bert-base-uncased-test_2_500

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: 1.3242
  • F1: {'f1': 0.8878243512974051}
  • Accuracy: {'accuracy': 0.8876}

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 32 0.6801 {'f1': 0.253315649867374} {'accuracy': 0.5496}
No log 2.0 64 0.6567 {'f1': 0.395820528580209} {'accuracy': 0.6068}
No log 3.0 96 0.5299 {'f1': 0.7167362076958739} {'accuracy': 0.7556}
No log 4.0 128 0.3719 {'f1': 0.8450704225352113} {'accuracy': 0.8416}
No log 5.0 160 0.3542 {'f1': 0.8584795321637427} {'accuracy': 0.8548}
No log 6.0 192 0.3509 {'f1': 0.8587708587708587} {'accuracy': 0.8612}
No log 7.0 224 0.3426 {'f1': 0.8642370845014016} {'accuracy': 0.8644}
No log 8.0 256 0.3844 {'f1': 0.8569065343258891} {'accuracy': 0.8616}
No log 9.0 288 0.3601 {'f1': 0.8700696055684455} {'accuracy': 0.8656}
No log 10.0 320 0.4025 {'f1': 0.8663141993957705} {'accuracy': 0.8584}
No log 11.0 352 0.4094 {'f1': 0.8730600875447672} {'accuracy': 0.8724}
No log 12.0 384 0.4316 {'f1': 0.8725529364762286} {'accuracy': 0.8724}
No log 13.0 416 0.4566 {'f1': 0.8772763262074426} {'accuracy': 0.876}
No log 14.0 448 0.5450 {'f1': 0.8553406223717409} {'accuracy': 0.8624}
No log 15.0 480 0.4764 {'f1': 0.8766692851531814} {'accuracy': 0.8744}
0.2904 16.0 512 0.5232 {'f1': 0.8812600969305331} {'accuracy': 0.8824}
0.2904 17.0 544 0.5538 {'f1': 0.8764302059496568} {'accuracy': 0.8704}
0.2904 18.0 576 0.5426 {'f1': 0.8780487804878049} {'accuracy': 0.874}
0.2904 19.0 608 0.5473 {'f1': 0.876509544215037} {'accuracy': 0.8732}
0.2904 20.0 640 0.5786 {'f1': 0.8822605965463108} {'accuracy': 0.88}
0.2904 21.0 672 0.6041 {'f1': 0.883197516492045} {'accuracy': 0.8796}
0.2904 22.0 704 0.6239 {'f1': 0.8787061994609163} {'accuracy': 0.874}
0.2904 23.0 736 0.6593 {'f1': 0.881688018085908} {'accuracy': 0.8744}
0.2904 24.0 768 0.6500 {'f1': 0.882051282051282} {'accuracy': 0.8804}
0.2904 25.0 800 0.7181 {'f1': 0.8694581280788177} {'accuracy': 0.8728}
0.2904 26.0 832 0.6766 {'f1': 0.8800940438871473} {'accuracy': 0.8776}
0.2904 27.0 864 0.7055 {'f1': 0.8803789972364785} {'accuracy': 0.8788}
0.2904 28.0 896 0.7455 {'f1': 0.876979293544458} {'accuracy': 0.8788}
0.2904 29.0 928 0.7227 {'f1': 0.8797443068318018} {'accuracy': 0.8796}
0.2904 30.0 960 0.7445 {'f1': 0.8800635424940428} {'accuracy': 0.8792}
0.2904 31.0 992 0.7485 {'f1': 0.884942084942085} {'accuracy': 0.8808}
0.0294 32.0 1024 0.7603 {'f1': 0.8833333333333332} {'accuracy': 0.8824}
0.0294 33.0 1056 0.7681 {'f1': 0.8843700159489634} {'accuracy': 0.884}
