bert-base-uncased-test_2_1000

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: 1.4610
  • F1: {'f1': 0.8997668997668997}
  • Accuracy: {'accuracy': 0.8968}

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 63 0.6391 {'f1': 0.6503930492345883} {'accuracy': 0.662}
No log 2.0 126 0.4130 {'f1': 0.8169452001554606} {'accuracy': 0.8116}
No log 3.0 189 0.3583 {'f1': 0.8627889634601043} {'accuracy': 0.8528}
No log 4.0 252 0.3703 {'f1': 0.8339869281045752} {'accuracy': 0.8476}
No log 5.0 315 0.3199 {'f1': 0.8757812500000001} {'accuracy': 0.8728}
No log 6.0 378 0.3347 {'f1': 0.8809710258418166} {'accuracy': 0.8784}
No log 7.0 441 0.3409 {'f1': 0.8823993685872139} {'accuracy': 0.8808}
0.3461 8.0 504 0.3439 {'f1': 0.8810572687224669} {'accuracy': 0.8812}
0.3461 9.0 567 0.3696 {'f1': 0.8848106208512301} {'accuracy': 0.882}
0.3461 10.0 630 0.3782 {'f1': 0.8891537544696066} {'accuracy': 0.8884}
0.3461 11.0 693 0.4324 {'f1': 0.8825448613376835} {'accuracy': 0.8848}
0.3461 12.0 756 0.4460 {'f1': 0.8929276965626235} {'accuracy': 0.8916}
0.3461 13.0 819 0.4796 {'f1': 0.8898678414096918} {'accuracy': 0.89}
0.3461 14.0 882 0.4878 {'f1': 0.8905630452022205} {'accuracy': 0.8896}
0.3461 15.0 945 0.5118 {'f1': 0.8919888401753687} {'accuracy': 0.8916}
0.1074 16.0 1008 0.5677 {'f1': 0.8877975066112579} {'accuracy': 0.8812}
0.1074 17.0 1071 0.5654 {'f1': 0.8932270916334661} {'accuracy': 0.8928}
0.1074 18.0 1134 0.6581 {'f1': 0.8865671641791045} {'accuracy': 0.8784}
0.1074 19.0 1197 0.6107 {'f1': 0.8948194662480377} {'accuracy': 0.8928}
0.1074 20.0 1260 0.7440 {'f1': 0.8747913188647746} {'accuracy': 0.88}
0.1074 21.0 1323 0.6414 {'f1': 0.8981662114709325} {'accuracy': 0.8956}
0.1074 22.0 1386 0.7005 {'f1': 0.8905168905168905} {'accuracy': 0.8924}
0.1074 23.0 1449 0.6756 {'f1': 0.8960490985807441} {'accuracy': 0.8916}
0.0366 24.0 1512 0.6751 {'f1': 0.8974854932301741} {'accuracy': 0.894}
0.0366 25.0 1575 0.6686 {'f1': 0.9018691588785047} {'accuracy': 0.8992}
0.0366 26.0 1638 0.7207 {'f1': 0.8952234206471495} {'accuracy': 0.8912}
0.0366 27.0 1701 0.7898 {'f1': 0.8830313014827018} {'accuracy': 0.8864}
0.0366 28.0 1764 0.7543 {'f1': 0.8958083832335328} {'accuracy': 0.8956}
0.0366 29.0 1827 0.8158 {'f1': 0.8938759984785091} {'accuracy': 0.8884}
0.0366 30.0 1890 0.7586 {'f1': 0.8958818958818958} {'accuracy': 0.8928}
0.0366 31.0 1953 0.7801 {'f1': 0.8900398406374502} {'accuracy': 0.8896}
0.0163 32.0 2016 0.8027 {'f1': 0.8953674121405752} {'accuracy': 0.8952}
0.0163 33.0 2079 0.8411 {'f1': 0.8894817073170732} {'accuracy': 0.884}
