bert-base-uncased-test_64_100
This model is a fine-tuned version of bert-base-uncased on the None dataset. It achieves the following results on the evaluation set:
- Loss: 1.5041
- F1: {'f1': 0.796440489432703}
- Accuracy: {'accuracy': 0.7804}
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: 0.0001
- train_batch_size: 16
- eval_batch_size: 16
- seed: 42
- optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
- lr_scheduler_type: linear
- num_epochs: 500
Training results
| Training Loss | Epoch | Step | Validation Loss | F1 | Accuracy |
|---|---|---|---|---|---|
| No log | 1.0 | 7 | 0.6982 | {'f1': 0.004784688995215311} | {'accuracy': 0.5008} |
| No log | 2.0 | 14 | 0.6885 | {'f1': 0.655367231638418} | {'accuracy': 0.5364} |
| No log | 3.0 | 21 | 0.6874 | {'f1': 0.6617354196301565} | {'accuracy': 0.5244} |
| No log | 4.0 | 28 | 0.6822 | {'f1': 0.6497193793331132} | {'accuracy': 0.5756} |
| No log | 5.0 | 35 | 0.6786 | {'f1': 0.5570291777188329} | {'accuracy': 0.5992} |
| No log | 6.0 | 42 | 0.6741 | {'f1': 0.6100355590675621} | {'accuracy': 0.6052} |
| No log | 7.0 | 49 | 0.6706 | {'f1': 0.4816700610997964} | {'accuracy': 0.5928} |
| No log | 8.0 | 56 | 0.6654 | {'f1': 0.48136645962732916} | {'accuracy': 0.5992} |
| No log | 9.0 | 63 | 0.6520 | {'f1': 0.564531104921077} | {'accuracy': 0.6248} |
| No log | 10.0 | 70 | 0.6316 | {'f1': 0.669652855543113} | {'accuracy': 0.646} |
| No log | 11.0 | 77 | 0.6364 | {'f1': 0.5811885821244736} | {'accuracy': 0.642} |
| No log | 12.0 | 84 | 0.5995 | {'f1': 0.6873545384018619} | {'accuracy': 0.6776} |
| No log | 13.0 | 91 | 0.5920 | {'f1': 0.6943784639746634} | {'accuracy': 0.6912} |
| No log | 14.0 | 98 | 0.6104 | {'f1': 0.673913043478261} | {'accuracy': 0.688} |
| No log | 15.0 | 105 | 0.5986 | {'f1': 0.7101621194147885} | {'accuracy': 0.7068} |
| No log | 16.0 | 112 | 0.6088 | {'f1': 0.7119205298013244} | {'accuracy': 0.7216} |
| No log | 17.0 | 119 | 0.6098 | {'f1': 0.7373776908023484} | {'accuracy': 0.7316} |
| No log | 18.0 | 126 | 0.6355 | {'f1': 0.7393403057119871} | {'accuracy': 0.7408} |
| No log | 19.0 | 133 | 0.6611 | {'f1': 0.7576766555678875} | {'accuracy': 0.738} |
| No log | 20.0 | 140 | 0.6914 | {'f1': 0.7586469023185101} | {'accuracy': 0.746} |
| No log | 21.0 | 147 | 0.7386 | {'f1': 0.7356042173560423} | {'accuracy': 0.7392} |
| No log | 22.0 | 154 | 0.7983 | {'f1': 0.7291054178916423} | {'accuracy': 0.742} |
| No log | 23.0 | 161 | 0.7992 | {'f1': 0.7565485362095531} | {'accuracy': 0.7472} |
| No log | 24.0 | 168 | 0.8528 | {'f1': 0.7316455696202532} | {'accuracy': 0.7456} |
| No log | 25.0 | 175 | 0.8415 | {'f1': 0.759592795614722} | {'accuracy': 0.7544} |
| No log | 26.0 | 182 | 0.8850 | {'f1': 0.770764119601329} | {'accuracy': 0.7516} |
| No log | 27.0 | 189 | 0.8879 | {'f1': 0.7490759753593429} | {'accuracy': 0.7556} |
| No log | 28.0 | 196 | 0.9013 | {'f1': 0.7703533026113671} | {'accuracy': 0.7608} |
| No log | 29.0 | 203 | 1.0318 | {'f1': 0.7750791974656812} | {'accuracy': 0.7444} |
| No log | 30.0 | 210 | 0.9493 | {'f1': 0.7475165562913907} | {'accuracy': 0.756} |
| No log | 31.0 | 217 | 0.9683 | {'f1': 0.7755102040816327} | {'accuracy': 0.7624} |
| No log | 32.0 | 224 | 1.0889 | {'f1': 0.7715091678420309} | {'accuracy': 0.7408} |
| No log | 33.0 | 231 | 1.0272 | {'f1': 0.7374631268436579} | {'accuracy': 0.7508} |
| No log | 34.0 | 238 | 1.0058 | {'f1': 0.7601121345614739} | {'accuracy': 0.7604} |
| No log | 35.0 | 245 | 1.0153 | {'f1': 0.7748165314793356} | {'accuracy': 0.7668} |
| No log | 36.0 | 252 | 1.0568 | {'f1': 0.7759197324414715} | {'accuracy': 0.7588} |
| No log | 37.0 | 259 | 1.1076 | {'f1': 0.7738910926794085} | {'accuracy': 0.7492} |
| No log | 38.0 | 266 | 1.0427 | {'f1': 0.7558666117743927} | {'accuracy': 0.7628} |
| No log | 39.0 | 273 | 1.0863 | {'f1': 0.7808269301134284} | {'accuracy': 0.7604} |
| No log | 40.0 | 280 | 1.1665 | {'f1': 0.7790738776952988} | {'accuracy': 0.75} |
| No log | 41.0 | 287 | 1.0454 | {'f1': 0.7766692248656946} | {'accuracy': 0.7672} |
| No log | 42.0 | 294 | 1.0836 | {'f1': 0.7832840236686389} | {'accuracy': 0.7656} |
| No log | 43.0 | 301 | 1.1531 | {'f1': 0.7792486583184258} | {'accuracy': 0.7532} |
| No log | 44.0 | 308 | 1.0566 | {'f1': 0.773688332028191} | {'accuracy': 0.7688} |
| No log | 45.0 | 315 | 1.3225 | {'f1': 0.7732971873941037} | {'accuracy': 0.7324} |
| No log | 46.0 | 322 | 1.1126 | {'f1': 0.7831192660550459} | {'accuracy': 0.7636} |
| No log | 47.0 | 329 | 1.0526 | {'f1': 0.7771653543307088} | {'accuracy': 0.7736} |
| No log | 48.0 | 336 | 1.0584 | {'f1': 0.7826777910210567} | {'accuracy': 0.7812} |
| No log | 49.0 | 343 | 1.0694 | {'f1': 0.7797527047913447} | {'accuracy': 0.772} |
| No log | 50.0 | 350 | 1.1168 | {'f1': 0.7819940476190476} | {'accuracy': 0.7656} |
| No log | 51.0 | 357 | 1.0804 | {'f1': 0.7815028901734103} | {'accuracy': 0.7732} |
| No log | 52.0 | 364 | 1.2250 | {'f1': 0.7811280595956013} | {'accuracy': 0.7532} |
| No log | 53.0 | 371 | 1.1277 | {'f1': 0.7861356932153392} | {'accuracy': 0.768} |
| No log | 54.0 | 378 | 1.0646 | {'f1': 0.7837190742218675} | {'accuracy': 0.7832} |
| No log | 55.0 | 385 | 1.1001 | {'f1': 0.7902439024390244} | {'accuracy': 0.7764} |
| No log | 56.0 | 392 | 1.2776 | {'f1': 0.7834907310248339} | {'accuracy': 0.7524} |
| No log | 57.0 | 399 | 1.2173 | {'f1': 0.7844118698605649} | {'accuracy': 0.7588} |
