model_content_V2_test

This model is a fine-tuned version of vinai/phobert-base-v2 on the None dataset. It achieves the following results on the evaluation set:

  • Loss: 0.2218
  • Accuracy: 0.9696
  • F1: 0.9647

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: 2e-05
  • train_batch_size: 64
  • eval_batch_size: 64
  • 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 F1
No log 0.1419 150 0.1158 0.9649 0.9590
No log 0.2838 300 0.1143 0.9619 0.9551
No log 0.4257 450 0.1021 0.9589 0.9532
No log 0.5676 600 0.1081 0.9674 0.9621
No log 0.7096 750 0.0905 0.9659 0.9608
No log 0.8515 900 0.0891 0.9685 0.9635
No log 0.9934 1050 0.1108 0.9676 0.9623
0.111 1.1353 1200 0.0890 0.9690 0.9643
0.111 1.2772 1350 0.0882 0.9700 0.9654
0.111 1.4191 1500 0.0890 0.9708 0.9661
0.111 1.5610 1650 0.0946 0.9688 0.9639
0.111 1.7029 1800 0.0936 0.9703 0.9656
0.111 1.8448 1950 0.0982 0.9712 0.9667
0.111 1.9868 2100 0.1060 0.9614 0.9560
0.0717 2.1287 2250 0.1264 0.9658 0.9609
0.0717 2.2706 2400 0.0902 0.9691 0.9643
0.0717 2.4125 2550 0.0869 0.9699 0.9653
0.0717 2.5544 2700 0.1086 0.9689 0.9638
0.0717 2.6963 2850 0.1122 0.9683 0.9638
0.0717 2.8382 3000 0.0945 0.9698 0.9651
0.0717 2.9801 3150 0.1068 0.9692 0.9647
0.0555 3.1220 3300 0.1041 0.9713 0.9668
0.0555 3.2640 3450 0.1022 0.9710 0.9664
0.0555 3.4059 3600 0.1292 0.9684 0.9637
0.0555 3.5478 3750 0.1135 0.9718 0.9673
0.0555 3.6897 3900 0.1114 0.9711 0.9664
0.0555 3.8316 4050 0.1205 0.9704 0.9656
0.0555 3.9735 4200 0.1136 0.9692 0.9646
0.0429 4.1154 4350 0.1356 0.9688 0.9641
0.0429 4.2573 4500 0.1547 0.9668 0.9619
0.0429 4.3992 4650 0.1360 0.9687 0.9640
0.0429 4.5412 4800 0.1505 0.9686 0.9633
0.0429 4.6831 4950 0.1401 0.9677 0.9629
0.0429 4.8250 5100 0.1359 0.9710 0.9664
0.0429 4.9669 5250 0.1400 0.9711 0.9664
0.0311 5.1088 5400 0.1545 0.9690 0.9643
0.0311 5.2507 5550 0.1638 0.9689 0.9641
0.0311 5.3926 5700 0.1801 0.9692 0.9645
0.0311 5.5345 5850 0.1618 0.9698 0.9649
0.0311 5.6764 6000 0.1612 0.9640 0.9575
0.0311 5.8184 6150 0.1831 0.9681 0.9628
0.0311 5.9603 6300 0.1496 0.9700 0.9651
0.0229 6.1022 6450 0.1788 0.9697 0.9648
0.0229 6.2441 6600 0.1743 0.9700 0.9650
0.0229 6.3860 6750 0.1856 0.9701 0.9652
0.0229 6.5279 6900 0.1718 0.9702 0.9654
0.0229 6.6698 7050 0.1668 0.9695 0.9645
0.0229 6.8117 7200 0.1705 0.9697 0.9647
0.0229 6.9536 7350 0.1758 0.9701 0.9652
0.0178 7.0956 7500 0.1803 0.9679 0.9631
0.0178 7.2375 7650 0.1744 0.9701 0.9651
0.0178 7.3794 7800 0.1708 0.9693 0.9644
0.0178 7.5213 7950 0.1663 0.9692 0.9643
0.0178 7.6632 8100 0.1895 0.9692 0.9644
0.0178 7.8051 8250 0.1877 0.9701 0.9653
0.0178 7.9470 8400 0.1864 0.9692 0.9644
0.0125 8.0889 8550 0.1953 0.9702 0.9655
0.0125 8.2308 8700 0.2072 0.9692 0.9642
0.0125 8.3728 8850 0.1991 0.9686 0.9636
0.0125 8.5147 9000 0.2083 0.9697 0.9647
0.0125 8.6566 9150 0.2085 0.9697 0.9648
0.0125 8.7985 9300 0.2087 0.9699 0.9651
0.0125 8.9404 9450 0.2128 0.9688 0.9639
0.0076 9.0823 9600 0.2150 0.9692 0.9642
0.0076 9.2242 9750 0.2133 0.9692 0.9643
0.0076 9.3661 9900 0.2121 0.9692 0.9642
0.0076 9.5080 10050 0.2220 0.9694 0.9645
0.0076 9.6500 10200 0.2218 0.9692 0.9643
0.0076 9.7919 10350 0.2201 0.9696 0.9647
0.0076 9.9338 10500 0.2218 0.9696 0.9647

Framework versions

  • Transformers 4.56.1
  • Pytorch 2.6.0+cu124
  • Datasets 3.6.0
  • Tokenizers 0.22.0
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