0.0163 34.0 2142 0.8420 {'f1': 0.8962300816167897} {'accuracy': 0.8932}
0.0163 35.0 2205 0.8386 {'f1': 0.899607843137255} {'accuracy': 0.8976}
0.0163 36.0 2268 0.8562 {'f1': 0.8937373737373737} {'accuracy': 0.8948}
0.0163 37.0 2331 0.8530 {'f1': 0.8959491660047657} {'accuracy': 0.8952}
0.0163 38.0 2394 0.9108 {'f1': 0.8944381384790012} {'accuracy': 0.8884}
0.0163 39.0 2457 0.8615 {'f1': 0.8949663099484741} {'accuracy': 0.894}
0.0049 40.0 2520 0.9041 {'f1': 0.8956022944550669} {'accuracy': 0.8908}
0.0049 41.0 2583 0.8908 {'f1': 0.895615056266977} {'accuracy': 0.8924}
0.0049 42.0 2646 0.9507 {'f1': 0.8858895705521472} {'accuracy': 0.8884}
0.0049 43.0 2709 0.9089 {'f1': 0.89921875} {'accuracy': 0.8968}
0.0049 44.0 2772 0.9126 {'f1': 0.8977361436377831} {'accuracy': 0.8952}
0.0049 45.0 2835 0.9296 {'f1': 0.8942695722356738} {'accuracy': 0.8952}
0.0049 46.0 2898 0.9613 {'f1': 0.894736842105263} {'accuracy': 0.8896}
0.0049 47.0 2961 0.9581 {'f1': 0.8968713789107763} {'accuracy': 0.8932}
0.0028 48.0 3024 0.9723 {'f1': 0.8982318271119842} {'accuracy': 0.8964}
0.0028 49.0 3087 0.9448 {'f1': 0.8972254787026182} {'accuracy': 0.8948}
0.0028 50.0 3150 0.9594 {'f1': 0.8954758190327613} {'accuracy': 0.8928}
0.0028 51.0 3213 0.9644 {'f1': 0.8925956061838893} {'accuracy': 0.8944}
0.0028 52.0 3276 1.0120 {'f1': 0.8933893771494076} {'accuracy': 0.8884}
0.0028 53.0 3339 1.0214 {'f1': 0.8908117016893284} {'accuracy': 0.894}
0.0028 54.0 3402 0.9771 {'f1': 0.8966588966588968} {'accuracy': 0.8936}
0.0028 55.0 3465 0.9867 {'f1': 0.8975180144115293} {'accuracy': 0.8976}
0.0106 56.0 3528 1.0040 {'f1': 0.8982371794871795} {'accuracy': 0.8984}
0.0106 57.0 3591 0.9824 {'f1': 0.8942006269592476} {'accuracy': 0.892}
0.0106 58.0 3654 1.0175 {'f1': 0.8932190179267343} {'accuracy': 0.8904}
0.0106 59.0 3717 0.9887 {'f1': 0.8977361436377831} {'accuracy': 0.8952}
0.0106 60.0 3780 1.2662 {'f1': 0.8786885245901639} {'accuracy': 0.8668}
0.0106 61.0 3843 1.0422 {'f1': 0.8906882591093117} {'accuracy': 0.892}
0.0106 62.0 3906 1.0669 {'f1': 0.8898208158597025} {'accuracy': 0.8844}
0.0106 63.0 3969 1.0097 {'f1': 0.8998482549317147} {'accuracy': 0.8944}
0.0135 64.0 4032 0.9358 {'f1': 0.8980224893369523} {'accuracy': 0.8948}
0.0135 65.0 4095 0.9722 {'f1': 0.9009287925696595} {'accuracy': 0.8976}
0.0135 66.0 4158 1.0900 {'f1': 0.8904672897196262} {'accuracy': 0.8828}
0.0135 67.0 4221 1.1846 {'f1': 0.8727735368956743} {'accuracy': 0.88}
0.0135 68.0 4284 1.0357 {'f1': 0.8887077048512027} {'accuracy': 0.8908}
0.0135 69.0 4347 1.1368 {'f1': 0.8869113830181683} {'accuracy': 0.878}
