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Data and Model files

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Approach LM Perplexity Classifier F1
BERT 8.2 0.63
DistilBERT 6.5 0.63
ULMFIT 21 0.61
RoBERTa 7.54 0.64

Model Performance

Base LM Dataset Accuracy Precision Recall F1 LM Perplexity
bert-base-multilingual-cased Test 0.688 0.698 0.686 0.687 8.2
bert-base-multilingual-cased Valid 0.62 0.592 0.605 0.55 8.2
distilbert-base-uncased Test 0.693 0.694 0.703 0.698 6.51
distilbert-base-uncased Valid 0.607 0.614 0.600 0.592 6.51
distilbert-base-multilingual-cased Test 0.612 0.615 0.616 0.616 8.1
distilbert-base-multilingual-cased Valid 0.55 0.531 0.537 0.495 8.1
roberta-base Test 0.630 0.629 0.644 0.635 7.54
roberta-base Valid 0.60 0.617 0.607 0.595 7.54
Ensemble Test 0.714 0.718 0.718 0.718

Ensemble Performace

Model Accuracy Precision Recall F1 Config Link to Model and output files
BERT 0.68866 0.69821 0.68608 0.6875 Batch Size - 16
Attention Dropout - 0.4
Learning Rate - 5e-07
Adam epsilon - 1e-08
Hidden Dropout Probability - 0.3
Epochs - 3
BERT
DistilBert 0.69333 0.69496 0.70379 0.6982 Batch Size - 16
Attention Dropout - 0.6
Learning Rate - 3e-05
Adam epsilon - 1e-08
Hidden Dropout Probability - 0.6
Epochs - 3
DistilBert
EnsembleBert1 0.69233 0.70236 0.69064 0.68952 Batch Size - 4
Attention Dropout - 0.7
Learning Rate - 5.01e-05
Adam epsilon - 4.79e-05
Hidden Dropout Probability - 0.1
Epochs - 3
EnsembleBert1
EnsembleBert2 0.691 0.7009 0.6889 0.68872 Batch Size - 4
Attention Dropout - 0.6
Learning Rate - 5.13e-05
Adam epsilon - 9.72e-05
Hidden Dropout Probability - 0.2
Epochs - 3
EnsembleBert2
EnsembleDistilBert1 0.70166 0.70377 0.70976 0.7061 Batch Size - 16
Attention Dropout - 0.8
Learning Rate - 3.02e-05
Adam epsilon - 9.35e-05
Hidden Dropout Probability - 0.4
Epochs - 3
EnsembleDistilBert1
EnsembleDistilBert2 0.689 0.691 0.69666 0.69335 Batch Size - 4
Attention Dropout - 0.6
Learning Rate - 5.13e-05
Adam epsilon - 9.72e-05
Hidden Dropout Probability - 0.2
Epochs - 3
EnsembleDistilBert2
EnsembleDistilBert3 0.69366 0.69538 0.70557 0.69905 Batch Size - 16
Attention Dropout - 0.4
Learning Rate - 4.74e-05
Adam epsilon - 4.09e-05
Hidden Dropout Probability - 0.6
Epochs - 3
EnsembleDistilBert3
Ensemble 0.71466 0.71867 0.71853 0.7182 NA Ensemble

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