for itemfit/personfit infit and outfit statistics
-
supplemented EM ('SEM') added for calculating information matrix from EM history. By default the TOL value is dropped to help make the EM iterations longer and more stable. Supports parallel computing
-
added return empirical reliability (
returnER
) option tofscores()
-
plot()
supports individual item information trace lines on the same graph (dichotomous items only) with the optiontype = 'infotrace'
-
createItem()
function available for defining item types that can be passed to estimation functions. This can be used to model items not available in the package (or anywhere for that matter) with the EM or MHRM. Derivatives are computed numerically by default using the numDeriv package for defining item types on the fly -
Mstep in EM moved to quasi-Newton instead of my home grown MV Newton-Raphson approach. Gives more stability during estimation when the Hessian is ill-conditioned, and will provide an easier front-end for defining user rolled IRT models
-
small bias fix in Hessian and gradients in
mirt()
implementation causing the likelihood to not always be increasing near maximum -
fix input to
itemplot()
when object is a list of model objects -
fixed implementation of infit and outfit Rasch statistics
-
order of nominal category intercepts were sometimes backwards. Fixed now
-
S_X2 collapsed cells too much and caused negative df
-
response.vector
input now supports NA inputs (reported by Neil Rubens)
-
S-X2 statistic computed automatically for unidimensional models via itemfit()
-
EAP for sum-scores added to fscores() with method = 'EAPsum'. Works with full.scores option as well
-
improve speed of estimation in multipleGroup() when latent means/variances are estimated
-
multipleGroup(invariance = '') can include item names to specify which items are to be considered invariant across groups. Useful for anchoring and DIF testing
-
type = 'trace' option added to plot() to display all item trace lines on a single graph (dichotomous items only)
-
default estimation method in multipleGroup() switched to 'EM'
-
boot.mirt() function added for computing bootstrapped standard errors with via the boot package (which supports parallel computing as well), as well as a new option SE.type = '' for choosing between Bock and Lieberman or MHRM type information matrix computations
-
indexing items in itemplot, itemfit, and extract.item can be called using either a number or the original item name
-
added probtrace() function for front end users to generate probability trace functions from models
-
plotting item tracelines with only two categories now omits the lowest category (as is more common)
-
parallel option passed to calcLogLik to compute Monte Carlo log-likelihood more quickly. Can also be passed down the call stack from confmirt, multipleGroup, and mixedmirt
-
Confidence envelopes option added to itemplot() for trace lines and information plots
-
lbound and ubound parameter bounds are now available to the user for restricting the parameter estimation space
-
mod2values() function added to convert an estimated mirt model into the appropriate data.frame used to determine parameter estimation characteristics (starting values, group names, etc)
-
added imputeMissing() function to impute missing values given an estimated mirt model. Useful for checking item and person fit diagnostics and obtaining overall model fit statistics
-
allow for Rasch itemtype in multidimensional confirmatory models
-
oblimin the new default exploratory rotation (suggested by Dave Flora)
-
more flexible calculation of M2 statistic in fitIndicies(), with user prompt option if the internal variables grow too large and cause time/RAM problems
-
read.mirt() fixed when objects contain standard errors (didn't properly line up before)
-
mixedmirt() fix when COV argument supplied (reported by Aaron Kaat)
-
fix for multipleGroup when independent groups don't contain all potential response options (reported by Scot McNary)
-
prevent only using 'free_means' and 'free_varcov' in multipleGroup since this would not be identified without further constraints (reported by Ken Beath)
-
all dichotomous, graded rating scale, (generalized) partial credit, rating scale, and nominal models have been better optimized
-
wald() will now support information matrices that contain constrained parameters
-
confmirt.model() can accept a string inputs, which may be useful for knitr/sweave documents since the scan() function tends to hang
-
multipleGroup() now has the logical options bfactor = TRUE to use the dimensional reduction algorithm for when the factor pattern is structured like a bifactor model
-
new fitIndices() function added to compute additional model fit statistics such as M2
-
testinfo() function added for test information
-
lower bound parameters under more stringent control during estimation and are bounded to never be higher than .6
-
infit and outfit stats in itemfit() now work for Rasch partial credit and rating scale models
-
Rasch rating scale models can now be estimated with potential rsm.blocks (same as grsm model). "Generalized" rating scale models can also be estimated, though this requires manipulating the starting values directly
-
added sample size adjusted BIC (SABIC) information statistics
-
new mixedmirt() function for estimating IRT models with person and item level (e.g., LLTM) covariates. Currently only supports fixed effect predictors, but random effect predictors are being developed
-
more structured output when using the anova() generic
-
item probability functions now only permit permissible values, and models may converge even when the log-likelihood decreases during estimation. In the EM if the model does not have a strictly increasing log-likelihood then a warning message will be printed