0.0294 34.0 1088 0.8303 {'f1': 0.8727871552079044} {'accuracy': 0.8764}
0.0294 35.0 1120 0.8575 {'f1': 0.8669991687448046} {'accuracy': 0.872}
0.0294 36.0 1152 0.8227 {'f1': 0.8755573571139035} {'accuracy': 0.8772}
0.0294 37.0 1184 0.8699 {'f1': 0.8705302096177558} {'accuracy': 0.874}
0.0294 38.0 1216 0.8056 {'f1': 0.8847205939820243} {'accuracy': 0.882}
0.0294 39.0 1248 0.8177 {'f1': 0.8847058823529411} {'accuracy': 0.8824}
0.0294 40.0 1280 0.8988 {'f1': 0.874031797798614} {'accuracy': 0.8764}
0.0294 41.0 1312 0.9963 {'f1': 0.8571428571428571} {'accuracy': 0.8648}
0.0294 42.0 1344 0.9049 {'f1': 0.8857356235997013} {'accuracy': 0.8776}
0.0294 43.0 1376 0.8490 {'f1': 0.8865820838139177} {'accuracy': 0.882}
0.0294 44.0 1408 0.8760 {'f1': 0.8744484556758926} {'accuracy': 0.8748}
0.0294 45.0 1440 1.0835 {'f1': 0.8533561351004704} {'accuracy': 0.8628}
0.0294 46.0 1472 0.8930 {'f1': 0.8805132317562148} {'accuracy': 0.8808}
0.0059 47.0 1504 0.9490 {'f1': 0.8773507767784138} {'accuracy': 0.88}
0.0059 48.0 1536 0.9000 {'f1': 0.8845541401273885} {'accuracy': 0.884}
0.0059 49.0 1568 0.9667 {'f1': 0.8729055986922762} {'accuracy': 0.8756}
0.0059 50.0 1600 0.9061 {'f1': 0.8838482596793117} {'accuracy': 0.8812}
0.0059 51.0 1632 0.9607 {'f1': 0.8744412840308817} {'accuracy': 0.8764}
0.0059 52.0 1664 0.9181 {'f1': 0.8868288914638857} {'accuracy': 0.8828}
0.0059 53.0 1696 0.9219 {'f1': 0.88800949742778} {'accuracy': 0.8868}
0.0059 54.0 1728 0.9399 {'f1': 0.8876881512929371} {'accuracy': 0.8836}
0.0059 55.0 1760 0.9157 {'f1': 0.888201160541586} {'accuracy': 0.8844}
0.0059 56.0 1792 0.9330 {'f1': 0.8840927258193446} {'accuracy': 0.884}
0.0059 57.0 1824 0.9414 {'f1': 0.8902392707937713} {'accuracy': 0.8844}
0.0059 58.0 1856 0.9542 {'f1': 0.8764135702746365} {'accuracy': 0.8776}
0.0059 59.0 1888 0.9881 {'f1': 0.8753056234718826} {'accuracy': 0.8776}
0.0059 60.0 1920 0.9599 {'f1': 0.8808373590982287} {'accuracy': 0.8816}
0.0059 61.0 1952 0.9520 {'f1': 0.8825651302605211} {'accuracy': 0.8828}
0.0059 62.0 1984 0.9344 {'f1': 0.8832088084939048} {'accuracy': 0.8812}
0.0043 63.0 2016 0.9675 {'f1': 0.8797748291113793} {'accuracy': 0.8804}
0.0043 64.0 2048 0.9444 {'f1': 0.8871834228702994} {'accuracy': 0.8824}
0.0043 65.0 2080 0.9464 {'f1': 0.882775119617225} {'accuracy': 0.8824}
0.0043 66.0 2112 0.9734 {'f1': 0.8813559322033898} {'accuracy': 0.8824}
0.0043 67.0 2144 0.9715 {'f1': 0.8827309236947791} {'accuracy': 0.8832}
0.0043 68.0 2176 0.9423 {'f1': 0.8898539281484406} {'accuracy': 0.8884}