0.0135 70.0 4410 0.9984 {'f1': 0.8957836117740653} {'accuracy': 0.8952}
0.0135 71.0 4473 1.0332 {'f1': 0.8924302788844621} {'accuracy': 0.892}
0.0049 72.0 4536 1.0703 {'f1': 0.8883809523809523} {'accuracy': 0.8828}
0.0049 73.0 4599 1.1153 {'f1': 0.8913125235050771} {'accuracy': 0.8844}
0.0049 74.0 4662 1.0695 {'f1': 0.8971820258948972} {'accuracy': 0.892}
0.0049 75.0 4725 1.0327 {'f1': 0.8959875340864822} {'accuracy': 0.8932}
0.0049 76.0 4788 1.0359 {'f1': 0.8995327102803738} {'accuracy': 0.8968}
0.0049 77.0 4851 1.1397 {'f1': 0.8919330289193302} {'accuracy': 0.8864}
0.0049 78.0 4914 1.0799 {'f1': 0.8905453118870146} {'accuracy': 0.8884}
0.0049 79.0 4977 1.1109 {'f1': 0.8918918918918918} {'accuracy': 0.888}
0.0045 80.0 5040 1.1067 {'f1': 0.8906851424172441} {'accuracy': 0.8864}
0.0045 81.0 5103 1.0877 {'f1': 0.8940055577610163} {'accuracy': 0.8932}
0.0045 82.0 5166 1.1170 {'f1': 0.8876221498371335} {'accuracy': 0.8896}
0.0045 83.0 5229 1.1236 {'f1': 0.8926940639269406} {'accuracy': 0.8872}
0.0045 84.0 5292 1.0894 {'f1': 0.892651019622932} {'accuracy': 0.8884}
0.0045 85.0 5355 1.0890 {'f1': 0.8936825885978429} {'accuracy': 0.8896}
0.0045 86.0 5418 1.0614 {'f1': 0.8964974419519874} {'accuracy': 0.8948}
0.0045 87.0 5481 1.1658 {'f1': 0.8847583643122676} {'accuracy': 0.8884}
0.0025 88.0 5544 1.1107 {'f1': 0.8904333605887164} {'accuracy': 0.8928}
0.0025 89.0 5607 1.1438 {'f1': 0.8873771730914589} {'accuracy': 0.8808}
0.0025 90.0 5670 0.9925 {'f1': 0.8984251968503937} {'accuracy': 0.8968}
0.0025 91.0 5733 0.9887 {'f1': 0.8971098265895954} {'accuracy': 0.8932}
0.0025 92.0 5796 1.0241 {'f1': 0.8888888888888887} {'accuracy': 0.888}
0.0025 93.0 5859 1.2746 {'f1': 0.8829160530191459} {'accuracy': 0.8728}
0.0025 94.0 5922 1.0502 {'f1': 0.8964686998394863} {'accuracy': 0.8968}
0.0025 95.0 5985 1.1087 {'f1': 0.8886148787505137} {'accuracy': 0.8916}
0.0084 96.0 6048 1.2064 {'f1': 0.885273258239466} {'accuracy': 0.89}
0.0084 97.0 6111 1.0969 {'f1': 0.8986852281515855} {'accuracy': 0.8952}
0.0084 98.0 6174 1.1267 {'f1': 0.8960739030023094} {'accuracy': 0.892}
0.0084 99.0 6237 1.1098 {'f1': 0.897625535227715} {'accuracy': 0.8948}
0.0084 100.0 6300 1.0892 {'f1': 0.8999199359487591} {'accuracy': 0.9}
0.0084 101.0 6363 1.2852 {'f1': 0.8869951834012597} {'accuracy': 0.878}
0.0084 102.0 6426 1.1348 {'f1': 0.8925869894099848} {'accuracy': 0.8864}
0.0084 103.0 6489 1.1357 {'f1': 0.8972602739726027} {'accuracy': 0.892}
0.0038 104.0 6552 1.0627 {'f1': 0.899266692396758} {'accuracy': 0.8956}
0.0038 105.0 6615 1.1244 {'f1': 0.8947566955865711} {'accuracy': 0.8884}