-
infit and outfit statistics are now only applicable to Rasch models (as they should be), and in itemfit/personfit() a 'method' argument has been added to specify which factor score estimates should be used
-
read.mirt() re-added into the package to allow for translating estimated models into a format usable by the plink package
-
test standard error added to plot() generic using type = 'SE', and expected score plot added to itemplot() using type = 'score'
-
weighted likelihood estimation (WLE) factor scores now available (without standard errors)
-
removed the allpars option to coef() generics and only return a named list with the (possibly rotated) item and group coefficients
-
information functions slightly positively biased due to logistic constant adjustment, fixed for all models. Also, information functions are now available for almost all item response models (mcm items missing)
-
constant (D) used in estimating logistic functions can now be modified (default is still 1.702)
-
partcomp models recently broken, fixed now
-
more than one parameter can now be passed to parprior to make specifying identical priors more convenient
-
relative efficiency plots added to itemplot(). Works directly for multipleGroup analysis and for comparing different item types (e.g., 1PL vs 2PL) can be wrapped into a named list
-
infit and outfit statistics added to personfit() and itemfit()
-
empirical reliability printed for each dimension when fscores(..., fulldata = FALSE) called
-
better system to specify fixed/free parameters and starting values using pars = 'values'. Should allow for much better simulation based work
-
graded model type rating scale added (Muraki, 1990) with optional estimation 'blocks'. Use itemtype = 'grsm', and the grsm.block option
-
for multipleGroup(), optional input added to change the current freely estimated parameters to values of a previously computed model. This will save needless iterations in the EM and MHRM since these parameters should be much closer to the new ML estimates
-
itemplot() supports multipleGroup objects now
-
analytical derivatives much more stable, although some are not yet optimized
-
estimation bug fix in bfactor(), and slight bias fix in mirt() estimation (introduced in version 0.4.0 when multipleGroup() added)
-
updated documentation and beamer slide show included for some background on MIRT and some of the packages capabilities
-
labels added to coef() when standard errors not computed. Also allpars = TRUE is now the default
-
kernel estimation moved entirely to one method. Much easier to maintain and guarantees consistency across methods (i.e., no more quasi-Newton algorithms used)
-
Added itemfit() and personfit() functions for uni and multidimensional models. Within itemfit empirical response curves can also be plotted for unidimensional models
-
Wrapped itemplot() and fscores() into S3 function for better documentation. Also response curve now are all contained in individual plots
-
Added free.start list option for all estimation functions. Allows a quicker way to specify free and fixed parameters
-
Added iteminfo() and extract.item() to calculate the item information and extract desired items
-
Multiple group estimation available with the multipleGroup() function. Uses the EM and MHRM as the estimation engines. The MHRM seems to be faster at two factors+ though and naturally should be more accurate, therefore it is set as the default
-
wald() function added for testing linear constraints. Useful in situations for testing sets of parameters rather than estimating a new model for a likelihood ratio test
-
Methods that use the MHRM can now estimate the nominal, gpcm, mcm, and 4PL models
-
fscores computable for multiple group objects and in general play nicer with missing data (reported by Judith Conijn). Also, using the options full.scores = TRUE has been optimized with Rcpp
-
Oblique rotation bug fix for fscores and coef (reported by Pedro A. Barbetta)
-
Added the item probability equations in the ?mirt documentation for reference
-
General bug fixes as usual that were spawned from all the added features. Overall, stay frosty.
-
Individual classes now correspond to the type of methods: ExploratoryClass, ConfirmatoryClass, and MultipleGroupClass
-
plot and itemplot now works for confmirt objects
-
mirt can now make use of confmirt.model specified objects and hence be confirmatory as well
-
stochastic estimation of factor scores removed entirely, now only quadrature based methods for all objects. Also, bfactor returned objects now will estimate all the factors scores instead of just the general dimension
-
Standard errors for mirt now automatically calculated (borrowed from running a tweaked MHRM run)
-
radically changed the underlying mechanisms for the estimation functions and in doing so have decided that polymirt() was redundant and could be replaced completely by calling confmirt(data, number_of_factors). The reason for the change was to facilitate a wider range or MIRT models and to allow for easier extensions to future multiple group analysis and multilevel modelling
-
new univariate and MV models are available, including the 1-4 parameter logistic generalized partial credit, nominal, and multiple choice models. These are called by specifying a character vector called 'itemtype' of length nitems with the options '2PL','3PL','4PL','graded','gpcm', 'nominal', or 'mcm'; use 'PC2PL' and 'PC3PL' for partially-compensatory items. If itemtype = '1PL' or 'Rasch', then the 1-parameter logistic/1-parameter ordinal or Rasch/partial credit models are estimated for all the data. The default assumes that items are either '2PL' or 'graded', as before.