0.0043 69.0 2208 0.9447 {'f1': 0.886983632112237} {'accuracy': 0.884}
0.0043 70.0 2240 0.9595 {'f1': 0.8885448916408668} {'accuracy': 0.8848}
0.0043 71.0 2272 0.9721 {'f1': 0.8872180451127819} {'accuracy': 0.886}
0.0043 72.0 2304 0.9750 {'f1': 0.8873072360616844} {'accuracy': 0.886}
0.0043 73.0 2336 1.0369 {'f1': 0.8771358828315704} {'accuracy': 0.8792}
0.0043 74.0 2368 1.0656 {'f1': 0.8744339234252778} {'accuracy': 0.878}
0.0043 75.0 2400 1.0304 {'f1': 0.88} {'accuracy': 0.8812}
0.0043 76.0 2432 1.0651 {'f1': 0.8744872846595569} {'accuracy': 0.8776}
0.0043 77.0 2464 1.0023 {'f1': 0.8921374950612406} {'accuracy': 0.8908}
0.0043 78.0 2496 0.9992 {'f1': 0.8890643505724438} {'accuracy': 0.8876}
0.0031 79.0 2528 0.9912 {'f1': 0.8864696734059099} {'accuracy': 0.8832}
0.0031 80.0 2560 1.0876 {'f1': 0.8821999256781866} {'accuracy': 0.8732}
0.0031 81.0 2592 1.0018 {'f1': 0.887009992313605} {'accuracy': 0.8824}
0.0031 82.0 2624 1.0475 {'f1': 0.8773055332798717} {'accuracy': 0.8776}
0.0031 83.0 2656 1.0269 {'f1': 0.8855445544554456} {'accuracy': 0.8844}
0.0031 84.0 2688 1.0180 {'f1': 0.8863456985003947} {'accuracy': 0.8848}
0.0031 85.0 2720 1.2762 {'f1': 0.8522483940042828} {'accuracy': 0.862}
0.0031 86.0 2752 1.0328 {'f1': 0.8823064770932069} {'accuracy': 0.8808}
0.0031 87.0 2784 1.0338 {'f1': 0.8841201716738198} {'accuracy': 0.8812}
0.0031 88.0 2816 1.0630 {'f1': 0.8797876374668184} {'accuracy': 0.8732}
0.0031 89.0 2848 1.0467 {'f1': 0.8803180914512924} {'accuracy': 0.8796}
0.0031 90.0 2880 1.0381 {'f1': 0.8824921135646688} {'accuracy': 0.8808}
0.0031 91.0 2912 1.1350 {'f1': 0.8735632183908045} {'accuracy': 0.8768}
0.0031 92.0 2944 1.2254 {'f1': 0.8589527027027027} {'accuracy': 0.8664}
0.0031 93.0 2976 1.0737 {'f1': 0.879415347137637} {'accuracy': 0.8812}
0.0079 94.0 3008 1.0254 {'f1': 0.8832204065364686} {'accuracy': 0.8828}
0.0079 95.0 3040 1.0451 {'f1': 0.8829190056134724} {'accuracy': 0.8832}
0.0079 96.0 3072 1.0376 {'f1': 0.8876058506543494} {'accuracy': 0.8832}
0.0079 97.0 3104 1.0467 {'f1': 0.8867562380038387} {'accuracy': 0.882}
0.0079 98.0 3136 1.0908 {'f1': 0.8808080808080808} {'accuracy': 0.882}
0.0079 99.0 3168 1.1546 {'f1': 0.8797047970479704} {'accuracy': 0.8696}
0.0079 100.0 3200 1.0611 {'f1': 0.8873239436619718} {'accuracy': 0.8848}
0.0079 101.0 3232 1.1234 {'f1': 0.872815928484356} {'accuracy': 0.8748}
0.0079 102.0 3264 1.0708 {'f1': 0.8848146671980869} {'accuracy': 0.8844}
0.0079 103.0 3296 1.4289 {'f1': 0.8423344947735192} {'accuracy': 0.8552}
0.0079 104.0 3328 1.0982 {'f1': 0.877079107505071} {'accuracy': 0.8788}
