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Global Fit Optimisation Routine #24

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pathfinder49 opened this issue Aug 27, 2019 · 2 comments
Open

Global Fit Optimisation Routine #24

pathfinder49 opened this issue Aug 27, 2019 · 2 comments

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@pathfinder49
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pathfinder49 commented Aug 27, 2019

We may want a routine for global fit optimisation of binomial (or other) distributed data.

This should give the global optimum parameter estimates and their covariances. Ideally, it should be capable of producing a plot of P(parameters|data).

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@pathfinder49
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Markov Chain Monte Carlo might me the appropreate method for this.

There are library implementations in PyMC and PyStan.
A simple introduction is here
A discussion can be found here

@hartytp
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hartytp commented Aug 27, 2019

FWIW I'm not convinced this would be a useful addition to oitg. The aim should be to cover 95% of cases well using robust simple code, and leave the tricky cases to users to fit offline. Writing a toolkit that can robustly do global optimization without significant amounts of per-case user input is a very hard problem.

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