Ashlee Kupor commited on
Commit
136b363
·
1 Parent(s): 01e95ca

Add rest of best model files

Browse files
eval_results.txt CHANGED
@@ -1,12 +1,12 @@
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- accuracy = 0.9896124650419497
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- auprc = 0.9810859562473818
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- auroc = 0.9944400284483118
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- eval_loss = 0.04591471583092624
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- f1 = 0.9602446483180428
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- fn = 16
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- fp = 10
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- mcc = 0.9543241015678982
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- precision = 0.9515151515151515
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- recall = 0.9691358024691358
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- tn = 2163
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- tp = 314
 
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+ accuracy = 0.8681582101478226
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+ auprc = 0.24997892074297332
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+ auroc = 0.7011686120291735
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+ eval_loss = 0.3847324617754537
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+ f1 = 0.0
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+ fn = 330
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+ fp = 0
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+ mcc = 0.0
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+ precision = 0.0
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+ recall = 0.0
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+ tn = 2173
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+ tp = 0
pytorch_model.bin CHANGED
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  size 498662069
 
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  version https://git-lfs.github.com/spec/v1
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  size 498662069
training_progress_scores.csv CHANGED
@@ -1,8 +1,8 @@
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