0.0079 105.0 3360 1.2706 {'f1': 0.8601784955376116} {'accuracy': 0.8684}
0.0079 106.0 3392 1.0504 {'f1': 0.8805433479824213} {'accuracy': 0.8804}
0.0079 107.0 3424 1.0664 {'f1': 0.8819725141471302} {'accuracy': 0.8832}
0.0079 108.0 3456 1.0435 {'f1': 0.8888888888888888} {'accuracy': 0.8836}
0.0079 109.0 3488 1.0634 {'f1': 0.878775674587193} {'accuracy': 0.8796}
0.0038 110.0 3520 1.0531 {'f1': 0.8879605013292824} {'accuracy': 0.882}
0.0038 111.0 3552 1.1024 {'f1': 0.8788732394366197} {'accuracy': 0.8796}
0.0038 112.0 3584 1.1009 {'f1': 0.8837209302325582} {'accuracy': 0.88}
0.0038 113.0 3616 1.1039 {'f1': 0.885195206803247} {'accuracy': 0.8812}
0.0038 114.0 3648 1.1037 {'f1': 0.8848390849166343} {'accuracy': 0.8812}
0.0038 115.0 3680 1.3680 {'f1': 0.846483704974271} {'accuracy': 0.8568}
0.0038 116.0 3712 1.1014 {'f1': 0.8790259230164964} {'accuracy': 0.8768}
0.0038 117.0 3744 1.1115 {'f1': 0.8753507014028056} {'accuracy': 0.8756}
0.0038 118.0 3776 1.1046 {'f1': 0.8777152051488336} {'accuracy': 0.8784}
0.0038 119.0 3808 1.3210 {'f1': 0.8581109699279966} {'accuracy': 0.866}
0.0038 120.0 3840 1.1407 {'f1': 0.877001171417415} {'accuracy': 0.874}
0.0038 121.0 3872 1.2861 {'f1': 0.873992673992674} {'accuracy': 0.8624}
0.0038 122.0 3904 1.4529 {'f1': 0.8476764199655766} {'accuracy': 0.8584}
0.0038 123.0 3936 1.1866 {'f1': 0.8746968472109943} {'accuracy': 0.876}
0.0038 124.0 3968 1.1406 {'f1': 0.8884585592563905} {'accuracy': 0.8848}
0.0043 125.0 4000 1.2049 {'f1': 0.8772357723577234} {'accuracy': 0.8792}
0.0043 126.0 4032 1.1289 {'f1': 0.8919129082426128} {'accuracy': 0.8888}
0.0043 127.0 4064 1.1299 {'f1': 0.8917445482866044} {'accuracy': 0.8888}
0.0043 128.0 4096 1.1307 {'f1': 0.8919235271166601} {'accuracy': 0.8892}
0.0043 129.0 4128 1.1318 {'f1': 0.8897576231430805} {'accuracy': 0.8872}
0.0043 130.0 4160 1.1481 {'f1': 0.8857142857142859} {'accuracy': 0.8848}
0.0043 131.0 4192 1.1503 {'f1': 0.8857142857142859} {'accuracy': 0.8848}
0.0043 132.0 4224 1.1934 {'f1': 0.8803556992724333} {'accuracy': 0.8816}
0.0043 133.0 4256 1.1931 {'f1': 0.88} {'accuracy': 0.8812}
0.0043 134.0 4288 1.1904 {'f1': 0.8804523424878836} {'accuracy': 0.8816}
0.0043 135.0 4320 1.1773 {'f1': 0.8826366559485529} {'accuracy': 0.8832}
0.0043 136.0 4352 1.1680 {'f1': 0.8852459016393444} {'accuracy': 0.8852}
0.0043 137.0 4384 1.1401 {'f1': 0.8869701726844584} {'accuracy': 0.8848}
0.0043 138.0 4416 1.1414 {'f1': 0.8846761453396524} {'accuracy': 0.8832}
0.0043 139.0 4448 1.4003 {'f1': 0.8530038346825735} {'accuracy': 0.862}