-
flexible user defined linear equality restrictions may be imposed on all estimation functions, so too can prior parameter distributions, start values, and choice of which parameters to estimate. These all follow these general 2 steps:
- Call the function as you would normally would but use, for example, mirt(data, 1, startvalues = 'index') to return the start values as they are indexed
- Edit them as you please (without changing the structure), then input them back into the function as mirt(data, 1, startvalues = editedstartvalues).
This is true for the parprior (MAP priors), constrain (linear equality constraints), and freepars (parameters freely estimated), each with their own little quirk. All inputs are lists with named parameters for easy identification and manipulation. Note that this means that the partial credit model and Rasch models may be calculated as well by modifying either the start values and constraints accordingly (e.g., constrain all slopes to be equal to 1/1.702 and not freely estimated for the classical Rasch model, or all equal but estimated for the 1PL model)
-
number of confmirt.model() options decreased due to the new way to specify item types, startvalues, prior parameter distributions, and constraints
-
plink package has not kept up with item information curves, so I'll implement my own for now. Replaced plink item plots from 'itemplots' function with ones that I rolled
-
package descriptions and documentation updated
-
coef() now prints slightly different output, with the new option 'allpars = TRUE' to display all the item and group parameters, returned as a list
-
simdata() updated to support new item types
-
more accurate standard errors for MAP and ML factor scores, and specific factors in bfactorClass objects can now be estimated for all methods
-
dropped the ball and had lots of bug fixes this round. Future commits will avoid this problem by utilizing the testthat package to test code extensively before release
-
internal change in confmirt function to move MHRM engine outside the function for better maintenance
-
theta_angle added to mirt and polymirt plots for changing the viewing angle w.r.t theta_1
-
null model no longer calculated when missing data present
-
fixed item slope models estimated in mirt() with associated standard errors
-
null model computed, allowing for model statistics such as TLI
-
documentation changes
-
many back end technical details about estimation moved to technical lists
-
support for all GPArotation methods and options, including Target rotations
-
polymirt() uses confmirt() estimation engine
-
4PL support for mirt() and bfactor(), treating the upper bound as fixed
-
coef() now has a rotate option for returning rotated IRT parameters
-
Fixed translation bug in the C++ code from bfactor() causing illegal vector length throw
-
Fixed fscores() bug when using polychotomous items for mirt() and bfactor()
-
pass rotate='rotation' from mirt and polymirt to override default 'varimax' rotation at estimation time (suggested by Niels Waller)
-
RMSEA, G^2, and p set to NaN instead of internal placeholder when there are missing data
-
df adjusted when missing data present
-
oblique rotations return invisible factor correlation matrix
-
degrees of freedom correctly adjusted when using noncompensatory items
-
confmirtClass reorganized to work with S4 methods, now work more consistently with methods.
-
fixed G^2 and log-likelihood in logLik() when product terms included
-
bugfix in drawThetas when noncompensatory items used
-
bugfixes for fscores, itemplot, and generic functions
-
read.mirt() added for creating a suitable plink object
-
mirt() and bfactor() can now accommodate polychotomous items using an ordinal IRT scheme
-
itemplot() now makes use of the handy plink package plots, giving a good deal of flexibility.
-
Generic plot()'s now use lattice plots extensively
-
Ported src code into Rcpp for future tweaking.
-
Added better fitted() function when missing data exist (noticed by Erin Horn)
-
ML estimation of factor scores for mirt and bfactor
-
RMSEA statistic added for all fitted models
-
Nonlinear polynomial estimation specification for confmirt models, now with more consistent returned labels
-
Provide better identification criteria for confmirt() (suggested by Hendrik Lohse)
-
parameter standard errors added for mirt() (1 factor only) and bfactor() models
-
bfactor() values that are ommited are recoded to NA in summary and coef for better viewing
-
'technical' added for confmirt function, allowing for various tweaks and varying beta prior weights
-
product relations added for confmirt.model(). Specified by enclosing in brackets and using an asterisk
-
documentation fixes with roxygenize
- allow lower bound beta priors to vary over items (suggested by James Lee)
- bias fix for mirt() function (noticed by Pedro Barbetta)