generated_from_trainer

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finetuned-ner

This model is a fine-tuned version of deepset/deberta-v3-base-squad2 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
39.8167 1.0 760 0.3957 0.1844 0.2909 0.2257 0.8499
21.7333 2.0 1520 0.3853 0.2118 0.3273 0.2571 0.8546
13.8859 3.0 2280 0.3631 0.2443 0.2909 0.2656 0.8789
20.6586 4.0 3040 0.3961 0.2946 0.3455 0.3180 0.8753
13.8654 5.0 3800 0.3821 0.2791 0.3273 0.3013 0.8877
12.6942 6.0 4560 0.4393 0.3122 0.3364 0.3239 0.8909
25.0549 7.0 5320 0.4542 0.3106 0.3727 0.3388 0.8824
5.6816 8.0 6080 0.4432 0.2820 0.3409 0.3086 0.8774
13.1296 9.0 6840 0.4509 0.2884 0.35 0.3162 0.8824
7.7173 10.0 7600 0.4265 0.3170 0.3818 0.3464 0.8919
6.7922 11.0 8360 0.4749 0.3320 0.3818 0.3552 0.8892
5.4287 12.0 9120 0.4564 0.2917 0.3818 0.3307 0.8805
7.4153 13.0 9880 0.4735 0.2963 0.3273 0.3110 0.8871
9.1154 14.0 10640 0.4553 0.3416 0.3773 0.3585 0.8894
5.999 15.0 11400 0.4489 0.3203 0.4091 0.3593 0.8880
9.5128 16.0 12160 0.4947 0.3164 0.3682 0.3403 0.8883
5.6713 17.0 12920 0.4705 0.3527 0.3864 0.3688 0.8919
12.2119 18.0 13680 0.4617 0.3123 0.3591 0.3340 0.8857
8.5658 19.0 14440 0.4764 0.3092 0.35 0.3284 0.8944
11.0664 20.0 15200 0.4557 0.3187 0.3636 0.3397 0.8905
6.7161 21.0 15960 0.4468 0.3210 0.3955 0.3544 0.8956
9.0448 22.0 16720 0.5120 0.2872 0.3682 0.3227 0.8792
6.573 23.0 17480 0.4990 0.3307 0.3773 0.3524 0.8869
5.0543 24.0 18240 0.4763 0.3028 0.3455 0.3227 0.8899
6.8797 25.0 19000 0.4814 0.2780 0.3273 0.3006 0.8913
7.7544 26.0 19760 0.4695 0.3024 0.3409 0.3205 0.8946
4.8346 27.0 20520 0.4849 0.3154 0.3455 0.3297 0.8931
4.4766 28.0 21280 0.4809 0.2925 0.3364 0.3129 0.8913
7.9149 29.0 22040 0.4756 0.3238 0.3591 0.3405 0.8930
7.3033 30.0 22800 0.4783 0.3264 0.3591 0.3420 0.8925

Framework versions