0.0043 140.0 4480 1.1447 {'f1': 0.8835182250396196} {'accuracy': 0.8824}
0.0007 141.0 4512 1.2298 {'f1': 0.8708094848732624} {'accuracy': 0.8736}
0.0007 142.0 4544 1.1491 {'f1': 0.8894026974951831} {'accuracy': 0.8852}
0.0007 143.0 4576 1.1352 {'f1': 0.88984375} {'accuracy': 0.8872}
0.0007 144.0 4608 1.2173 {'f1': 0.876523151909017} {'accuracy': 0.8784}
0.0007 145.0 4640 1.1757 {'f1': 0.8833667334669338} {'accuracy': 0.8836}
0.0007 146.0 4672 1.4335 {'f1': 0.84796573875803} {'accuracy': 0.858}
0.0007 147.0 4704 1.5681 {'f1': 0.8419689119170984} {'accuracy': 0.8536}
0.0007 148.0 4736 1.1316 {'f1': 0.8892367906066537} {'accuracy': 0.8868}
0.0007 149.0 4768 1.1266 {'f1': 0.8906189178668742} {'accuracy': 0.8876}
0.0007 150.0 4800 1.1379 {'f1': 0.889063729346971} {'accuracy': 0.8872}
0.0007 151.0 4832 1.1267 {'f1': 0.8905336969224776} {'accuracy': 0.8876}
0.0007 152.0 4864 1.1140 {'f1': 0.8882791062328498} {'accuracy': 0.886}
0.0007 153.0 4896 1.1807 {'f1': 0.8810679611650486} {'accuracy': 0.8824}
0.0007 154.0 4928 1.1753 {'f1': 0.8841512469831053} {'accuracy': 0.8848}
0.0007 155.0 4960 1.3370 {'f1': 0.8694929343308396} {'accuracy': 0.8744}
0.0007 156.0 4992 1.2215 {'f1': 0.8846153846153846} {'accuracy': 0.8848}
0.0042 157.0 5024 1.3197 {'f1': 0.8734593262119967} {'accuracy': 0.8768}
0.0042 158.0 5056 1.1845 {'f1': 0.8859375} {'accuracy': 0.8832}
0.0042 159.0 5088 1.1096 {'f1': 0.8882812499999999} {'accuracy': 0.8856}
0.0042 160.0 5120 1.2496 {'f1': 0.8753599341834636} {'accuracy': 0.8788}
0.0042 161.0 5152 1.1503 {'f1': 0.8868742609381159} {'accuracy': 0.8852}
0.0042 162.0 5184 1.2286 {'f1': 0.8748461222814937} {'accuracy': 0.878}
0.0042 163.0 5216 1.1418 {'f1': 0.888015717092338} {'accuracy': 0.886}
0.0042 164.0 5248 1.1096 {'f1': 0.8815344114328695} {'accuracy': 0.874}
0.0042 165.0 5280 1.2758 {'f1': 0.8567828643427131} {'accuracy': 0.8636}
0.0042 166.0 5312 1.1868 {'f1': 0.8718991459943066} {'accuracy': 0.874}
0.0042 167.0 5344 1.1437 {'f1': 0.8828685258964143} {'accuracy': 0.8824}
0.0042 168.0 5376 1.1945 {'f1': 0.8734793187347932} {'accuracy': 0.8752}
0.0042 169.0 5408 1.2188 {'f1': 0.8728606356968216} {'accuracy': 0.8752}
0.0042 170.0 5440 1.1677 {'f1': 0.8786173633440514} {'accuracy': 0.8792}
0.0042 171.0 5472 1.1273 {'f1': 0.8863366336633663} {'accuracy': 0.8852}
0.0056 172.0 5504 1.6021 {'f1': 0.8369042413642326} {'accuracy': 0.8508}
0.0056 173.0 5536 1.1175 {'f1': 0.8892355694227769} {'accuracy': 0.8864}
0.0056 174.0 5568 1.1510 {'f1': 0.8846307385229542} {'accuracy': 0.8844}