| No log | 58.0 | 406 | 1.0998 | {'f1': 0.7883880825057296} | {'accuracy': 0.7784} |
| No log | 59.0 | 413 | 1.0903 | {'f1': 0.7832730197024528} | {'accuracy': 0.7844} |
| No log | 60.0 | 420 | 1.0943 | {'f1': 0.7891050583657588} | {'accuracy': 0.7832} |
| No log | 61.0 | 427 | 1.1423 | {'f1': 0.7883971736705095} | {'accuracy': 0.7724} |
| No log | 62.0 | 434 | 1.1620 | {'f1': 0.7876106194690266} | {'accuracy': 0.7696} |
| No log | 63.0 | 441 | 1.1627 | {'f1': 0.7887740029542099} | {'accuracy': 0.7712} |
| No log | 64.0 | 448 | 1.1474 | {'f1': 0.7914798206278026} | {'accuracy': 0.7768} |
| No log | 65.0 | 455 | 1.1109 | {'f1': 0.7910447761194029} | {'accuracy': 0.7872} |
| No log | 66.0 | 462 | 1.1295 | {'f1': 0.7908221797323136} | {'accuracy': 0.7812} |
| No log | 67.0 | 469 | 1.1479 | {'f1': 0.7931947069943289} | {'accuracy': 0.7812} |
| No log | 68.0 | 476 | 1.1624 | {'f1': 0.7941397445529677} | {'accuracy': 0.7808} |
| No log | 69.0 | 483 | 1.1639 | {'f1': 0.7942835652500941} | {'accuracy': 0.7812} |
| No log | 70.0 | 490 | 1.1614 | {'f1': 0.7933509633547412} | {'accuracy': 0.7812} |
| No log | 71.0 | 497 | 1.1656 | {'f1': 0.7939622641509434} | {'accuracy': 0.7816} |
| 0.1405 | 72.0 | 504 | 1.1664 | {'f1': 0.7933509633547412} | {'accuracy': 0.7812} |
| 0.1405 | 73.0 | 511 | 1.1431 | {'f1': 0.7895760404511865} | {'accuracy': 0.7836} |
| 0.1405 | 74.0 | 518 | 1.1435 | {'f1': 0.7889763779527559} | {'accuracy': 0.7856} |
| 0.1405 | 75.0 | 525 | 1.1507 | {'f1': 0.7900852052672346} | {'accuracy': 0.7832} |
| 0.1405 | 76.0 | 532 | 1.1787 | {'f1': 0.7936627687665032} | {'accuracy': 0.7812} |
| 0.1405 | 77.0 | 539 | 1.2244 | {'f1': 0.7876561351947098} | {'accuracy': 0.7688} |
| 0.1405 | 78.0 | 546 | 1.2429 | {'f1': 0.7886297376093294} | {'accuracy': 0.768} |
| 0.1405 | 79.0 | 553 | 1.2167 | {'f1': 0.7912495365220615} | {'accuracy': 0.7748} |
| 0.1405 | 80.0 | 560 | 1.1840 | {'f1': 0.7912087912087912} | {'accuracy': 0.7796} |
| 0.1405 | 81.0 | 567 | 1.1756 | {'f1': 0.7903963414634146} | {'accuracy': 0.78} |
| 0.1405 | 82.0 | 574 | 1.1744 | {'f1': 0.7900383141762451} | {'accuracy': 0.7808} |
| 0.1405 | 83.0 | 581 | 1.1755 | {'f1': 0.7894131185270427} | {'accuracy': 0.7804} |
| 0.1405 | 84.0 | 588 | 1.1790 | {'f1': 0.7898966704936855} | {'accuracy': 0.7804} |
| 0.1405 | 85.0 | 595 | 1.1849 | {'f1': 0.7897943640517898} | {'accuracy': 0.7792} |
| 0.1405 | 86.0 | 602 | 1.1950 | {'f1': 0.7901328273244782} | {'accuracy': 0.7788} |
| 0.1405 | 87.0 | 609 | 1.2082 | {'f1': 0.79155672823219} | {'accuracy': 0.7788} |
| 0.1405 | 88.0 | 616 | 1.2207 | {'f1': 0.7940074906367041} | {'accuracy': 0.78} |
| 0.1405 | 89.0 | 623 | 1.2201 | {'f1': 0.7935435435435436} | {'accuracy': 0.78} |
| 0.1405 | 90.0 | 630 | 1.2179 | {'f1': 0.7930775018811136} | {'accuracy': 0.78} |
| 0.1405 | 91.0 | 637 | 1.2169 | {'f1': 0.7918552036199096} | {'accuracy': 0.7792} |
| 0.1405 | 92.0 | 644 | 1.2162 | {'f1': 0.7916981132075471} | {'accuracy': 0.7792} |
| 0.1405 | 93.0 | 651 | 1.2158 | {'f1': 0.791981845688351} | {'accuracy': 0.78} |
| 0.1405 | 94.0 | 658 | 1.2570 | {'f1': 0.7619453924914678} | {'accuracy': 0.7768} |
| 0.1405 | 95.0 | 665 | 1.2645 | {'f1': 0.7930780559646539} | {'accuracy': 0.7752} |
| 0.1405 | 96.0 | 672 | 1.3050 | {'f1': 0.7886710239651417} | {'accuracy': 0.7672} |
| 0.1405 | 97.0 | 679 | 1.2435 | {'f1': 0.7745713090757006} | {'accuracy': 0.7844} |
| 0.1405 | 98.0 | 686 | 1.2083 | {'f1': 0.7878548895899053} | {'accuracy': 0.7848} |
| 0.1405 | 99.0 | 693 | 1.2364 | {'f1': 0.7959028831562974} | {'accuracy': 0.7848} |
| 0.1405 | 100.0 | 700 | 1.2611 | {'f1': 0.7940074906367041} | {'accuracy': 0.78} |
| 0.1405 | 101.0 | 707 | 1.2721 | {'f1': 0.7926920208799404} | {'accuracy': 0.7776} |
| 0.1405 | 102.0 | 714 | 1.2760 | {'f1': 0.7919762258543834} | {'accuracy': 0.776} |
| 0.1405 | 103.0 | 721 | 1.2535 | {'f1': 0.7950263752825923} | {'accuracy': 0.7824} |
| 0.1405 | 104.0 | 728 | 1.2403 | {'f1': 0.7968036529680366} | {'accuracy': 0.7864} |
| 0.1405 | 105.0 | 735 | 1.2373 | {'f1': 0.7934200459066564} | {'accuracy': 0.784} |
| 0.1405 | 106.0 | 742 | 1.2427 | {'f1': 0.7963456414160639} | {'accuracy': 0.786} |
| 0.1405 | 107.0 | 749 | 1.2564 | {'f1': 0.7965269913174783} | {'accuracy': 0.7844} |
| 0.1405 | 108.0 | 756 | 1.2666 | {'f1': 0.7950450450450449} | {'accuracy': 0.7816} |
| 0.1405 | 109.0 | 763 | 1.2703 | {'f1': 0.7944486121530383} | {'accuracy': 0.7808} |
| 0.1405 | 110.0 | 770 | 1.2737 | {'f1': 0.7946026986506746} | {'accuracy': 0.7808} |
| 0.1405 | 111.0 | 777 | 1.2735 | {'f1': 0.7944486121530383} | {'accuracy': 0.7808} |
| 0.1405 | 112.0 | 784 | 1.2749 | {'f1': 0.7944486121530383} | {'accuracy': 0.7808} |
| 0.1405 | 113.0 | 791 | 1.2706 | {'f1': 0.7959413754227733} | {'accuracy': 0.7828} |
| 0.1405 | 114.0 | 798 | 1.2579 | {'f1': 0.7962049335863377} | {'accuracy': 0.7852} |
| 0.1405 | 115.0 | 805 | 1.2497 | {'f1': 0.7955589586523738} | {'accuracy': 0.7864} |
| 0.1405 | 116.0 | 812 | 1.2481 | {'f1': 0.79293123319247} | {'accuracy': 0.7844} |
| 0.1405 | 117.0 | 819 | 1.2496 | {'f1': 0.7785069729286301} | {'accuracy': 0.784} |
| 0.1405 | 118.0 | 826 | 1.2386 | {'f1': 0.7910447761194029} | {'accuracy': 0.7872} |
| 0.1405 | 119.0 | 833 | 1.3391 | {'f1': 0.7925493060628196} | {'accuracy': 0.7728} |
| 0.1405 | 120.0 | 840 | 1.4218 | {'f1': 0.7887424296401851} | {'accuracy': 0.7628} |
| 0.1405 | 121.0 | 847 | 1.2557 | {'f1': 0.79155260070395} | {'accuracy': 0.7868} |
