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scenario-non-kd-pre-ner-full-mdeberta_data-univner_half44

This model is a fine-tuned version of microsoft/mdeberta-v3-base on the None dataset. It achieves the following results on the evaluation set:

  • Loss: 0.2072
  • Precision: 0.7459
  • Recall: 0.7690
  • F1: 0.7573
  • Accuracy: 0.9753

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: 3e-05
  • train_batch_size: 32
  • eval_batch_size: 32
  • seed: 44
  • optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
  • lr_scheduler_type: linear
  • num_epochs: 30

Training results

Training Loss Epoch Step Validation Loss Precision Recall F1 Accuracy
0.2851 0.5828 500 0.1625 0.3507 0.3872 0.3681 0.9447
0.1579 1.1655 1000 0.1336 0.4826 0.5307 0.5055 0.9561
0.1078 1.7483 1500 0.1160 0.6087 0.6845 0.6443 0.9652
0.0783 2.3310 2000 0.1105 0.6182 0.7168 0.6639 0.9659
0.063 2.9138 2500 0.1104 0.6213 0.7152 0.6650 0.9647
0.0478 3.4965 3000 0.1029 0.6807 0.7344 0.7065 0.9707
0.0404 4.0793 3500 0.1119 0.6783 0.7432 0.7093 0.9714
0.0299 4.6620 4000 0.1140 0.7065 0.7329 0.7195 0.9719
0.0266 5.2448 4500 0.1246 0.6919 0.7505 0.7200 0.9714
0.021 5.8275 5000 0.1254 0.7136 0.7474 0.7301 0.9727
0.018 6.4103 5500 0.1340 0.7030 0.7365 0.7194 0.9716
0.0161 6.9930 6000 0.1311 0.7151 0.7387 0.7267 0.9722
0.0134 7.5758 6500 0.1466 0.6973 0.7500 0.7226 0.9709
0.0119 8.1585 7000 0.1521 0.7013 0.7692 0.7336 0.9719
0.0097 8.7413 7500 0.1450 0.7258 0.7632 0.7440 0.9739
0.0089 9.3240 8000 0.1603 0.7061 0.7621 0.7331 0.9722
0.0083 9.9068 8500 0.1501 0.7148 0.7583 0.7359 0.9727
0.0068 10.4895 9000 0.1698 0.7411 0.7277 0.7344 0.9735
0.006 11.0723 9500 0.1648 0.7132 0.7586 0.7352 0.9731
0.0057 11.6550 10000 0.1732 0.7390 0.7351 0.7371 0.9740
0.0052 12.2378 10500 0.1710 0.7197 0.7563 0.7375 0.9728
0.0051 12.8205 11000 0.1612 0.7337 0.7602 0.7467 0.9741
0.0039 13.4033 11500 0.1717 0.7411 0.7331 0.7371 0.9736
0.0041 13.9860 12000 0.1782 0.7424 0.7484 0.7454 0.9744
0.003 14.5688 12500 0.1863 0.7455 0.7361 0.7408 0.9738
0.0033 15.1515 13000 0.1826 0.7326 0.7664 0.7491 0.9742
0.0031 15.7343 13500 0.1796 0.7490 0.7338 0.7413 0.9738
0.0025 16.3170 14000 0.1817 0.7292 0.7719 0.7499 0.9745
0.0026 16.8998 14500 0.1858 0.7317 0.7602 0.7457 0.9744
0.0023 17.4825 15000 0.1969 0.7279 0.7579 0.7426 0.9737
0.0023 18.0653 15500 0.1903 0.7375 0.7606 0.7489 0.9745
0.0017 18.6480 16000 0.1995 0.7301 0.7601 0.7448 0.9737
0.0021 19.2308 16500 0.1935 0.7322 0.7567 0.7443 0.9742
0.0018 19.8135 17000 0.1901 0.7297 0.7611 0.7451 0.9742
0.0016 20.3963 17500 0.1886 0.7293 0.7684 0.7483 0.9743
0.0015 20.9790 18000 0.1977 0.7407 0.7475 0.7441 0.9744
0.0013 21.5618 18500 0.1973 0.7382 0.7617 0.7498 0.9744
0.0014 22.1445 19000 0.1956 0.7367 0.7614 0.7488 0.9744
0.0012 22.7273 19500 0.1937 0.7356 0.7647 0.7499 0.9748
0.001 23.3100 20000 0.2042 0.7357 0.7562 0.7458 0.9743
0.001 23.8928 20500 0.2027 0.7476 0.7536 0.7506 0.9747
0.0009 24.4755 21000 0.2006 0.7429 0.7736 0.7579 0.9753
0.001 25.0583 21500 0.2053 0.7427 0.7661 0.7542 0.9749
0.0008 25.6410 22000 0.2074 0.7322 0.7713 0.7513 0.9746
0.0007 26.2238 22500 0.2062 0.7461 0.7651 0.7555 0.9751
0.0008 26.8065 23000 0.2094 0.7460 0.7606 0.7533 0.9750
0.0006 27.3893 23500 0.2083 0.7552 0.7554 0.7553 0.9751
0.0006 27.9720 24000 0.2073 0.7444 0.7618 0.7530 0.9751
0.0007 28.5548 24500 0.2095 0.7390 0.7680 0.7532 0.9749
0.0006 29.1375 25000 0.2070 0.7476 0.7667 0.7570 0.9754
0.0006 29.7203 25500 0.2072 0.7459 0.7690 0.7573 0.9753

Framework versions

  • Transformers 4.44.2
  • Pytorch 2.1.1+cu121
  • Datasets 2.14.5
  • Tokenizers 0.19.1
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