0.0056 175.0 5600 1.1517 {'f1': 0.8850758180367119} {'accuracy': 0.8848}
0.0056 176.0 5632 1.1507 {'f1': 0.8853503184713376} {'accuracy': 0.8848}
0.0056 177.0 5664 1.1483 {'f1': 0.886327503974563} {'accuracy': 0.8856}
0.0056 178.0 5696 1.1462 {'f1': 0.8873015873015873} {'accuracy': 0.8864}
0.0056 179.0 5728 1.1448 {'f1': 0.88800949742778} {'accuracy': 0.8868}
0.0056 180.0 5760 1.1447 {'f1': 0.8877470355731224} {'accuracy': 0.8864}
0.0056 181.0 5792 1.1450 {'f1': 0.8890643505724438} {'accuracy': 0.8876}
0.0056 182.0 5824 1.1452 {'f1': 0.8888012618296529} {'accuracy': 0.8872}
0.0056 183.0 5856 1.1457 {'f1': 0.8877510831035841} {'accuracy': 0.886}
0.0056 184.0 5888 1.1459 {'f1': 0.8867033831628639} {'accuracy': 0.8848}
0.0056 185.0 5920 1.1458 {'f1': 0.8886283704572098} {'accuracy': 0.886}
0.0056 186.0 5952 1.1269 {'f1': 0.8888024883359252} {'accuracy': 0.8856}
0.0056 187.0 5984 1.3035 {'f1': 0.8672199170124482} {'accuracy': 0.872}
0.002 188.0 6016 1.2137 {'f1': 0.877079107505071} {'accuracy': 0.8788}
0.002 189.0 6048 1.3514 {'f1': 0.8625472887767969} {'accuracy': 0.8692}
0.002 190.0 6080 1.2185 {'f1': 0.8781478472786353} {'accuracy': 0.88}
0.002 191.0 6112 1.1993 {'f1': 0.8806451612903226} {'accuracy': 0.8816}
0.002 192.0 6144 1.1725 {'f1': 0.8820023837902266} {'accuracy': 0.8812}
0.002 193.0 6176 1.1671 {'f1': 0.8856351404827859} {'accuracy': 0.8844}
0.002 194.0 6208 1.1685 {'f1': 0.8856351404827859} {'accuracy': 0.8844}
0.002 195.0 6240 1.1685 {'f1': 0.8852848101265822} {'accuracy': 0.884}
0.002 196.0 6272 1.1690 {'f1': 0.8849347568208779} {'accuracy': 0.8836}
0.002 197.0 6304 1.1698 {'f1': 0.8853754940711464} {'accuracy': 0.884}
0.002 198.0 6336 1.1613 {'f1': 0.8888027896164277} {'accuracy': 0.8852}
0.002 199.0 6368 1.1632 {'f1': 0.8887165568049632} {'accuracy': 0.8852}
0.002 200.0 6400 1.1649 {'f1': 0.8884570540225418} {'accuracy': 0.8852}
0.002 201.0 6432 1.1700 {'f1': 0.8881064162754304} {'accuracy': 0.8856}
0.002 202.0 6464 1.1710 {'f1': 0.8881064162754304} {'accuracy': 0.8856}
0.002 203.0 6496 1.1712 {'f1': 0.8888021849395241} {'accuracy': 0.886}
0.0007 204.0 6528 1.1717 {'f1': 0.8891481913652275} {'accuracy': 0.886}
0.0007 205.0 6560 1.1735 {'f1': 0.8898404048267808} {'accuracy': 0.8868}
0.0007 206.0 6592 1.1765 {'f1': 0.8885412592882284} {'accuracy': 0.886}
0.0007 207.0 6624 1.1632 {'f1': 0.8884585592563905} {'accuracy': 0.8848}
0.0007 208.0 6656 1.2059 {'f1': 0.8844301765650081} {'accuracy': 0.8848}
0.0007 209.0 6688 1.2399 {'f1': 0.8796108633968382} {'accuracy': 0.8812}
