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roberta-base-emotion-prediction-phr

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

  • Loss: 0.3301
  • Accuracy: 0.2814
  • Micro Precision: 0.7422
  • Micro Recall: 0.6510
  • Micro F1: 0.6945
  • Micro Roc Auc: 0.7940

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: 8
  • eval_batch_size: 8
  • seed: 42
  • optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
  • lr_scheduler_type: linear
  • num_epochs: 10

Training results

Training Loss Epoch Step Validation Loss Accuracy Micro Precision Micro Recall Micro F1 Micro Roc Auc
0.4952 0.12 100 0.4515 0.1574 0.5861 0.3505 0.4386 0.6404
0.4152 0.23 200 0.3839 0.2041 0.7102 0.4593 0.5578 0.7033
0.3878 0.35 300 0.3625 0.2341 0.7384 0.5198 0.6101 0.7340
0.3764 0.47 400 0.3506 0.2412 0.7666 0.5092 0.6119 0.7328
0.372 0.58 500 0.3450 0.2375 0.7686 0.5251 0.6239 0.7403
0.3588 0.7 600 0.3464 0.2249 0.7804 0.4964 0.6068 0.7286
0.3383 0.82 700 0.3471 0.2470 0.7503 0.5578 0.6398 0.7528
0.3489 0.94 800 0.3284 0.2620 0.7702 0.5682 0.6539 0.7603
0.3287 1.05 900 0.3214 0.2820 0.7707 0.5936 0.6706 0.7720
0.3158 1.17 1000 0.3352 0.2657 0.7580 0.5814 0.6580 0.7646
0.3247 1.29 1100 0.3219 0.2811 0.7696 0.6031 0.6763 0.7762
0.3159 1.4 1200 0.3237 0.2688 0.7479 0.6138 0.6743 0.7778
0.3207 1.52 1300 0.3217 0.2461 0.7676 0.5767 0.6586 0.7638
0.3087 1.64 1400 0.3253 0.2424 0.7484 0.5883 0.6587 0.7663
0.3057 1.75 1500 0.3174 0.2728 0.7587 0.6116 0.6773 0.7785
0.3099 1.87 1600 0.3150 0.2774 0.7683 0.6001 0.6738 0.7746
0.3006 1.99 1700 0.3176 0.2633 0.7636 0.5881 0.6645 0.7685
0.285 2.11 1800 0.3177 0.2722 0.7363 0.6484 0.6896 0.7915
0.2886 2.22 1900 0.3156 0.2768 0.7734 0.5935 0.6716 0.7723
0.2785 2.34 2000 0.3101 0.2808 0.7692 0.6151 0.6836 0.7816
0.2801 2.46 2100 0.3121 0.2728 0.7739 0.5956 0.6732 0.7734
0.2876 2.57 2200 0.3166 0.2777 0.7577 0.6157 0.6794 0.7802
0.2769 2.69 2300 0.3143 0.2881 0.7691 0.6124 0.6819 0.7803
0.2755 2.81 2400 0.3133 0.2792 0.7577 0.6263 0.6857 0.7850
0.2815 2.92 2500 0.3197 0.2716 0.7406 0.6466 0.6904 0.7914
0.2671 3.04 2600 0.3133 0.2857 0.7549 0.6438 0.6949 0.7925
0.2431 3.16 2700 0.3225 0.2722 0.7515 0.6320 0.6866 0.7866
0.2512 3.27 2800 0.3221 0.2743 0.7616 0.6106 0.6778 0.7784
0.2574 3.39 2900 0.3191 0.2737 0.7561 0.6214 0.6822 0.7825
0.2527 3.51 3000 0.3207 0.2666 0.7443 0.6315 0.6833 0.7852
0.2615 3.63 3100 0.3170 0.2670 0.7443 0.6471 0.6923 0.7923
0.2583 3.74 3200 0.3122 0.2685 0.7729 0.6068 0.6799 0.7783
0.2543 3.86 3300 0.3175 0.2709 0.7492 0.6432 0.6921 0.7913
0.2546 3.98 3400 0.3164 0.2752 0.7661 0.6186 0.6845 0.7828
0.2274 4.09 3500 0.3172 0.2759 0.7437 0.6426 0.6895 0.7902
0.2328 4.21 3600 0.3214 0.2737 0.7548 0.6297 0.6866 0.7861
0.2354 4.33 3700 0.3192 0.2792 0.7546 0.6310 0.6872 0.7866
0.2238 4.44 3800 0.3199 0.2709 0.7453 0.6444 0.6912 0.7912
0.2376 4.56 3900 0.3176 0.2734 0.7599 0.6247 0.6857 0.7846