0.0038 106.0 6678 1.0451 {'f1': 0.9015181004281821} {'accuracy': 0.8988}
0.0038 107.0 6741 1.0424 {'f1': 0.9019914096056229} {'accuracy': 0.8996}
0.0038 108.0 6804 1.3424 {'f1': 0.8836869056327726} {'accuracy': 0.8728}
0.0038 109.0 6867 0.9600 {'f1': 0.8899876390605687} {'accuracy': 0.8932}
0.0038 110.0 6930 0.9558 {'f1': 0.8953263808420239} {'accuracy': 0.8916}
0.0038 111.0 6993 0.9831 {'f1': 0.9020230067433558} {'accuracy': 0.9012}
0.0131 112.0 7056 1.0165 {'f1': 0.8948995363214837} {'accuracy': 0.8912}
0.0131 113.0 7119 1.0627 {'f1': 0.8917925683952633} {'accuracy': 0.894}
0.0131 114.0 7182 1.0546 {'f1': 0.8974854932301741} {'accuracy': 0.894}
0.0131 115.0 7245 1.0036 {'f1': 0.9014195583596215} {'accuracy': 0.9}
0.0131 116.0 7308 1.0108 {'f1': 0.8992609879424348} {'accuracy': 0.8964}
0.0131 117.0 7371 1.0130 {'f1': 0.8993392926544889} {'accuracy': 0.8964}
0.0131 118.0 7434 1.0153 {'f1': 0.9045383411580593} {'accuracy': 0.9024}
0.0131 119.0 7497 0.9937 {'f1': 0.9042386185243328} {'accuracy': 0.9024}
0.0019 120.0 7560 1.0257 {'f1': 0.8997310795236265} {'accuracy': 0.8956}
0.0019 121.0 7623 1.0452 {'f1': 0.9006163328197226} {'accuracy': 0.8968}
0.0019 122.0 7686 1.0803 {'f1': 0.8987390141383262} {'accuracy': 0.894}
0.0019 123.0 7749 1.0830 {'f1': 0.8982402448355011} {'accuracy': 0.8936}
0.0019 124.0 7812 1.0769 {'f1': 0.8994627782041443} {'accuracy': 0.8952}
0.0019 125.0 7875 1.0732 {'f1': 0.9004994237418363} {'accuracy': 0.8964}
0.0019 126.0 7938 1.0907 {'f1': 0.897709923664122} {'accuracy': 0.8928}
0.0015 127.0 8001 1.0586 {'f1': 0.9000385951370128} {'accuracy': 0.8964}
0.0015 128.0 8064 1.1171 {'f1': 0.8921689216892169} {'accuracy': 0.8948}
0.0015 129.0 8127 1.0571 {'f1': 0.8964127367996775} {'accuracy': 0.8972}
0.0015 130.0 8190 1.1986 {'f1': 0.8960546282245827} {'accuracy': 0.8904}
0.0015 131.0 8253 1.7163 {'f1': 0.8677361853832442} {'accuracy': 0.8516}
0.0015 132.0 8316 1.1918 {'f1': 0.8963929393706831} {'accuracy': 0.892}
0.0015 133.0 8379 1.1048 {'f1': 0.8983050847457626} {'accuracy': 0.8992}
0.0015 134.0 8442 1.2585 {'f1': 0.8794926004228331} {'accuracy': 0.886}
0.0054 135.0 8505 1.1483 {'f1': 0.8942229454841335} {'accuracy': 0.896}
0.0054 136.0 8568 1.1223 {'f1': 0.8962558502340094} {'accuracy': 0.8936}
0.0054 137.0 8631 1.1952 {'f1': 0.899236641221374} {'accuracy': 0.8944}
0.0054 138.0 8694 1.1595 {'f1': 0.9013107170393215} {'accuracy': 0.8976}
0.0054 139.0 8757 1.1580 {'f1': 0.900611620795107} {'accuracy': 0.896}
0.0054 140.0 8820 1.1509 {'f1': 0.9002302379125094} {'accuracy': 0.896}
0.0054 141.0 8883 1.1632 {'f1': 0.8997686969930608} {'accuracy': 0.896}