0.0007 210.0 6720 1.1880 {'f1': 0.886695617844453} {'accuracy': 0.8852}
0.0007 211.0 6752 1.1950 {'f1': 0.8837209302325582} {'accuracy': 0.884}
0.0007 212.0 6784 1.2185 {'f1': 0.881807180314643} {'accuracy': 0.8828}
0.0007 213.0 6816 1.1661 {'f1': 0.8890631125049} {'accuracy': 0.8868}
0.0007 214.0 6848 1.1673 {'f1': 0.8891500195848022} {'accuracy': 0.8868}
0.0007 215.0 6880 1.1680 {'f1': 0.8891500195848022} {'accuracy': 0.8868}
0.0007 216.0 6912 1.1734 {'f1': 0.888803680981595} {'accuracy': 0.884}
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0.0 440.0 14080 1.3356 {'f1': 0.8860249697946033} {'accuracy': 0.8868}
0.0 441.0 14112 1.3358 {'f1': 0.8860249697946033} {'accuracy': 0.8868}
0.0 442.0 14144 1.3361 {'f1': 0.8860249697946033} {'accuracy': 0.8868}
0.0 443.0 14176 1.3365 {'f1': 0.8860249697946033} {'accuracy': 0.8868}
0.0 444.0 14208 1.3371 {'f1': 0.8860249697946033} {'accuracy': 0.8868}
0.0 445.0 14240 1.3372 {'f1': 0.8860249697946033} {'accuracy': 0.8868}
0.0 446.0 14272 1.3370 {'f1': 0.8860249697946033} {'accuracy': 0.8868}
0.0 447.0 14304 1.3374 {'f1': 0.8860249697946033} {'accuracy': 0.8868}
0.0 448.0 14336 1.3377 {'f1': 0.8860249697946033} {'accuracy': 0.8868}
0.0 449.0 14368 1.3378 {'f1': 0.8856682769726248} {'accuracy': 0.8864}
0.0 450.0 14400 1.3389 {'f1': 0.8860249697946033} {'accuracy': 0.8868}
0.0 451.0 14432 1.3398 {'f1': 0.8860249697946033} {'accuracy': 0.8868}
0.0 452.0 14464 1.3398 {'f1': 0.8853118712273642} {'accuracy': 0.886}
0.0 453.0 14496 1.4733 {'f1': 0.8717948717948717} {'accuracy': 0.876}
0.0 454.0 14528 1.2690 {'f1': 0.8940809968847352} {'accuracy': 0.8912}
0.0 455.0 14560 1.2784 {'f1': 0.8932562620423893} {'accuracy': 0.8892}
0.0 456.0 14592 1.2703 {'f1': 0.8930669800235017} {'accuracy': 0.8908}
0.0 457.0 14624 1.2847 {'f1': 0.8900316455696203} {'accuracy': 0.8888}
0.0 458.0 14656 1.2967 {'f1': 0.8888888888888887} {'accuracy': 0.888}
0.0 459.0 14688 1.3012 {'f1': 0.8883591577274532} {'accuracy': 0.8876}
0.0 460.0 14720 1.3181 {'f1': 0.8892443022790882} {'accuracy': 0.8892}
0.0 461.0 14752 1.3198 {'f1': 0.8883553421368547} {'accuracy': 0.8884}
0.0 462.0 14784 1.3201 {'f1': 0.8883553421368547} {'accuracy': 0.8884}
0.0 463.0 14816 1.3203 {'f1': 0.8883553421368547} {'accuracy': 0.8884}
0.0 464.0 14848 1.3205 {'f1': 0.8883553421368547} {'accuracy': 0.8884}
0.0 465.0 14880 1.3196 {'f1': 0.8888888888888888} {'accuracy': 0.8888}
0.0 466.0 14912 1.3196 {'f1': 0.8885337594886136} {'accuracy': 0.8884}
0.0 467.0 14944 1.3198 {'f1': 0.8885337594886136} {'accuracy': 0.8884}