0.2344 4.68 4000 0.3189 0.2639 0.7437 0.6390 0.6874 0.7885
0.2222 4.8 4100 0.3222 0.2636 0.7436 0.6409 0.6884 0.7894
0.232 4.91 4200 0.3227 0.2725 0.7472 0.6426 0.6910 0.7907
0.2367 5.03 4300 0.3243 0.2670 0.7463 0.6339 0.6855 0.7866
0.2154 5.15 4400 0.3257 0.2593 0.7366 0.6513 0.6913 0.7929
0.2089 5.26 4500 0.3261 0.2700 0.7416 0.6453 0.6901 0.7910
0.2081 5.38 4600 0.3269 0.2731 0.7602 0.6133 0.6789 0.7794
0.2116 5.5 4700 0.3308 0.2593 0.7229 0.6687 0.6947 0.7983
0.2128 5.61 4800 0.3263 0.2660 0.7422 0.6432 0.6891 0.7902
0.2059 5.73 4900 0.3295 0.2728 0.7356 0.6550 0.6929 0.7944
0.2103 5.85 5000 0.3301 0.2814 0.7442 0.6510 0.6945 0.7940
0.2151 5.96 5100 0.3300 0.2541 0.7221 0.6598 0.6896 0.7942
0.1954 6.08 5200 0.3325 0.2765 0.7476 0.6381 0.6885 0.7887
0.2028 6.2 5300 0.3316 0.2559 0.7364 0.6400 0.6848 0.7878
0.1911 6.32 5400 0.3332 0.2553 0.7370 0.6386 0.6843 0.7873
0.2015 6.43 5500 0.3349 0.2645 0.7308 0.6538 0.6902 0.7931
0.1901 6.55 5600 0.3389 0.2587 0.7197 0.6682 0.6930 0.7975
0.197 6.67 5700 0.3349 0.2728 0.7400 0.6424 0.6878 0.7895
0.1907 6.78 5800 0.3354 0.2627 0.7454 0.6349 0.6857 0.7870
0.1853 6.9 5900 0.3420 0.2657 0.7356 0.6513 0.6909 0.7927
0.1841 7.02 6000 0.3399 0.2584 0.7308 0.6554 0.6910 0.7937
0.1739 7.13 6100 0.3409 0.2620 0.7364 0.6446 0.6874 0.7898
0.1768 7.25 6200 0.3417 0.2593 0.7314 0.6474 0.6868 0.7902
0.1762 7.37 6300 0.3384 0.2654 0.7398 0.6373 0.6847 0.7871
0.177 7.49 6400 0.3448 0.2541 0.7237 0.6547 0.6875 0.7922
0.1787 7.6 6500 0.3422 0.2513 0.7317 0.6425 0.6842 0.7881
0.1793 7.72 6600 0.3452 0.2611 0.7231 0.6582 0.6891 0.7936
0.1772 7.84 6700 0.3470 0.2587 0.7193 0.6618 0.6894 0.7946
0.1799 7.95 6800 0.3459 0.2547 0.7238 0.6494 0.6846 0.7898
0.1726 8.07 6900 0.3477 0.2507 0.7259 0.6419 0.6813 0.7869
0.1672 8.19 7000 0.3489 0.2492 0.7215 0.6499 0.6838 0.7897
0.1664 8.3 7100 0.3474 0.2498 0.7197 0.6491 0.6826 0.7890
0.1712 8.42 7200 0.3477 0.2516 0.7309 0.6404 0.6827 0.7870
0.166 8.54 7300 0.3487 0.2553 0.7209 0.6547 0.6862 0.7917
0.1706 8.65 7400 0.3487 0.2538 0.7239 0.6518 0.6860 0.7909
0.1674 8.77 7500 0.3506 0.2538 0.7216 0.6541 0.6862 0.7916
0.1655 8.89 7600 0.3476 0.2553 0.7283 0.6465 0.6849 0.7893
0.1609 9.01 7700 0.3498 0.2495 0.7273 0.6443 0.6833 0.7882
0.1647 9.12 7800 0.3507 0.2522 0.7255 0.6423 0.6814 0.7870
0.1531 9.24 7900 0.3503 0.2522 0.7292 0.6426 0.6832 0.7878
0.1577 9.36 8000 0.3524 0.2528 0.7212 0.6569 0.6875 0.7927
0.1592 9.47 8100 0.3517 0.2519 0.7186 0.6536 0.6845 0.7908
0.1615 9.59 8200 0.3514 0.2510 0.7183 0.6529 0.6841 0.7905
0.1529 9.71 8300 0.3515 0.2516 0.7221 0.6489 0.6835 0.7893
0.1607 9.82 8400 0.3520 0.2528 0.7212 0.6499 0.6837 0.7896
0.1506 9.94 8500 0.3524 0.2522 0.7220 0.6522 0.6853 0.7908

Framework versions

  • Transformers 4.31.0
  • Pytorch 2.1.0+cu121
  • Datasets 2.14.5
  • Tokenizers 0.13.3
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