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albert-base-v2-2-contract-sections-classification-v4-10

This model is a fine-tuned version of albert/albert-base-v2 on an unknown dataset. It achieves the following results on the evaluation set:

  • Loss: 0.8591
  • Accuracy Evaluate: 0.7843
  • Precision Evaluate: 0.8045
  • Recall Evaluate: 0.7910
  • F1 Evaluate: 0.7930
  • Accuracy Sklearn: 0.7843
  • Precision Sklearn: 0.7973
  • Recall Sklearn: 0.7843
  • F1 Sklearn: 0.7854
  • Acuracia Rotulo Objeto: 0.8698
  • Acuracia Rotulo Obrigacoes: 0.8670
  • Acuracia Rotulo Valor: 0.6046
  • Acuracia Rotulo Vigencia: 0.5984
  • Acuracia Rotulo Rescisao: 0.7839
  • Acuracia Rotulo Foro: 0.9
  • Acuracia Rotulo Reajuste: 0.8185
  • Acuracia Rotulo Fiscalizacao: 0.6656
  • Acuracia Rotulo Publicacao: 0.8227
  • Acuracia Rotulo Pagamento: 0.7717
  • Acuracia Rotulo Casos Omissos: 0.8522
  • Acuracia Rotulo Sancoes: 0.8716
  • Acuracia Rotulo Dotacao Orcamentaria: 0.8571

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-06
  • train_batch_size: 16
  • eval_batch_size: 16
  • seed: 42
  • optimizer: Use OptimizerNames.ADAMW_TORCH with betas=(0.9,0.999) and epsilon=1e-08 and optimizer_args=No additional optimizer arguments
  • lr_scheduler_type: linear
  • num_epochs: 10

Training results

Training Loss Epoch Step Validation Loss Accuracy Evaluate Precision Evaluate Recall Evaluate F1 Evaluate Accuracy Sklearn Precision Sklearn Recall Sklearn F1 Sklearn Acuracia Rotulo Objeto Acuracia Rotulo Obrigacoes Acuracia Rotulo Valor Acuracia Rotulo Vigencia Acuracia Rotulo Rescisao Acuracia Rotulo Foro Acuracia Rotulo Reajuste Acuracia Rotulo Fiscalizacao Acuracia Rotulo Publicacao Acuracia Rotulo Pagamento Acuracia Rotulo Casos Omissos Acuracia Rotulo Sancoes Acuracia Rotulo Dotacao Orcamentaria
1.7695 1.0 1000 1.9528 0.4447 0.6693 0.3931 0.3947 0.4447 0.6282 0.4447 0.4028 0.9029 0.8148 0.4069 0.0577 0.2521 0.8692 0.2064 0.0789 0.5025 0.2283 0.4335 0.3303 0.0275
1.2261 2.0 2000 1.6110 0.5755 0.6694 0.5569 0.5614 0.5755 0.6584 0.5755 0.5645 0.8244 0.8013 0.4097 0.3963 0.3601 0.9077 0.6299 0.1956 0.6059 0.6051 0.5714 0.6514 0.2802
0.9134 3.0 3000 1.3841 0.6538 0.7003 0.6524 0.6478 0.6538 0.6991 0.6538 0.6473 0.8161 0.8182 0.4585 0.4724 0.4377 0.9038 0.7794 0.3218 0.7438 0.7428 0.7635 0.7339 0.4890
0.7022 4.0 4000 1.2144 0.6935 0.7370 0.6945 0.6965 0.6935 0.7265 0.6935 0.6904 0.8244 0.8333 0.4470 0.5407 0.6842 0.8923 0.8043 0.3596 0.7488 0.7210 0.6453 0.8349 0.6923
0.5597 5.0 5000 1.0738 0.7288 0.7560 0.7406 0.7386 0.7288 0.7494 0.7288 0.7286 0.8574 0.7845 0.5358 0.5171 0.7147 0.9 0.8292 0.5110 0.7783 0.7355 0.8128 0.8716 0.7802
0.4429 6.0 6000 0.9868 0.7552 0.7772 0.7641 0.7626 0.7552 0.7731 0.7552 0.7556 0.8678 0.8350 0.5874 0.5328 0.7368 0.8846 0.8399 0.5584 0.8227 0.7790 0.8276 0.8807 0.7802
0.389 7.0 7000 0.9236 0.7615 0.7823 0.7701 0.7683 0.7615 0.7763 0.7615 0.7603 0.8616 0.8620 0.6017 0.5538 0.7479 0.8962 0.8185 0.5142 0.8227 0.7681 0.8473 0.8716 0.8462
0.3341 8.0 8000 0.8949 0.776 0.7961 0.7833 0.7845 0.776 0.7900 0.776 0.7771 0.8781 0.8519 0.6017 0.5722 0.7729 0.8962 0.8078 0.6656 0.8227 0.7536 0.8424 0.8716 0.8462
0.3099 9.0 9000 0.8650 0.7805 0.8039 0.7876 0.7905 0.7805 0.7956 0.7805 0.7819 0.8822 0.8552 0.6160 0.5748 0.7756 0.8962 0.8114 0.6593 0.8227 0.7754 0.8522 0.8716 0.8462
0.3016 10.0 10000 0.8591 0.7843 0.8045 0.7910 0.7930 0.7843 0.7973 0.7843 0.7854 0.8698 0.8670 0.6046 0.5984 0.7839 0.9 0.8185 0.6656 0.8227 0.7717 0.8522 0.8716 0.8571

Framework versions

  • Transformers 4.48.3
  • Pytorch 2.6.0+cu124
  • Datasets 3.3.0
  • Tokenizers 0.21.0
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