| 0.1405 | 122.0 | 854 | 1.2889 | {'f1': 0.7707032875572202} | {'accuracy': 0.7796} |
| 0.1405 | 123.0 | 861 | 1.3041 | {'f1': 0.7664570230607967} | {'accuracy': 0.7772} |
| 0.1405 | 124.0 | 868 | 1.4518 | {'f1': 0.7878359264497878} | {'accuracy': 0.76} |
| 0.1405 | 125.0 | 875 | 1.3888 | {'f1': 0.7893792608539649} | {'accuracy': 0.7652} |
| 0.1405 | 126.0 | 882 | 1.2520 | {'f1': 0.793196752995748} | {'accuracy': 0.786} |
| 0.1405 | 127.0 | 889 | 1.2419 | {'f1': 0.7889245585874799} | {'accuracy': 0.7896} |
| 0.1405 | 128.0 | 896 | 1.2470 | {'f1': 0.7842660178426601} | {'accuracy': 0.7872} |
| 0.1405 | 129.0 | 903 | 1.2449 | {'f1': 0.7887323943661971} | {'accuracy': 0.79} |
| 0.1405 | 130.0 | 910 | 1.2444 | {'f1': 0.7938021454112039} | {'accuracy': 0.7924} |
| 0.1405 | 131.0 | 917 | 1.2492 | {'f1': 0.795133437990581} | {'accuracy': 0.7912} |
| 0.1405 | 132.0 | 924 | 1.2570 | {'f1': 0.7928765001935733} | {'accuracy': 0.786} |
| 0.1405 | 133.0 | 931 | 1.2660 | {'f1': 0.7923224568138196} | {'accuracy': 0.7836} |
| 0.1405 | 134.0 | 938 | 1.2749 | {'f1': 0.7928271652041207} | {'accuracy': 0.7828} |
| 0.1405 | 135.0 | 945 | 1.2832 | {'f1': 0.7934700075930143} | {'accuracy': 0.7824} |
| 0.1405 | 136.0 | 952 | 1.2702 | {'f1': 0.7940161104718065} | {'accuracy': 0.7852} |
| 0.1405 | 137.0 | 959 | 1.2620 | {'f1': 0.7939464493597206} | {'accuracy': 0.7876} |
| 0.1405 | 138.0 | 966 | 1.2597 | {'f1': 0.7929549902152642} | {'accuracy': 0.7884} |
| 0.1405 | 139.0 | 973 | 1.3074 | {'f1': 0.7920270778488154} | {'accuracy': 0.7788} |
| 0.1405 | 140.0 | 980 | 1.3511 | {'f1': 0.7921742340346991} | {'accuracy': 0.7748} |
| 0.1405 | 141.0 | 987 | 1.4323 | {'f1': 0.7901146131805157} | {'accuracy': 0.7656} |
| 0.1405 | 142.0 | 994 | 1.5756 | {'f1': 0.7842866988283942} | {'accuracy': 0.7496} |
| 0.0009 | 143.0 | 1001 | 1.5489 | {'f1': 0.7862595419847328} | {'accuracy': 0.7536} |
| 0.0009 | 144.0 | 1008 | 1.3006 | {'f1': 0.7898187427689936} | {'accuracy': 0.782} |
| 0.0009 | 145.0 | 1015 | 1.5527 | {'f1': 0.7151348879743941} | {'accuracy': 0.7508} |
| 0.0009 | 146.0 | 1022 | 1.3876 | {'f1': 0.751592356687898} | {'accuracy': 0.766} |
| 0.0009 | 147.0 | 1029 | 1.3456 | {'f1': 0.7812752219531881} | {'accuracy': 0.7832} |
| 0.0009 | 148.0 | 1036 | 1.3554 | {'f1': 0.7858255451713395} | {'accuracy': 0.78} |
| 0.0009 | 149.0 | 1043 | 1.3710 | {'f1': 0.787201233616037} | {'accuracy': 0.7792} |
| 0.0009 | 150.0 | 1050 | 1.3786 | {'f1': 0.7864823348694318} | {'accuracy': 0.7776} |
| 0.0009 | 151.0 | 1057 | 1.3805 | {'f1': 0.7863444572305331} | {'accuracy': 0.7772} |
| 0.0009 | 152.0 | 1064 | 1.3809 | {'f1': 0.7869481765834931} | {'accuracy': 0.778} |
| 0.0009 | 153.0 | 1071 | 1.3814 | {'f1': 0.7869481765834931} | {'accuracy': 0.778} |
| 0.0009 | 154.0 | 1078 | 1.3823 | {'f1': 0.7869481765834931} | {'accuracy': 0.778} |
| 0.0009 | 155.0 | 1085 | 1.3839 | {'f1': 0.7866462010744435} | {'accuracy': 0.7776} |
| 0.0009 | 156.0 | 1092 | 1.3770 | {'f1': 0.787037037037037} | {'accuracy': 0.7792} |
| 0.0009 | 157.0 | 1099 | 1.3703 | {'f1': 0.7863777089783281} | {'accuracy': 0.7792} |
| 0.0009 | 158.0 | 1106 | 1.3701 | {'f1': 0.7862122385747482} | {'accuracy': 0.7792} |
| 0.0009 | 159.0 | 1113 | 1.3721 | {'f1': 0.7862122385747482} | {'accuracy': 0.7792} |
| 0.0009 | 160.0 | 1120 | 1.3742 | {'f1': 0.7856037151702787} | {'accuracy': 0.7784} |
| 0.0009 | 161.0 | 1127 | 1.3755 | {'f1': 0.786073500967118} | {'accuracy': 0.7788} |
| 0.0009 | 162.0 | 1134 | 1.3754 | {'f1': 0.785907859078591} | {'accuracy': 0.7788} |
| 0.0009 | 163.0 | 1141 | 1.3756 | {'f1': 0.785907859078591} | {'accuracy': 0.7788} |
| 0.0009 | 164.0 | 1148 | 1.3778 | {'f1': 0.785907859078591} | {'accuracy': 0.7788} |
| 0.0009 | 165.0 | 1155 | 1.3824 | {'f1': 0.7868725868725869} | {'accuracy': 0.7792} |
| 0.0009 | 166.0 | 1162 | 1.4059 | {'f1': 0.7896930655551344} | {'accuracy': 0.778} |
| 0.0009 | 167.0 | 1169 | 1.4486 | {'f1': 0.7876534027519524} | {'accuracy': 0.7716} |
| 0.0009 | 168.0 | 1176 | 1.4664 | {'f1': 0.787878787878788} | {'accuracy': 0.7704} |
| 0.0009 | 169.0 | 1183 | 1.4689 | {'f1': 0.7880354505169868} | {'accuracy': 0.7704} |
| 0.0009 | 170.0 | 1190 | 1.4654 | {'f1': 0.7881700554528651} | {'accuracy': 0.7708} |
| 0.0009 | 171.0 | 1197 | 1.4576 | {'f1': 0.7882832777159807} | {'accuracy': 0.7716} |
| 0.0009 | 172.0 | 1204 | 1.4436 | {'f1': 0.7855277881387541} | {'accuracy': 0.77} |
| 0.0009 | 173.0 | 1211 | 1.4326 | {'f1': 0.7857410881801125} | {'accuracy': 0.7716} |
| 0.0009 | 174.0 | 1218 | 1.4210 | {'f1': 0.7891361750282913} | {'accuracy': 0.7764} |
| 0.0009 | 175.0 | 1225 | 1.4110 | {'f1': 0.790909090909091} | {'accuracy': 0.7792} |
| 0.0009 | 176.0 | 1232 | 1.4059 | {'f1': 0.7894937190711839} | {'accuracy': 0.7788} |
| 0.0009 | 177.0 | 1239 | 1.4015 | {'f1': 0.7909992372234935} | {'accuracy': 0.7808} |
| 0.0009 | 178.0 | 1246 | 1.3992 | {'f1': 0.7900763358778626} | {'accuracy': 0.78} |
| 0.0009 | 179.0 | 1253 | 1.3985 | {'f1': 0.7892925430210325} | {'accuracy': 0.7796} |
| 0.0009 | 180.0 | 1260 | 1.3968 | {'f1': 0.7905017234775948} | {'accuracy': 0.7812} |
| 0.0009 | 181.0 | 1267 | 1.4007 | {'f1': 0.7900763358778626} | {'accuracy': 0.78} |
| 0.0009 | 182.0 | 1274 | 1.4019 | {'f1': 0.7900763358778626} | {'accuracy': 0.78} |
| 0.0009 | 183.0 | 1281 | 1.3990 | {'f1': 0.7918898240244836} | {'accuracy': 0.7824} |
| 0.0009 | 184.0 | 1288 | 1.3984 | {'f1': 0.7921928817451205} | {'accuracy': 0.7828} |