0.0054 142.0 8946 1.3198 {'f1': 0.8982035928143713} {'accuracy': 0.8912}
0.0068 143.0 9009 1.1653 {'f1': 0.89860535243121} {'accuracy': 0.8924}
0.0068 144.0 9072 1.1224 {'f1': 0.8996566196108357} {'accuracy': 0.8948}
0.0068 145.0 9135 1.1151 {'f1': 0.8990053557765876} {'accuracy': 0.8944}
0.0068 146.0 9198 1.1623 {'f1': 0.8887036265110463} {'accuracy': 0.8932}
0.0068 147.0 9261 1.0910 {'f1': 0.8955582232893158} {'accuracy': 0.8956}
0.0068 148.0 9324 1.0941 {'f1': 0.8952837729816147} {'accuracy': 0.8952}
0.0068 149.0 9387 1.1096 {'f1': 0.8960063266113089} {'accuracy': 0.8948}
0.0068 150.0 9450 1.1112 {'f1': 0.8960063266113089} {'accuracy': 0.8948}
0.0009 151.0 9513 1.1133 {'f1': 0.8963607594936709} {'accuracy': 0.8952}
0.0009 152.0 9576 1.1185 {'f1': 0.8973954222573007} {'accuracy': 0.896}
0.0009 153.0 9639 1.1276 {'f1': 0.8983915260886622} {'accuracy': 0.8964}
0.0009 154.0 9702 1.0736 {'f1': 0.8979753870583566} {'accuracy': 0.8972}
0.0009 155.0 9765 1.1090 {'f1': 0.8929011079195732} {'accuracy': 0.8956}
0.0009 156.0 9828 1.1977 {'f1': 0.8971036585365852} {'accuracy': 0.892}
0.0009 157.0 9891 1.1388 {'f1': 0.8963317384370016} {'accuracy': 0.896}
0.0009 158.0 9954 1.1264 {'f1': 0.8970528865563181} {'accuracy': 0.898}
0.0045 159.0 10017 1.1199 {'f1': 0.8945483485873458} {'accuracy': 0.894}
0.0045 160.0 10080 1.1508 {'f1': 0.9002759164367363} {'accuracy': 0.8988}
0.0045 161.0 10143 1.1578 {'f1': 0.9007572738142686} {'accuracy': 0.9004}
0.0045 162.0 10206 1.1629 {'f1': 0.9019762845849801} {'accuracy': 0.9008}
0.0045 163.0 10269 1.1723 {'f1': 0.901821060965954} {'accuracy': 0.9008}
0.0045 164.0 10332 1.0742 {'f1': 0.8987885892926926} {'accuracy': 0.8964}
0.0045 165.0 10395 1.0640 {'f1': 0.8964159117762899} {'accuracy': 0.8948}
0.0045 166.0 10458 1.0580 {'f1': 0.8969601263324122} {'accuracy': 0.8956}
0.0039 167.0 10521 1.0604 {'f1': 0.8972332015810278} {'accuracy': 0.896}
0.0039 168.0 10584 1.0631 {'f1': 0.8973954222573007} {'accuracy': 0.896}
0.0039 169.0 10647 1.1243 {'f1': 0.8875205254515598} {'accuracy': 0.8904}
0.0039 170.0 10710 1.1319 {'f1': 0.8882521489971348} {'accuracy': 0.8908}
0.0039 171.0 10773 1.0792 {'f1': 0.8981191222570533} {'accuracy': 0.896}
0.0039 172.0 10836 1.0852 {'f1': 0.9002338269680438} {'accuracy': 0.8976}
0.0039 173.0 10899 1.1632 {'f1': 0.9000757002271007} {'accuracy': 0.8944}
0.0039 174.0 10962 1.1744 {'f1': 0.8983505945531262} {'accuracy': 0.894}
0.0002 175.0 11025 1.3889 {'f1': 0.8917716827279467} {'accuracy': 0.8832}
0.0002 176.0 11088 1.3635 {'f1': 0.8935532233883059} {'accuracy': 0.8864}
