generated_from_trainer

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modelBeto6

This model is a fine-tuned version of dccuchile/bert-base-spanish-wwm-cased on an unknown dataset. It achieves the following results on the evaluation set:

Model description

More information needed

Intended uses & limitations

More information needed

Training and evaluation data

More information needed

Training procedure

Training hyperparameters

The following hyperparameters were used during training:

Training results

Training Loss Epoch Step Validation Loss Precision Recall F1 Accuracy
No log 1.0 29 0.2309 0.0 0.0 0.0 0.9440
No log 2.0 58 0.2034 0.0 0.0 0.0 0.9440
No log 3.0 87 0.1685 0.1429 0.0157 0.0283 0.9476
No log 4.0 116 0.1425 0.3034 0.1414 0.1929 0.9546
No log 5.0 145 0.1285 0.3802 0.2408 0.2949 0.9589
No log 6.0 174 0.1283 0.5922 0.3194 0.4150 0.9696
No log 7.0 203 0.1337 0.5630 0.3979 0.4663 0.9715
No log 8.0 232 0.1184 0.5505 0.6283 0.5868 0.9686
No log 9.0 261 0.1308 0.5882 0.5759 0.5820 0.9729
No log 10.0 290 0.1329 0.5989 0.5550 0.5761 0.9729
No log 11.0 319 0.1549 0.6781 0.5183 0.5875 0.9742
No log 12.0 348 0.1578 0.6221 0.5602 0.5895 0.9732
No log 13.0 377 0.1505 0.6117 0.6021 0.6069 0.9716
No log 14.0 406 0.1671 0.6412 0.5707 0.6039 0.9729
No log 15.0 435 0.1684 0.5902 0.5654 0.5775 0.9710
No log 16.0 464 0.1707 0.6216 0.6021 0.6117 0.9727
No log 17.0 493 0.1715 0.6453 0.5812 0.6116 0.9737
0.0738 18.0 522 0.1729 0.5734 0.6545 0.6112 0.9701
0.0738 19.0 551 0.1815 0.5990 0.6021 0.6005 0.9716
0.0738 20.0 580 0.1746 0.6354 0.6387 0.6371 0.9732
0.0738 21.0 609 0.1654 0.6686 0.5916 0.6278 0.9749
0.0738 22.0 638 0.1678 0.6359 0.6492 0.6425 0.9741
0.0738 23.0 667 0.1704 0.6218 0.6283 0.625 0.9742
0.0738 24.0 696 0.1746 0.6685 0.6440 0.6560 0.9747
0.0738 25.0 725 0.1772 0.6224 0.6387 0.6305 0.9739
0.0738 26.0 754 0.1792 0.6484 0.6178 0.6327 0.9741
0.0738 27.0 783 0.1788 0.6383 0.6283 0.6332 0.9741
0.0738 28.0 812 0.1802 0.6281 0.6545 0.6410 0.9741
0.0738 29.0 841 0.1803 0.6443 0.6545 0.6494 0.9747
0.0738 30.0 870 0.1804 0.6495 0.6597 0.6545 0.9749
0.0738 31.0 899 0.1805 0.6443 0.6545 0.6494 0.9746
0.0738 32.0 928 0.1808 0.6219 0.6545 0.6378 0.9737

Framework versions