| 0.0009 | 185.0 | 1295 | 1.3986 | {'f1': 0.7915708812260537} | {'accuracy': 0.7824} |
| 0.0009 | 186.0 | 1302 | 1.3988 | {'f1': 0.7917146144994246} | {'accuracy': 0.7828} |
| 0.0009 | 187.0 | 1309 | 1.4010 | {'f1': 0.7918898240244836} | {'accuracy': 0.7824} |
| 0.0009 | 188.0 | 1316 | 1.4036 | {'f1': 0.7923518164435946} | {'accuracy': 0.7828} |
| 0.0009 | 189.0 | 1323 | 1.3966 | {'f1': 0.7923076923076923} | {'accuracy': 0.784} |
| 0.0009 | 190.0 | 1330 | 1.3964 | {'f1': 0.7926125432858792} | {'accuracy': 0.7844} |
| 0.0009 | 191.0 | 1337 | 1.3972 | {'f1': 0.7926125432858792} | {'accuracy': 0.7844} |
| 0.0009 | 192.0 | 1344 | 1.3977 | {'f1': 0.7926125432858792} | {'accuracy': 0.7844} |
| 0.0009 | 193.0 | 1351 | 1.3970 | {'f1': 0.792758089368259} | {'accuracy': 0.7848} |
| 0.0009 | 194.0 | 1358 | 1.3968 | {'f1': 0.792758089368259} | {'accuracy': 0.7848} |
| 0.0009 | 195.0 | 1365 | 1.3972 | {'f1': 0.7922928709055876} | {'accuracy': 0.7844} |
| 0.0009 | 196.0 | 1372 | 1.3985 | {'f1': 0.792758089368259} | {'accuracy': 0.7848} |
| 0.0009 | 197.0 | 1379 | 1.4008 | {'f1': 0.7932229495571813} | {'accuracy': 0.7852} |
| 0.0009 | 198.0 | 1386 | 1.4017 | {'f1': 0.7932229495571813} | {'accuracy': 0.7852} |
| 0.0009 | 199.0 | 1393 | 1.4018 | {'f1': 0.7932229495571813} | {'accuracy': 0.7852} |
| 0.0009 | 200.0 | 1400 | 1.4011 | {'f1': 0.7922928709055876} | {'accuracy': 0.7844} |
| 0.0009 | 201.0 | 1407 | 1.4041 | {'f1': 0.7941515967679877} | {'accuracy': 0.786} |
| 0.0009 | 202.0 | 1414 | 1.4072 | {'f1': 0.7929447852760737} | {'accuracy': 0.784} |
| 0.0009 | 203.0 | 1421 | 1.4697 | {'f1': 0.7874953479717157} | {'accuracy': 0.7716} |
| 0.0009 | 204.0 | 1428 | 1.5064 | {'f1': 0.7891256429096254} | {'accuracy': 0.7704} |
| 0.0009 | 205.0 | 1435 | 1.5113 | {'f1': 0.788546255506608} | {'accuracy': 0.7696} |
| 0.0009 | 206.0 | 1442 | 1.4517 | {'f1': 0.7872420262664164} | {'accuracy': 0.7732} |
| 0.0009 | 207.0 | 1449 | 1.4151 | {'f1': 0.7929447852760737} | {'accuracy': 0.784} |
| 0.0009 | 208.0 | 1456 | 1.4060 | {'f1': 0.7896365042536735} | {'accuracy': 0.7824} |
| 0.0009 | 209.0 | 1463 | 1.4032 | {'f1': 0.7895760404511865} | {'accuracy': 0.7836} |
| 0.0009 | 210.0 | 1470 | 1.4043 | {'f1': 0.7895760404511865} | {'accuracy': 0.7836} |
| 0.0009 | 211.0 | 1477 | 1.4061 | {'f1': 0.7889837083010085} | {'accuracy': 0.7824} |
| 0.0009 | 212.0 | 1484 | 1.4080 | {'f1': 0.7900852052672346} | {'accuracy': 0.7832} |
| 0.0009 | 213.0 | 1491 | 1.4099 | {'f1': 0.7896365042536735} | {'accuracy': 0.7824} |
| 0.0009 | 214.0 | 1498 | 1.4116 | {'f1': 0.7902665121668598} | {'accuracy': 0.7828} |
| 0.0001 | 215.0 | 1505 | 1.4136 | {'f1': 0.7918272937548188} | {'accuracy': 0.784} |
| 0.0001 | 216.0 | 1512 | 1.4155 | {'f1': 0.7918272937548188} | {'accuracy': 0.784} |
| 0.0001 | 217.0 | 1519 | 1.4240 | {'f1': 0.7643097643097643} | {'accuracy': 0.776} |
| 0.0001 | 218.0 | 1526 | 1.5173 | {'f1': 0.7425786442179884} | {'accuracy': 0.7676} |
| 0.0001 | 219.0 | 1533 | 1.3915 | {'f1': 0.7912677135197241} | {'accuracy': 0.782} |
| 0.0001 | 220.0 | 1540 | 1.7768 | {'f1': 0.7734056987788331} | {'accuracy': 0.7328} |
| 0.0001 | 221.0 | 1547 | 1.4188 | {'f1': 0.7886148007590134} | {'accuracy': 0.7772} |
| 0.0001 | 222.0 | 1554 | 1.4241 | {'f1': 0.7668350168350168} | {'accuracy': 0.7784} |
| 0.0001 | 223.0 | 1561 | 1.4845 | {'f1': 0.7491289198606271} | {'accuracy': 0.7696} |
| 0.0001 | 224.0 | 1568 | 1.3685 | {'f1': 0.7857432158768731} | {'accuracy': 0.7884} |
| 0.0001 | 225.0 | 1575 | 1.5106 | {'f1': 0.7936736161035227} | {'accuracy': 0.7704} |
| 0.0001 | 226.0 | 1582 | 1.7115 | {'f1': 0.7832024581768523} | {'accuracy': 0.746} |
| 0.0001 | 227.0 | 1589 | 1.5283 | {'f1': 0.7951376474794423} | {'accuracy': 0.7708} |
| 0.0001 | 228.0 | 1596 | 1.4008 | {'f1': 0.8002969561989607} | {'accuracy': 0.7848} |
| 0.0001 | 229.0 | 1603 | 1.3623 | {'f1': 0.8021228203184231} | {'accuracy': 0.7912} |
| 0.0001 | 230.0 | 1610 | 1.3496 | {'f1': 0.8012255840674071} | {'accuracy': 0.7924} |
| 0.0001 | 231.0 | 1617 | 1.3492 | {'f1': 0.8012279355333844} | {'accuracy': 0.7928} |
| 0.0001 | 232.0 | 1624 | 1.3606 | {'f1': 0.8007604562737642} | {'accuracy': 0.7904} |
| 0.0001 | 233.0 | 1631 | 1.3691 | {'f1': 0.801818870784388} | {'accuracy': 0.7908} |
| 0.0001 | 234.0 | 1638 | 1.3740 | {'f1': 0.8012093726379441} | {'accuracy': 0.7896} |
| 0.0001 | 235.0 | 1645 | 1.3771 | {'f1': 0.7999999999999999} | {'accuracy': 0.788} |
| 0.0001 | 236.0 | 1652 | 1.3781 | {'f1': 0.7999999999999999} | {'accuracy': 0.788} |
| 0.0001 | 237.0 | 1659 | 1.3830 | {'f1': 0.8009032743695896} | {'accuracy': 0.7884} |
| 0.0001 | 238.0 | 1666 | 1.3903 | {'f1': 0.800599700149925} | {'accuracy': 0.7872} |
| 0.0001 | 239.0 | 1673 | 1.3953 | {'f1': 0.8004492699363533} | {'accuracy': 0.7868} |
| 0.0001 | 240.0 | 1680 | 1.3986 | {'f1': 0.8002991772625281} | {'accuracy': 0.7864} |
| 0.0001 | 241.0 | 1687 | 1.4014 | {'f1': 0.7994023160254016} | {'accuracy': 0.7852} |
| 0.0001 | 242.0 | 1694 | 1.4058 | {'f1': 0.8002980625931445} | {'accuracy': 0.7856} |
| 0.0001 | 243.0 | 1701 | 1.4101 | {'f1': 0.8007448789571695} | {'accuracy': 0.786} |
| 0.0001 | 244.0 | 1708 | 1.4127 | {'f1': 0.8001485884101041} | {'accuracy': 0.7848} |
| 0.0001 | 245.0 | 1715 | 1.4152 | {'f1': 0.8005941329372447} | {'accuracy': 0.7852} |
| 0.0001 | 246.0 | 1722 | 1.4152 | {'f1': 0.8001485884101041} | {'accuracy': 0.7848} |