0.0002 177.0 11151 1.3682 {'f1': 0.8956228956228955} {'accuracy': 0.8884}
0.0002 178.0 11214 1.2081 {'f1': 0.9003544702638834} {'accuracy': 0.8988}
0.0002 179.0 11277 1.2294 {'f1': 0.8994875837603469} {'accuracy': 0.898}
0.0002 180.0 11340 1.2316 {'f1': 0.8994875837603469} {'accuracy': 0.898}
0.0002 181.0 11403 1.2324 {'f1': 0.8994875837603469} {'accuracy': 0.898}
0.0002 182.0 11466 1.2332 {'f1': 0.8994875837603469} {'accuracy': 0.898}
0.0015 183.0 11529 1.2340 {'f1': 0.8994875837603469} {'accuracy': 0.898}
0.0015 184.0 11592 1.2357 {'f1': 0.8999211977935383} {'accuracy': 0.8984}
0.0015 185.0 11655 1.2370 {'f1': 0.9003544702638834} {'accuracy': 0.8988}
0.0015 186.0 11718 1.2666 {'f1': 0.8931726907630522} {'accuracy': 0.8936}
0.0015 187.0 11781 1.2672 {'f1': 0.8959491660047657} {'accuracy': 0.8952}
0.0015 188.0 11844 1.2682 {'f1': 0.8963874553394204} {'accuracy': 0.8956}
0.0015 189.0 11907 1.1723 {'f1': 0.8959421454399357} {'accuracy': 0.8964}
0.0015 190.0 11970 1.2214 {'f1': 0.8963946869070208} {'accuracy': 0.8908}
0.0043 191.0 12033 1.1003 {'f1': 0.8984615384615385} {'accuracy': 0.8944}
0.0043 192.0 12096 1.0745 {'f1': 0.8937178980640064} {'accuracy': 0.8924}
0.0043 193.0 12159 1.0819 {'f1': 0.8964974419519874} {'accuracy': 0.8948}
0.0043 194.0 12222 1.0904 {'f1': 0.8968503937007873} {'accuracy': 0.8952}
0.0043 195.0 12285 1.1178 {'f1': 0.892614770459082} {'accuracy': 0.8924}
0.0043 196.0 12348 1.3307 {'f1': 0.8752660706683695} {'accuracy': 0.8828}
0.0043 197.0 12411 1.3117 {'f1': 0.8855472013366751} {'accuracy': 0.8904}
0.0043 198.0 12474 1.1898 {'f1': 0.8973266175900814} {'accuracy': 0.894}
0.0018 199.0 12537 1.1903 {'f1': 0.8983708301008533} {'accuracy': 0.8952}
0.0018 200.0 12600 1.1929 {'f1': 0.8983708301008533} {'accuracy': 0.8952}
0.0018 201.0 12663 1.1919 {'f1': 0.8989898989898989} {'accuracy': 0.896}
0.0018 202.0 12726 1.1917 {'f1': 0.9000388953714509} {'accuracy': 0.8972}
0.0018 203.0 12789 1.1926 {'f1': 0.9000388953714509} {'accuracy': 0.8972}
0.0018 204.0 12852 1.3649 {'f1': 0.8779045204900717} {'accuracy': 0.8844}
0.0018 205.0 12915 1.1918 {'f1': 0.8979433449747769} {'accuracy': 0.8948}
0.0018 206.0 12978 1.1844 {'f1': 0.9003921568627452} {'accuracy': 0.8984}
0.0019 207.0 13041 1.2005 {'f1': 0.905464698843239} {'accuracy': 0.9052}
0.0019 208.0 13104 1.0869 {'f1': 0.8976951071572988} {'accuracy': 0.8988}
0.0019 209.0 13167 1.0949 {'f1': 0.9026754556029468} {'accuracy': 0.8996}
0.0019 210.0 13230 1.3787 {'f1': 0.8722768047842803} {'accuracy': 0.8804}
0.0019 211.0 13293 1.2834 {'f1': 0.895317853064332} {'accuracy': 0.89}
