diff --git a/data/xml/2020.acl.xml b/data/xml/2020.acl.xml
index 9494d3cb5e..505e311c55 100644
--- a/data/xml/2020.acl.xml
+++ b/data/xml/2020.acl.xml
@@ -2507,7 +2507,7 @@
10.18653/v1/2020.acl-main.169
madaan-etal-2020-politeness
- tag-and-generate/Politeness-Transfer-A-Tag-and-Generate-Approach
+ tag-and-generate/Politeness-Transfer-A-Tag-and-Generate-Approach
BPE-Dropout: Simple and Effective Subword Regularization
diff --git a/data/xml/2020.coling.xml b/data/xml/2020.coling.xml
index 2cd29553c7..f19a05cc4e 100644
--- a/data/xml/2020.coling.xml
+++ b/data/xml/2020.coling.xml
@@ -6944,6 +6944,7 @@
2020.coling-main.519
10.18653/v1/2020.coling-main.519
clifton-etal-2020-100000
+ Urban Hyperspectral Image
A Contextual Alignment Enhanced Cross Graph Attention Network for Cross-lingual Entity Alignment
diff --git a/data/xml/2022.acl.xml b/data/xml/2022.acl.xml
index cee8ceb0ef..6f8a45725d 100644
--- a/data/xml/2022.acl.xml
+++ b/data/xml/2022.acl.xml
@@ -9167,7 +9167,6 @@ in the Case of Unambiguous Gender
vazhentsev-etal-2022-uncertainty
10.18653/v1/2022.acl-long.566
- airi-institute/uncertainty_transformers
CoLA
CoNLL 2003
GLUE
diff --git a/data/xml/2022.lrec.xml b/data/xml/2022.lrec.xml
index 1f0716e036..8541934e8b 100644
--- a/data/xml/2022.lrec.xml
+++ b/data/xml/2022.lrec.xml
@@ -5685,7 +5685,7 @@
In recent years there have been considerable advances in pre-trained language models, where non-English language versions have also been made available. Due to their increasing use, many lightweight versions of these models (with reduced parameters) have also been released to speed up training and inference times. However, versions of these lighter models (e.g., ALBERT, DistilBERT) for languages other than English are still scarce. In this paper we present ALBETO and DistilBETO, which are versions of ALBERT and DistilBERT pre-trained exclusively on Spanish corpora. We train several versions of ALBETO ranging from 5M to 223M parameters and one of DistilBETO with 67M parameters. We evaluate our models in the GLUES benchmark that includes various natural language understanding tasks in Spanish. The results show that our lightweight models achieve competitive results to those of BETO (Spanish-BERT) despite having fewer parameters. More specifically, our larger ALBETO model outperforms all other models on the MLDoc, PAWS-X, XNLI, MLQA, SQAC and XQuAD datasets. However, BETO remains unbeaten for POS and NER. As a further contribution, all models are publicly available to the community for future research.
2022.lrec-1.457
canete-etal-2022-albeto
- dccuchile/lightweight-spanish-language-models
+ OpenCENIA/lightweight-spanish-language-models
CoNLL 2002
MLDoc
MLQA
diff --git a/data/xml/2022.naacl.xml b/data/xml/2022.naacl.xml
index e45130bf39..8ff3b892dc 100644
--- a/data/xml/2022.naacl.xml
+++ b/data/xml/2022.naacl.xml
@@ -5739,6 +5739,7 @@
zhao-etal-2022-epida
10.18653/v1/2022.naacl-main.349
+ zhaominyiz/epida
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