| 0.0001 | 247.0 | 1729 | 1.4150 | {'f1': 0.8004459308807135} | {'accuracy': 0.7852} |
| 0.0001 | 248.0 | 1736 | 1.4153 | {'f1': 0.8004459308807135} | {'accuracy': 0.7852} |
| 0.0001 | 249.0 | 1743 | 1.4170 | {'f1': 0.8004459308807135} | {'accuracy': 0.7852} |
| 0.0001 | 250.0 | 1750 | 1.4173 | {'f1': 0.8004459308807135} | {'accuracy': 0.7852} |
| 0.0001 | 251.0 | 1757 | 1.4181 | {'f1': 0.8004459308807135} | {'accuracy': 0.7852} |
| 0.0001 | 252.0 | 1764 | 1.4187 | {'f1': 0.8004459308807135} | {'accuracy': 0.7852} |
| 0.0001 | 253.0 | 1771 | 1.4193 | {'f1': 0.8004459308807135} | {'accuracy': 0.7852} |
| 0.0001 | 254.0 | 1778 | 1.4205 | {'f1': 0.8008915304606241} | {'accuracy': 0.7856} |
| 0.0001 | 255.0 | 1785 | 1.4215 | {'f1': 0.8008915304606241} | {'accuracy': 0.7856} |
| 0.0001 | 256.0 | 1792 | 1.4207 | {'f1': 0.8004459308807135} | {'accuracy': 0.7852} |
| 0.0001 | 257.0 | 1799 | 1.4206 | {'f1': 0.8004459308807135} | {'accuracy': 0.7852} |
| 0.0001 | 258.0 | 1806 | 1.4306 | {'f1': 0.7999999999999999} | {'accuracy': 0.784} |
| 0.0001 | 259.0 | 1813 | 1.4348 | {'f1': 0.7994078460399704} | {'accuracy': 0.7832} |
| 0.0001 | 260.0 | 1820 | 1.4273 | {'f1': 0.8005941329372447} | {'accuracy': 0.7852} |
| 0.0001 | 261.0 | 1827 | 1.4258 | {'f1': 0.7995537374488658} | {'accuracy': 0.7844} |
| 0.0001 | 262.0 | 1834 | 1.4261 | {'f1': 0.7995537374488658} | {'accuracy': 0.7844} |
| 0.0001 | 263.0 | 1841 | 1.4266 | {'f1': 0.7991071428571429} | {'accuracy': 0.784} |
| 0.0001 | 264.0 | 1848 | 1.4270 | {'f1': 0.7991071428571429} | {'accuracy': 0.784} |
| 0.0001 | 265.0 | 1855 | 1.4266 | {'f1': 0.7986602158541125} | {'accuracy': 0.7836} |
| 0.0001 | 266.0 | 1862 | 1.4246 | {'f1': 0.7986577181208054} | {'accuracy': 0.784} |
| 0.0001 | 267.0 | 1869 | 1.4248 | {'f1': 0.7986577181208054} | {'accuracy': 0.784} |
| 0.0001 | 268.0 | 1876 | 1.4256 | {'f1': 0.7986577181208054} | {'accuracy': 0.784} |
| 0.0001 | 269.0 | 1883 | 1.4268 | {'f1': 0.7985102420856611} | {'accuracy': 0.7836} |
| 0.0001 | 270.0 | 1890 | 1.4295 | {'f1': 0.7986602158541125} | {'accuracy': 0.7836} |
| 0.0001 | 271.0 | 1897 | 1.4313 | {'f1': 0.7991071428571429} | {'accuracy': 0.784} |
| 0.0001 | 272.0 | 1904 | 1.4335 | {'f1': 0.7992565055762082} | {'accuracy': 0.784} |
| 0.0001 | 273.0 | 1911 | 1.4373 | {'f1': 0.7998514667656889} | {'accuracy': 0.7844} |
| 0.0001 | 274.0 | 1918 | 1.4406 | {'f1': 0.8000000000000002} | {'accuracy': 0.7844} |
| 0.0001 | 275.0 | 1925 | 1.4433 | {'f1': 0.799110452186805} | {'accuracy': 0.7832} |
| 0.0001 | 276.0 | 1932 | 1.4454 | {'f1': 0.7997038134024435} | {'accuracy': 0.7836} |
| 0.0001 | 277.0 | 1939 | 1.4466 | {'f1': 0.7997038134024435} | {'accuracy': 0.7836} |
| 0.0001 | 278.0 | 1946 | 1.4425 | {'f1': 0.7995545657015591} | {'accuracy': 0.784} |
| 0.0001 | 279.0 | 1953 | 1.4293 | {'f1': 0.7991038088125467} | {'accuracy': 0.7848} |
| 0.0001 | 280.0 | 1960 | 1.4180 | {'f1': 0.7995495495495496} | {'accuracy': 0.7864} |
| 0.0001 | 281.0 | 1967 | 1.4141 | {'f1': 0.8004518072289157} | {'accuracy': 0.788} |
| 0.0001 | 282.0 | 1974 | 1.4138 | {'f1': 0.8} | {'accuracy': 0.7876} |
| 0.0001 | 283.0 | 1981 | 1.4172 | {'f1': 0.7999999999999999} | {'accuracy': 0.7872} |
| 0.0001 | 284.0 | 1988 | 1.4209 | {'f1': 0.7995495495495496} | {'accuracy': 0.7864} |
| 0.0001 | 285.0 | 1995 | 1.4232 | {'f1': 0.7996999249812453} | {'accuracy': 0.7864} |
| 0.0009 | 286.0 | 2002 | 1.4226 | {'f1': 0.8} | {'accuracy': 0.7868} |
| 0.0009 | 287.0 | 2009 | 1.4226 | {'f1': 0.8} | {'accuracy': 0.7868} |
| 0.0009 | 288.0 | 2016 | 1.4258 | {'f1': 0.7994000749906262} | {'accuracy': 0.786} |
| 0.0009 | 289.0 | 2023 | 1.4286 | {'f1': 0.7998500749625188} | {'accuracy': 0.7864} |
| 0.0009 | 290.0 | 2030 | 1.4308 | {'f1': 0.8002997377294866} | {'accuracy': 0.7868} |
| 0.0009 | 291.0 | 2037 | 1.4325 | {'f1': 0.7994011976047903} | {'accuracy': 0.7856} |
| 0.0009 | 292.0 | 2044 | 1.4336 | {'f1': 0.7991021324354658} | {'accuracy': 0.7852} |
| 0.0009 | 293.0 | 2051 | 1.4340 | {'f1': 0.7991021324354658} | {'accuracy': 0.7852} |
| 0.0009 | 294.0 | 2058 | 1.4326 | {'f1': 0.8002997377294866} | {'accuracy': 0.7868} |
| 0.0009 | 295.0 | 2065 | 1.4325 | {'f1': 0.7998500749625188} | {'accuracy': 0.7864} |
| 0.0009 | 296.0 | 2072 | 1.4124 | {'f1': 0.8012093726379441} | {'accuracy': 0.7896} |
| 0.0009 | 297.0 | 2079 | 1.3959 | {'f1': 0.80168776371308} | {'accuracy': 0.7932} |
| 0.0009 | 298.0 | 2086 | 1.6002 | {'f1': 0.794762915782024} | {'accuracy': 0.768} |
| 0.0009 | 299.0 | 2093 | 1.7138 | {'f1': 0.7907458563535912} | {'accuracy': 0.7576} |
| 0.0009 | 300.0 | 2100 | 1.4257 | {'f1': 0.7976011994002997} | {'accuracy': 0.784} |
| 0.0009 | 301.0 | 2107 | 1.3683 | {'f1': 0.8032850997262417} | {'accuracy': 0.7988} |
| 0.0009 | 302.0 | 2114 | 1.3620 | {'f1': 0.8046068308181096} | {'accuracy': 0.8032} |
| 0.0009 | 303.0 | 2121 | 1.3630 | {'f1': 0.8009592326139089} | {'accuracy': 0.8008} |
| 0.0009 | 304.0 | 2128 | 1.3633 | {'f1': 0.8030242737763629} | {'accuracy': 0.802} |
| 0.0009 | 305.0 | 2135 | 1.3670 | {'f1': 0.8050314465408804} | {'accuracy': 0.8016} |
| 0.0009 | 306.0 | 2142 | 1.3740 | {'f1': 0.8032786885245903} | {'accuracy': 0.7984} |
| 0.0009 | 307.0 | 2149 | 1.3820 | {'f1': 0.8024835079549866} | {'accuracy': 0.7964} |
| 0.0009 | 308.0 | 2156 | 1.3875 | {'f1': 0.802773497688752} | {'accuracy': 0.7952} |
| 0.0009 | 309.0 | 2163 | 1.3918 | {'f1': 0.8024596464258262} | {'accuracy': 0.7944} |