0.0019 212.0 13356 1.2741 {'f1': 0.8972890416189385} {'accuracy': 0.8924}
0.0019 213.0 13419 1.0350 {'f1': 0.9022852639873916} {'accuracy': 0.9008}
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0.0 433.0 27279 1.4287 {'f1': 0.9011254019292605} {'accuracy': 0.9016}
0.0 434.0 27342 1.4161 {'f1': 0.902633679169992} {'accuracy': 0.9024}
0.0 435.0 27405 1.4081 {'f1': 0.9037787300350604} {'accuracy': 0.9012}
0.0 436.0 27468 1.4085 {'f1': 0.9037787300350604} {'accuracy': 0.9012}
0.0005 437.0 27531 1.4085 {'f1': 0.9037787300350604} {'accuracy': 0.9012}
0.0005 438.0 27594 1.4068 {'f1': 0.9029239766081871} {'accuracy': 0.9004}
0.0005 439.0 27657 1.4066 {'f1': 0.9032761310452418} {'accuracy': 0.9008}
0.0005 440.0 27720 1.4066 {'f1': 0.9032761310452418} {'accuracy': 0.9008}
0.0005 441.0 27783 1.4067 {'f1': 0.9032761310452418} {'accuracy': 0.9008}
0.0005 442.0 27846 1.4068 {'f1': 0.9032761310452418} {'accuracy': 0.9008}
0.0005 443.0 27909 1.4069 {'f1': 0.9032761310452418} {'accuracy': 0.9008}
0.0005 444.0 27972 1.4070 {'f1': 0.9032761310452418} {'accuracy': 0.9008}
0.0 445.0 28035 1.4073 {'f1': 0.9029239766081871} {'accuracy': 0.9004}
0.0 446.0 28098 1.5189 {'f1': 0.8943488943488943} {'accuracy': 0.8968}
0.0 447.0 28161 1.5200 {'f1': 0.8947152806226956} {'accuracy': 0.8972}
0.0 448.0 28224 1.5197 {'f1': 0.8947152806226956} {'accuracy': 0.8972}
0.0 449.0 28287 1.5195 {'f1': 0.8943488943488943} {'accuracy': 0.8968}
0.0 450.0 28350 1.4609 {'f1': 0.9018974566007266} {'accuracy': 0.9028}
0.0 451.0 28413 1.4473 {'f1': 0.9019292604501606} {'accuracy': 0.9024}
0.0 452.0 28476 1.4397 {'f1': 0.9014423076923077} {'accuracy': 0.9016}
0.0 453.0 28539 1.4506 {'f1': 0.9019292604501606} {'accuracy': 0.9024}
0.0 454.0 28602 1.4508 {'f1': 0.9019292604501606} {'accuracy': 0.9024}
0.0 455.0 28665 1.4507 {'f1': 0.9019292604501606} {'accuracy': 0.9024}
0.0 456.0 28728 1.4507 {'f1': 0.9019292604501606} {'accuracy': 0.9024}
0.0 457.0 28791 1.4507 {'f1': 0.9019292604501606} {'accuracy': 0.9024}
0.0 458.0 28854 1.4504 {'f1': 0.9019292604501606} {'accuracy': 0.9024}
0.0 459.0 28917 1.4496 {'f1': 0.9019292604501606} {'accuracy': 0.9024}
0.0 460.0 28980 1.4493 {'f1': 0.9019292604501606} {'accuracy': 0.9024}
0.0 461.0 29043 1.4493 {'f1': 0.9019292604501606} {'accuracy': 0.9024}
0.0 462.0 29106 1.4493 {'f1': 0.9019292604501606} {'accuracy': 0.9024}
0.0 463.0 29169 1.4808 {'f1': 0.9001156961048979} {'accuracy': 0.8964}
0.0 464.0 29232 1.4812 {'f1': 0.9001156961048979} {'accuracy': 0.8964}
0.0 465.0 29295 1.4813 {'f1': 0.9001156961048979} {'accuracy': 0.8964}