0.0 468.0 14976 1.3201 {'f1': 0.8885337594886136} {'accuracy': 0.8884}
0.0007 469.0 15008 1.3204 {'f1': 0.8885337594886136} {'accuracy': 0.8884}
0.0007 470.0 15040 1.3205 {'f1': 0.8885337594886136} {'accuracy': 0.8884}
0.0007 471.0 15072 1.3207 {'f1': 0.8885337594886136} {'accuracy': 0.8884}
0.0007 472.0 15104 1.3209 {'f1': 0.8885337594886136} {'accuracy': 0.8884}
0.0007 473.0 15136 1.3210 {'f1': 0.8885337594886136} {'accuracy': 0.8884}
0.0007 474.0 15168 1.3212 {'f1': 0.8885337594886136} {'accuracy': 0.8884}
0.0007 475.0 15200 1.3214 {'f1': 0.8885337594886136} {'accuracy': 0.8884}
0.0007 476.0 15232 1.3215 {'f1': 0.8885337594886136} {'accuracy': 0.8884}
0.0007 477.0 15264 1.3217 {'f1': 0.8885337594886136} {'accuracy': 0.8884}
0.0007 478.0 15296 1.3219 {'f1': 0.8885337594886136} {'accuracy': 0.8884}
0.0007 479.0 15328 1.3220 {'f1': 0.8885337594886136} {'accuracy': 0.8884}
0.0007 480.0 15360 1.3222 {'f1': 0.8885337594886136} {'accuracy': 0.8884}
0.0007 481.0 15392 1.3221 {'f1': 0.8878243512974051} {'accuracy': 0.8876}
0.0007 482.0 15424 1.3221 {'f1': 0.888268156424581} {'accuracy': 0.888}
0.0007 483.0 15456 1.3223 {'f1': 0.888268156424581} {'accuracy': 0.888}
0.0007 484.0 15488 1.3224 {'f1': 0.888268156424581} {'accuracy': 0.888}
0.0 485.0 15520 1.3226 {'f1': 0.888268156424581} {'accuracy': 0.888}
0.0 486.0 15552 1.3227 {'f1': 0.888268156424581} {'accuracy': 0.888}
0.0 487.0 15584 1.3228 {'f1': 0.888268156424581} {'accuracy': 0.888}
0.0 488.0 15616 1.3230 {'f1': 0.888268156424581} {'accuracy': 0.888}
0.0 489.0 15648 1.3231 {'f1': 0.888268156424581} {'accuracy': 0.888}
0.0 490.0 15680 1.3232 {'f1': 0.888268156424581} {'accuracy': 0.888}
0.0 491.0 15712 1.3233 {'f1': 0.888268156424581} {'accuracy': 0.888}
0.0 492.0 15744 1.3233 {'f1': 0.888268156424581} {'accuracy': 0.888}
0.0 493.0 15776 1.3234 {'f1': 0.888268156424581} {'accuracy': 0.888}
0.0 494.0 15808 1.3235 {'f1': 0.888268156424581} {'accuracy': 0.888}
0.0 495.0 15840 1.3235 {'f1': 0.888268156424581} {'accuracy': 0.888}
0.0 496.0 15872 1.3236 {'f1': 0.888268156424581} {'accuracy': 0.888}
0.0 497.0 15904 1.3240 {'f1': 0.8878243512974051} {'accuracy': 0.8876}
0.0 498.0 15936 1.3242 {'f1': 0.8878243512974051} {'accuracy': 0.8876}
0.0 499.0 15968 1.3242 {'f1': 0.8878243512974051} {'accuracy': 0.8876}
0.0 500.0 16000 1.3242 {'f1': 0.8878243512974051} {'accuracy': 0.8876}

Framework versions

  • Transformers 4.29.2
  • Pytorch 2.0.1+cu117
  • Datasets 2.12.0
  • Tokenizers 0.13.3
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