| 0.0009 | 310.0 | 2170 | 1.3969 | {'f1': 0.8021390374331552} | {'accuracy': 0.7928} |
| 0.0009 | 311.0 | 2177 | 1.4012 | {'f1': 0.8006099885627145} | {'accuracy': 0.7908} |
| 0.0009 | 312.0 | 2184 | 1.4041 | {'f1': 0.8015209125475284} | {'accuracy': 0.7912} |
| 0.0009 | 313.0 | 2191 | 1.4076 | {'f1': 0.8016717325227963} | {'accuracy': 0.7912} |
| 0.0009 | 314.0 | 2198 | 1.4100 | {'f1': 0.8010610079575597} | {'accuracy': 0.79} |
| 0.0009 | 315.0 | 2205 | 1.4108 | {'f1': 0.8010610079575597} | {'accuracy': 0.79} |
| 0.0009 | 316.0 | 2212 | 1.4119 | {'f1': 0.8007575757575758} | {'accuracy': 0.7896} |
| 0.0009 | 317.0 | 2219 | 1.4135 | {'f1': 0.8006053726825577} | {'accuracy': 0.7892} |
| 0.0009 | 318.0 | 2226 | 1.4155 | {'f1': 0.8006053726825577} | {'accuracy': 0.7892} |
| 0.0009 | 319.0 | 2233 | 1.4184 | {'f1': 0.8007561436672966} | {'accuracy': 0.7892} |
| 0.0009 | 320.0 | 2240 | 1.4205 | {'f1': 0.8001511144692104} | {'accuracy': 0.7884} |
| 0.0009 | 321.0 | 2247 | 1.4229 | {'f1': 0.7999999999999999} | {'accuracy': 0.788} |
| 0.0009 | 322.0 | 2254 | 1.4248 | {'f1': 0.7999999999999999} | {'accuracy': 0.788} |
| 0.0009 | 323.0 | 2261 | 1.4236 | {'f1': 0.7999999999999999} | {'accuracy': 0.788} |
| 0.0009 | 324.0 | 2268 | 1.4248 | {'f1': 0.7999999999999999} | {'accuracy': 0.788} |
| 0.0009 | 325.0 | 2275 | 1.4261 | {'f1': 0.7999999999999999} | {'accuracy': 0.788} |
| 0.0009 | 326.0 | 2282 | 1.4265 | {'f1': 0.7999999999999999} | {'accuracy': 0.788} |
| 0.0009 | 327.0 | 2289 | 1.4301 | {'f1': 0.7998492272898605} | {'accuracy': 0.7876} |
| 0.0009 | 328.0 | 2296 | 1.4330 | {'f1': 0.7989457831325301} | {'accuracy': 0.7864} |
| 0.0009 | 329.0 | 2303 | 1.4356 | {'f1': 0.7980443775855585} | {'accuracy': 0.7852} |
| 0.0009 | 330.0 | 2310 | 1.4369 | {'f1': 0.7971450037565742} | {'accuracy': 0.784} |
| 0.0009 | 331.0 | 2317 | 1.4376 | {'f1': 0.7971450037565742} | {'accuracy': 0.784} |
| 0.0009 | 332.0 | 2324 | 1.4397 | {'f1': 0.7966991747936983} | {'accuracy': 0.7832} |
| 0.0009 | 333.0 | 2331 | 1.4411 | {'f1': 0.7971503562054744} | {'accuracy': 0.7836} |
| 0.0009 | 334.0 | 2338 | 1.4427 | {'f1': 0.7968515742128937} | {'accuracy': 0.7832} |
| 0.0009 | 335.0 | 2345 | 1.4436 | {'f1': 0.796553016110903} | {'accuracy': 0.7828} |
| 0.0009 | 336.0 | 2352 | 1.4445 | {'f1': 0.7959565705728191} | {'accuracy': 0.782} |
| 0.0009 | 337.0 | 2359 | 1.4456 | {'f1': 0.7959565705728191} | {'accuracy': 0.782} |
| 0.0009 | 338.0 | 2366 | 1.4478 | {'f1': 0.7961092405536849} | {'accuracy': 0.782} |
| 0.0009 | 339.0 | 2373 | 1.4502 | {'f1': 0.7959641255605382} | {'accuracy': 0.7816} |
| 0.0009 | 340.0 | 2380 | 1.4524 | {'f1': 0.7965658827920866} | {'accuracy': 0.782} |
| 0.0009 | 341.0 | 2387 | 1.4543 | {'f1': 0.7965658827920866} | {'accuracy': 0.782} |
| 0.0009 | 342.0 | 2394 | 1.4566 | {'f1': 0.7971662938105891} | {'accuracy': 0.7824} |
| 0.0009 | 343.0 | 2401 | 1.4584 | {'f1': 0.7985102420856611} | {'accuracy': 0.7836} |
| 0.0009 | 344.0 | 2408 | 1.4614 | {'f1': 0.7982129560685035} | {'accuracy': 0.7832} |
| 0.0009 | 345.0 | 2415 | 1.4634 | {'f1': 0.7982129560685035} | {'accuracy': 0.7832} |
| 0.0009 | 346.0 | 2422 | 1.4718 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0009 | 347.0 | 2429 | 1.4867 | {'f1': 0.7945407598672077} | {'accuracy': 0.7772} |
| 0.0009 | 348.0 | 2436 | 1.4923 | {'f1': 0.7939661515820456} | {'accuracy': 0.776} |
| 0.0009 | 349.0 | 2443 | 1.4946 | {'f1': 0.7944097094520043} | {'accuracy': 0.7764} |
| 0.0009 | 350.0 | 2450 | 1.4963 | {'f1': 0.7938257993384784} | {'accuracy': 0.7756} |
| 0.0009 | 351.0 | 2457 | 1.4789 | {'f1': 0.7957068837897854} | {'accuracy': 0.7792} |
| 0.0009 | 352.0 | 2464 | 1.4684 | {'f1': 0.7973224246931945} | {'accuracy': 0.782} |
| 0.0009 | 353.0 | 2471 | 1.4638 | {'f1': 0.7977653631284917} | {'accuracy': 0.7828} |
| 0.0009 | 354.0 | 2478 | 1.4617 | {'f1': 0.7979120059656973} | {'accuracy': 0.7832} |
| 0.0009 | 355.0 | 2485 | 1.4615 | {'f1': 0.7979120059656973} | {'accuracy': 0.7832} |
| 0.0009 | 356.0 | 2492 | 1.4620 | {'f1': 0.7979120059656973} | {'accuracy': 0.7832} |
| 0.0009 | 357.0 | 2499 | 1.4626 | {'f1': 0.7976146105106224} | {'accuracy': 0.7828} |
| 0.0003 | 358.0 | 2506 | 1.4612 | {'f1': 0.7974636329727713} | {'accuracy': 0.7828} |
| 0.0003 | 359.0 | 2513 | 1.4588 | {'f1': 0.7961165048543689} | {'accuracy': 0.7816} |
| 0.0003 | 360.0 | 2520 | 1.4585 | {'f1': 0.7961165048543689} | {'accuracy': 0.7816} |
| 0.0003 | 361.0 | 2527 | 1.4592 | {'f1': 0.7961165048543689} | {'accuracy': 0.7816} |
| 0.0003 | 362.0 | 2534 | 1.4602 | {'f1': 0.7961165048543689} | {'accuracy': 0.7816} |
| 0.0003 | 363.0 | 2541 | 1.4613 | {'f1': 0.7961165048543689} | {'accuracy': 0.7816} |
| 0.0003 | 364.0 | 2548 | 1.4631 | {'f1': 0.7974636329727713} | {'accuracy': 0.7828} |
| 0.0003 | 365.0 | 2555 | 1.4650 | {'f1': 0.7976146105106224} | {'accuracy': 0.7828} |
| 0.0003 | 366.0 | 2562 | 1.4658 | {'f1': 0.7976146105106224} | {'accuracy': 0.7828} |
| 0.0003 | 367.0 | 2569 | 1.4660 | {'f1': 0.7976146105106224} | {'accuracy': 0.7828} |
| 0.0003 | 368.0 | 2576 | 1.4670 | {'f1': 0.797317436661699} | {'accuracy': 0.7824} |
| 0.0003 | 369.0 | 2583 | 1.4687 | {'f1': 0.7977653631284917} | {'accuracy': 0.7828} |
| 0.0003 | 370.0 | 2590 | 1.4696 | {'f1': 0.7977653631284917} | {'accuracy': 0.7828} |
| 0.0003 | 371.0 | 2597 | 1.4700 | {'f1': 0.7977653631284917} | {'accuracy': 0.7828} |
| 0.0003 | 372.0 | 2604 | 1.4706 | {'f1': 0.7977653631284917} | {'accuracy': 0.7828} |
