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FNST_trad_2a

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:

  • Loss: 4.0162
  • Accuracy: 0.6525
  • F1: 0.6433

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:

  • learning_rate: 1e-05
  • train_batch_size: 6
  • eval_batch_size: 6
  • seed: 42
  • optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
  • lr_scheduler_type: linear
  • num_epochs: 78

Training results

Training Loss Epoch Step Validation Loss Accuracy F1
1.1219 1.0 2000 1.0718 0.5383 0.4455
0.9768 2.0 4000 0.9417 0.595 0.5797
0.8945 3.0 6000 0.9033 0.6092 0.6039
0.8746 4.0 8000 0.8784 0.6275 0.6224
0.802 5.0 10000 0.8671 0.6367 0.6302
0.7519 6.0 12000 0.8689 0.6375 0.6322
0.7418 7.0 14000 0.8705 0.6383 0.6324
0.7059 8.0 16000 0.8827 0.6408 0.6379
0.669 9.0 18000 0.9116 0.635 0.6312
0.6187 10.0 20000 0.9554 0.6483 0.6437
0.5805 11.0 22000 0.9859 0.6383 0.6344
0.5586 12.0 24000 0.9893 0.6425 0.6329
0.4964 13.0 26000 1.0624 0.645 0.6348
0.4637 14.0 28000 1.1429 0.6375 0.6298
0.4146 15.0 30000 1.2550 0.635 0.6291
0.3859 16.0 32000 1.2847 0.6425 0.6350
0.3613 17.0 34000 1.4032 0.6442 0.6375
0.3566 18.0 36000 1.5330 0.6442 0.6363
0.3014 19.0 38000 1.6704 0.6458 0.6384
0.3236 20.0 40000 1.8629 0.6442 0.6406
0.3181 21.0 42000 1.9695 0.6375 0.6361
0.258 22.0 44000 2.0728 0.6467 0.6365
0.2174 23.0 46000 2.1817 0.6442 0.6336
0.2373 24.0 48000 2.3151 0.6542 0.6461
0.2237 25.0 50000 2.3966 0.6392 0.6311
0.1968 26.0 52000 2.5837 0.6375 0.6304
0.1952 27.0 54000 2.6898 0.635 0.6283
0.1734 28.0 56000 2.7676 0.6525 0.6464
0.1791 29.0 58000 2.8467 0.6408 0.6341
0.1723 30.0 60000 2.9415 0.6483 0.6382
0.1437 31.0 62000 2.9579 0.6467 0.6390
0.1377 32.0 64000 3.0478 0.6492 0.6429
0.125 33.0 66000 3.1053 0.6433 0.6333
0.1142 34.0 68000 3.1841 0.6442 0.6371
0.1064 35.0 70000 3.2318 0.6483 0.6414
0.1083 36.0 72000 3.3547 0.6367 0.6271
0.0729 37.0 74000 3.4056 0.6483 0.6393
0.0805 38.0 76000 3.3959 0.6467 0.6396
0.0809 39.0 78000 3.4675 0.6458 0.6390
0.0792 40.0 80000 3.5613 0.6408 0.6370
0.0735 41.0 82000 3.5786 0.6442 0.6367
0.0753 42.0 84000 3.6967 0.6408 0.6320
0.0661 43.0 86000 3.6580 0.6425 0.6380
0.0566 44.0 88000 3.7266 0.6392 0.6320
0.0617 45.0 90000 3.5621 0.6608 0.6543
0.0535 46.0 92000 3.6820 0.6458 0.6350
0.0593 47.0 94000 3.5833 0.6517 0.6438
0.0666 48.0 96000 3.5367 0.6542 0.6465
0.0589 49.0 98000 3.7562 0.6492 0.6438
0.0504 50.0 100000 3.6989 0.6483 0.6372
0.0414 51.0 102000 3.6851 0.6542 0.6472
0.0454 52.0 104000 3.8027 0.6483 0.6436
0.0421 53.0 106000 3.9190 0.6475 0.6415
0.0422 54.0 108000 3.7929 0.6567 0.6478
0.0476 55.0 110000 3.9425 0.6458 0.6387
0.0539 56.0 112000 3.8677 0.6542 0.6477
0.0471 57.0 114000 3.8409 0.6467 0.6390
0.0466 58.0 116000 3.8810 0.6442 0.6394
0.0241 59.0 118000 3.9288 0.645 0.6355
0.0517 60.0 120000 3.9219 0.65 0.6433
0.0373 61.0 122000 3.9035 0.6467 0.6406
0.0354 62.0 124000 3.9745 0.6492 0.6453
0.0412 63.0 126000 3.8600 0.6508 0.6436
0.0347 64.0 128000 3.9549 0.6458 0.6369
0.026 65.0 130000 4.0143 0.6492 0.6455
0.0322 66.0 132000 3.9391 0.6583 0.6518
0.0209 67.0 134000 3.9041 0.6583 0.6480
0.0444 68.0 136000 4.0050 0.6517 0.6471
0.0468 69.0 138000 3.9229 0.6508 0.6433
0.0348 70.0 140000 4.0621 0.6483 0.6423
0.0336 71.0 142000 3.9194 0.6542 0.6478
0.0331 72.0 144000 3.9868 0.6517 0.6394
0.0263 73.0 146000 3.9032 0.6467 0.6380
0.0289 74.0 148000 4.0713 0.6417 0.6342
0.0301 75.0 150000 4.0151 0.6433 0.6341
0.0312 76.0 152000 3.9339 0.6533 0.6452
0.0371 77.0 154000 3.9741 0.6542 0.6463
0.0273 78.0 156000 4.0162 0.6525 0.6433

Framework versions

  • Transformers 4.37.2
  • Pytorch 2.1.0+cu121
  • Datasets 2.16.1
  • Tokenizers 0.15.1
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