0.0 466.0 29358 1.4789 {'f1': 0.9000385951370128} {'accuracy': 0.8964}
0.0 467.0 29421 1.4788 {'f1': 0.9000385951370128} {'accuracy': 0.8964}
0.0 468.0 29484 1.4788 {'f1': 0.9000385951370128} {'accuracy': 0.8964}
0.0 469.0 29547 1.4788 {'f1': 0.9000385951370128} {'accuracy': 0.8964}
0.0 470.0 29610 1.4783 {'f1': 0.9003861003861003} {'accuracy': 0.8968}
0.0 471.0 29673 1.4783 {'f1': 0.9003861003861003} {'accuracy': 0.8968}
0.0 472.0 29736 1.4781 {'f1': 0.9003861003861003} {'accuracy': 0.8968}
0.0 473.0 29799 1.4782 {'f1': 0.9003861003861003} {'accuracy': 0.8968}
0.0 474.0 29862 1.4781 {'f1': 0.9003861003861003} {'accuracy': 0.8968}
0.0 475.0 29925 1.4781 {'f1': 0.9003861003861003} {'accuracy': 0.8968}
0.0 476.0 29988 1.4780 {'f1': 0.9003861003861003} {'accuracy': 0.8968}
0.0 477.0 30051 1.4780 {'f1': 0.9003861003861003} {'accuracy': 0.8968}
0.0 478.0 30114 1.4755 {'f1': 0.8999613750482811} {'accuracy': 0.8964}
0.0 479.0 30177 1.4747 {'f1': 0.9006571318129107} {'accuracy': 0.8972}
0.0 480.0 30240 1.4746 {'f1': 0.9006571318129107} {'accuracy': 0.8972}
0.0 481.0 30303 1.4747 {'f1': 0.9006571318129107} {'accuracy': 0.8972}
0.0 482.0 30366 1.4748 {'f1': 0.9006571318129107} {'accuracy': 0.8972}
0.0 483.0 30429 1.4750 {'f1': 0.9006571318129107} {'accuracy': 0.8972}
0.0 484.0 30492 1.4714 {'f1': 0.9005032907471932} {'accuracy': 0.8972}
0.0 485.0 30555 1.4707 {'f1': 0.900852052672347} {'accuracy': 0.8976}
0.0 486.0 30618 1.4709 {'f1': 0.900852052672347} {'accuracy': 0.8976}
0.0 487.0 30681 1.4709 {'f1': 0.900852052672347} {'accuracy': 0.8976}
0.0 488.0 30744 1.4709 {'f1': 0.900852052672347} {'accuracy': 0.8976}
0.0 489.0 30807 1.4709 {'f1': 0.900852052672347} {'accuracy': 0.8976}
0.0 490.0 30870 1.4709 {'f1': 0.900852052672347} {'accuracy': 0.8976}
0.0 491.0 30933 1.4618 {'f1': 0.8997668997668997} {'accuracy': 0.8968}
0.0 492.0 30996 1.4614 {'f1': 0.8997668997668997} {'accuracy': 0.8968}
0.0 493.0 31059 1.4614 {'f1': 0.8997668997668997} {'accuracy': 0.8968}
0.0 494.0 31122 1.4614 {'f1': 0.8997668997668997} {'accuracy': 0.8968}
0.0 495.0 31185 1.4614 {'f1': 0.8997668997668997} {'accuracy': 0.8968}
0.0 496.0 31248 1.4613 {'f1': 0.8997668997668997} {'accuracy': 0.8968}
0.0 497.0 31311 1.4613 {'f1': 0.8997668997668997} {'accuracy': 0.8968}
0.0 498.0 31374 1.4610 {'f1': 0.8997668997668997} {'accuracy': 0.8968}
0.0 499.0 31437 1.4610 {'f1': 0.8997668997668997} {'accuracy': 0.8968}
0.0 500.0 31500 1.4610 {'f1': 0.8997668997668997} {'accuracy': 0.8968}

Framework versions

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