| 0.0003 | 373.0 | 2611 | 1.4709 | {'f1': 0.7974683544303798} | {'accuracy': 0.7824} |
| 0.0003 | 374.0 | 2618 | 1.4711 | {'f1': 0.7977653631284917} | {'accuracy': 0.7828} |
| 0.0003 | 375.0 | 2625 | 1.4710 | {'f1': 0.7977653631284917} | {'accuracy': 0.7828} |
| 0.0003 | 376.0 | 2632 | 1.4713 | {'f1': 0.7977653631284917} | {'accuracy': 0.7828} |
| 0.0003 | 377.0 | 2639 | 1.4730 | {'f1': 0.7974683544303798} | {'accuracy': 0.7824} |
| 0.0003 | 378.0 | 2646 | 1.4732 | {'f1': 0.7974683544303798} | {'accuracy': 0.7824} |
| 0.0003 | 379.0 | 2653 | 1.4746 | {'f1': 0.7974683544303798} | {'accuracy': 0.7824} |
| 0.0003 | 380.0 | 2660 | 1.4789 | {'f1': 0.7965786537746373} | {'accuracy': 0.7812} |
| 0.0003 | 381.0 | 2667 | 1.4810 | {'f1': 0.7967298402081011} | {'accuracy': 0.7812} |
| 0.0003 | 382.0 | 2674 | 1.4821 | {'f1': 0.7971768202080238} | {'accuracy': 0.7816} |
| 0.0003 | 383.0 | 2681 | 1.4820 | {'f1': 0.7971768202080238} | {'accuracy': 0.7816} |
| 0.0003 | 384.0 | 2688 | 1.4843 | {'f1': 0.7959940652818991} | {'accuracy': 0.78} |
| 0.0003 | 385.0 | 2695 | 1.4862 | {'f1': 0.7959940652818991} | {'accuracy': 0.78} |
| 0.0003 | 386.0 | 2702 | 1.4866 | {'f1': 0.7956989247311829} | {'accuracy': 0.7796} |
| 0.0003 | 387.0 | 2709 | 1.4868 | {'f1': 0.7956989247311829} | {'accuracy': 0.7796} |
| 0.0003 | 388.0 | 2716 | 1.4878 | {'f1': 0.7961452928094884} | {'accuracy': 0.78} |
| 0.0003 | 389.0 | 2723 | 1.4885 | {'f1': 0.7958503149314561} | {'accuracy': 0.7796} |
| 0.0003 | 390.0 | 2730 | 1.4889 | {'f1': 0.7958503149314561} | {'accuracy': 0.7796} |
| 0.0003 | 391.0 | 2737 | 1.4888 | {'f1': 0.7956989247311829} | {'accuracy': 0.7796} |
| 0.0003 | 392.0 | 2744 | 1.4904 | {'f1': 0.7957068837897854} | {'accuracy': 0.7792} |
| 0.0003 | 393.0 | 2751 | 1.4930 | {'f1': 0.7954125046244912} | {'accuracy': 0.7788} |
| 0.0003 | 394.0 | 2758 | 1.4942 | {'f1': 0.7954125046244912} | {'accuracy': 0.7788} |
| 0.0003 | 395.0 | 2765 | 1.4946 | {'f1': 0.7954125046244912} | {'accuracy': 0.7788} |
| 0.0003 | 396.0 | 2772 | 1.4941 | {'f1': 0.7954125046244912} | {'accuracy': 0.7788} |
| 0.0003 | 397.0 | 2779 | 1.4940 | {'f1': 0.7954125046244912} | {'accuracy': 0.7788} |
| 0.0003 | 398.0 | 2786 | 1.4942 | {'f1': 0.7954125046244912} | {'accuracy': 0.7788} |
| 0.0003 | 399.0 | 2793 | 1.4822 | {'f1': 0.7973224246931945} | {'accuracy': 0.782} |
| 0.0003 | 400.0 | 2800 | 1.4770 | {'f1': 0.797317436661699} | {'accuracy': 0.7824} |
| 0.0003 | 401.0 | 2807 | 1.4748 | {'f1': 0.7965658827920866} | {'accuracy': 0.782} |
| 0.0003 | 402.0 | 2814 | 1.4739 | {'f1': 0.7961165048543689} | {'accuracy': 0.7816} |
| 0.0003 | 403.0 | 2821 | 1.4738 | {'f1': 0.7961165048543689} | {'accuracy': 0.7816} |
| 0.0003 | 404.0 | 2828 | 1.4735 | {'f1': 0.7964138961524094} | {'accuracy': 0.782} |
| 0.0003 | 405.0 | 2835 | 1.4730 | {'f1': 0.7964138961524094} | {'accuracy': 0.782} |
| 0.0003 | 406.0 | 2842 | 1.4736 | {'f1': 0.7964138961524094} | {'accuracy': 0.782} |
| 0.0003 | 407.0 | 2849 | 1.4725 | {'f1': 0.7967115097159939} | {'accuracy': 0.7824} |
| 0.0003 | 408.0 | 2856 | 1.4748 | {'f1': 0.7961165048543689} | {'accuracy': 0.7816} |
| 0.0003 | 409.0 | 2863 | 1.4769 | {'f1': 0.7970149253731343} | {'accuracy': 0.7824} |
| 0.0003 | 410.0 | 2870 | 1.4782 | {'f1': 0.7974636329727713} | {'accuracy': 0.7828} |
| 0.0003 | 411.0 | 2877 | 1.4788 | {'f1': 0.7971662938105891} | {'accuracy': 0.7824} |
| 0.0003 | 412.0 | 2884 | 1.4792 | {'f1': 0.7971662938105891} | {'accuracy': 0.7824} |
| 0.0003 | 413.0 | 2891 | 1.4871 | {'f1': 0.7974730583426236} | {'accuracy': 0.782} |
| 0.0003 | 414.0 | 2898 | 1.4949 | {'f1': 0.7959940652818991} | {'accuracy': 0.78} |
| 0.0003 | 415.0 | 2905 | 1.4969 | {'f1': 0.7958503149314561} | {'accuracy': 0.7796} |
| 0.0003 | 416.0 | 2912 | 1.4979 | {'f1': 0.7955555555555556} | {'accuracy': 0.7792} |
| 0.0003 | 417.0 | 2919 | 1.4989 | {'f1': 0.7949666913397484} | {'accuracy': 0.7784} |
| 0.0003 | 418.0 | 2926 | 1.4976 | {'f1': 0.7955555555555556} | {'accuracy': 0.7792} |
| 0.0003 | 419.0 | 2933 | 1.4964 | {'f1': 0.7956989247311829} | {'accuracy': 0.7796} |
| 0.0003 | 420.0 | 2940 | 1.4958 | {'f1': 0.7959940652818991} | {'accuracy': 0.78} |
| 0.0003 | 421.0 | 2947 | 1.4959 | {'f1': 0.7959940652818991} | {'accuracy': 0.78} |
| 0.0003 | 422.0 | 2954 | 1.4963 | {'f1': 0.7959940652818991} | {'accuracy': 0.78} |
| 0.0003 | 423.0 | 2961 | 1.4968 | {'f1': 0.7956989247311829} | {'accuracy': 0.7796} |
| 0.0003 | 424.0 | 2968 | 1.4971 | {'f1': 0.7956989247311829} | {'accuracy': 0.7796} |
| 0.0003 | 425.0 | 2975 | 1.4971 | {'f1': 0.7956989247311829} | {'accuracy': 0.7796} |
| 0.0003 | 426.0 | 2982 | 1.4980 | {'f1': 0.7961452928094884} | {'accuracy': 0.78} |
| 0.0003 | 427.0 | 2989 | 1.4986 | {'f1': 0.7961452928094884} | {'accuracy': 0.78} |
| 0.0003 | 428.0 | 2996 | 1.4990 | {'f1': 0.7961452928094884} | {'accuracy': 0.78} |
| 0.0 | 429.0 | 3003 | 1.4993 | {'f1': 0.7955555555555556} | {'accuracy': 0.7792} |
| 0.0 | 430.0 | 3010 | 1.4997 | {'f1': 0.7955555555555556} | {'accuracy': 0.7792} |
| 0.0 | 431.0 | 3017 | 1.5001 | {'f1': 0.7955555555555556} | {'accuracy': 0.7792} |
| 0.0 | 432.0 | 3024 | 1.5005 | {'f1': 0.7955555555555556} | {'accuracy': 0.7792} |
| 0.0 | 433.0 | 3031 | 1.5009 | {'f1': 0.7955555555555556} | {'accuracy': 0.7792} |
| 0.0 | 434.0 | 3038 | 1.5007 | {'f1': 0.7955555555555556} | {'accuracy': 0.7792} |
| 0.0 | 435.0 | 3045 | 1.4997 | {'f1': 0.7961452928094884} | {'accuracy': 0.78} |
| 0.0 | 436.0 | 3052 | 1.4990 | {'f1': 0.7961452928094884} | {'accuracy': 0.78} |
| 0.0 | 437.0 | 3059 | 1.4991 | {'f1': 0.7961452928094884} | {'accuracy': 0.78} |
| 0.0 | 438.0 | 3066 | 1.4995 | {'f1': 0.7961452928094884} | {'accuracy': 0.78} |
| 0.0 | 439.0 | 3073 | 1.4997 | {'f1': 0.7961452928094884} | {'accuracy': 0.78} |
| 0.0 | 440.0 | 3080 | 1.4998 | {'f1': 0.7961452928094884} | {'accuracy': 0.78} |
| 0.0 | 441.0 | 3087 | 1.4999 | {'f1': 0.7961452928094884} | {'accuracy': 0.78} |
| 0.0 | 442.0 | 3094 | 1.5000 | {'f1': 0.7961452928094884} | {'accuracy': 0.78} |
| 0.0 | 443.0 | 3101 | 1.5003 | {'f1': 0.7961452928094884} | {'accuracy': 0.78} |
| 0.0 | 444.0 | 3108 | 1.5005 | {'f1': 0.7961452928094884} | {'accuracy': 0.78} |
| 0.0 | 445.0 | 3115 | 1.5005 | {'f1': 0.7961452928094884} | {'accuracy': 0.78} |
| 0.0 | 446.0 | 3122 | 1.5002 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 447.0 | 3129 | 1.5000 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 448.0 | 3136 | 1.4999 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 449.0 | 3143 | 1.4999 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 450.0 | 3150 | 1.5001 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 451.0 | 3157 | 1.5003 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 452.0 | 3164 | 1.5006 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 453.0 | 3171 | 1.5007 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 454.0 | 3178 | 1.5007 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 455.0 | 3185 | 1.5007 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 456.0 | 3192 | 1.4999 | {'f1': 0.7962894248608535} | {'accuracy': 0.7804} |
| 0.0 | 457.0 | 3199 | 1.4997 | {'f1': 0.7968808020794653} | {'accuracy': 0.7812} |
| 0.0 | 458.0 | 3206 | 1.4995 | {'f1': 0.7968808020794653} | {'accuracy': 0.7812} |
| 0.0 | 459.0 | 3213 | 1.4996 | {'f1': 0.7971768202080238} | {'accuracy': 0.7816} |
| 0.0 | 460.0 | 3220 | 1.4997 | {'f1': 0.7968808020794653} | {'accuracy': 0.7812} |
| 0.0 | 461.0 | 3227 | 1.4999 | {'f1': 0.7968808020794653} | {'accuracy': 0.7812} |
| 0.0 | 462.0 | 3234 | 1.5001 | {'f1': 0.7968808020794653} | {'accuracy': 0.7812} |
| 0.0 | 463.0 | 3241 | 1.5006 | {'f1': 0.7962894248608535} | {'accuracy': 0.7804} |
| 0.0 | 464.0 | 3248 | 1.5008 | {'f1': 0.7962894248608535} | {'accuracy': 0.7804} |
| 0.0 | 465.0 | 3255 | 1.5010 | {'f1': 0.7962894248608535} | {'accuracy': 0.7804} |
| 0.0 | 466.0 | 3262 | 1.5010 | {'f1': 0.7962894248608535} | {'accuracy': 0.7804} |
| 0.0 | 467.0 | 3269 | 1.5012 | {'f1': 0.7962894248608535} | {'accuracy': 0.7804} |
| 0.0 | 468.0 | 3276 | 1.5014 | {'f1': 0.7967359050445103} | {'accuracy': 0.7808} |
| 0.0 | 469.0 | 3283 | 1.5015 | {'f1': 0.7967359050445103} | {'accuracy': 0.7808} |
| 0.0 | 470.0 | 3290 | 1.5017 | {'f1': 0.7967359050445103} | {'accuracy': 0.7808} |
| 0.0 | 471.0 | 3297 | 1.5020 | {'f1': 0.7967359050445103} | {'accuracy': 0.7808} |
| 0.0 | 472.0 | 3304 | 1.5022 | {'f1': 0.7967359050445103} | {'accuracy': 0.7808} |
| 0.0 | 473.0 | 3311 | 1.5023 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 474.0 | 3318 | 1.5020 | {'f1': 0.7967359050445103} | {'accuracy': 0.7808} |
| 0.0 | 475.0 | 3325 | 1.5020 | {'f1': 0.7967359050445103} | {'accuracy': 0.7808} |
| 0.0 | 476.0 | 3332 | 1.5021 | {'f1': 0.7967359050445103} | {'accuracy': 0.7808} |
| 0.0 | 477.0 | 3339 | 1.5020 | {'f1': 0.7967359050445103} | {'accuracy': 0.7808} |
| 0.0 | 478.0 | 3346 | 1.5025 | {'f1': 0.7967359050445103} | {'accuracy': 0.7808} |
| 0.0 | 479.0 | 3353 | 1.5029 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 480.0 | 3360 | 1.5032 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 481.0 | 3367 | 1.5035 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 482.0 | 3374 | 1.5036 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 483.0 | 3381 | 1.5036 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 484.0 | 3388 | 1.5037 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 485.0 | 3395 | 1.5037 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 486.0 | 3402 | 1.5037 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 487.0 | 3409 | 1.5036 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 488.0 | 3416 | 1.5036 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 489.0 | 3423 | 1.5030 | {'f1': 0.7967359050445103} | {'accuracy': 0.7808} |
| 0.0 | 490.0 | 3430 | 1.5028 | {'f1': 0.7967359050445103} | {'accuracy': 0.7808} |
| 0.0 | 491.0 | 3437 | 1.5027 | {'f1': 0.7967359050445103} | {'accuracy': 0.7808} |
| 0.0 | 492.0 | 3444 | 1.5026 | {'f1': 0.7967359050445103} | {'accuracy': 0.7808} |
| 0.0 | 493.0 | 3451 | 1.5026 | {'f1': 0.7967359050445103} | {'accuracy': 0.7808} |
| 0.0 | 494.0 | 3458 | 1.5033 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 495.0 | 3465 | 1.5041 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 496.0 | 3472 | 1.5042 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 497.0 | 3479 | 1.5041 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 498.0 | 3486 | 1.5041 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 499.0 | 3493 | 1.5041 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
| 0.0 | 500.0 | 3500 | 1.5041 | {'f1': 0.796440489432703} | {'accuracy': 0.7804} |
Framework versions
- Transformers 4.29.2
- Pytorch 2.0.1+cu117
- Datasets 2.12.0
- Tokenizers 0.13.3
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