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mt5-base-finetuned-novel-chinese-to-spanish

This model is a fine-tuned version of quickman/mt5-base-finetuned-chinese-to-spanish-finetuned-chinese-to-spanish on the None dataset. It achieves the following results on the evaluation set:

  • Loss: 1.3193
  • Score: 0.0000
  • Counts: [545, 246, 135, 80]
  • Totals: [777, 713, 649, 585]
  • Precisions: [70.14157014157014, 34.50210378681627, 20.801232665639446, 13.675213675213675]
  • Bp: 0.0000
  • Sys Len: 777
  • Ref Len: 17012
  • Bleu: 0.0000
  • Gen Len: 19.0

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: 4
  • eval_batch_size: 4
  • seed: 42
  • optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
  • lr_scheduler_type: linear
  • lr_scheduler_warmup_steps: 40
  • training_steps: 10000

Training results

Training Loss Epoch Step Validation Loss Score Counts Totals Precisions Bp Sys Len Ref Len Bleu Gen Len
2.7861 0.6 500 1.9548 0.0000 [465, 147, 51, 23] [754, 690, 626, 562] [61.6710875331565, 21.304347826086957, 8.146964856230031, 4.092526690391459] 0.0000 754 17012 0.0000 19.0
2.5103 1.19 1000 1.7626 0.0000 [491, 174, 62, 24] [770, 706, 642, 578] [63.76623376623377, 24.64589235127479, 9.657320872274143, 4.1522491349480966] 0.0000 770 17012 0.0000 19.0
2.3148 1.79 1500 1.6428 0.0000 [499, 181, 73, 35] [781, 717, 653, 589] [63.892445582586426, 25.24407252440725, 11.179173047473201, 5.942275042444821] 0.0000 781 17012 0.0000 19.0
2.17 2.39 2000 1.5580 0.0000 [524, 201, 90, 44] [784, 720, 656, 592] [66.83673469387755, 27.916666666666668, 13.71951219512195, 7.4324324324324325] 0.0000 784 17012 0.0000 19.0
2.0889 2.99 2500 1.5197 0.0000 [529, 214, 102, 55] [781, 717, 653, 589] [67.73367477592829, 29.846582984658298, 15.620214395099541, 9.33786078098472] 0.0000 781 17012 0.0000 19.0
2.009 3.58 3000 1.4945 0.0000 [527, 217, 103, 59] [789, 725, 661, 597] [66.7934093789607, 29.93103448275862, 15.582450832072617, 9.882747068676716] 0.0000 789 17012 0.0000 19.0
1.9494 4.18 3500 1.4647 0.0000 [518, 214, 105, 60] [774, 710, 646, 582] [66.9250645994832, 30.140845070422536, 16.25386996904025, 10.309278350515465] 0.0000 774 17012 0.0000 19.0
1.9289 4.78 4000 1.4282 0.0000 [539, 234, 116, 66] [781, 717, 653, 589] [69.01408450704226, 32.63598326359833, 17.76416539050536, 11.205432937181664] 0.0000 781 17012 0.0000 19.0
1.8661 5.38 4500 1.4049 0.0000 [520, 217, 117, 74] [763, 699, 635, 571] [68.15203145478375, 31.044349070100143, 18.4251968503937, 12.959719789842381] 0.0000 763 17012 0.0000 19.0
1.8417 5.97 5000 1.3815 0.0000 [536, 235, 119, 71] [774, 710, 646, 582] [69.25064599483204, 33.098591549295776, 18.42105263157895, 12.199312714776632] 0.0000 774 17012 0.0000 19.0
1.8094 6.57 5500 1.3651 0.0000 [528, 226, 117, 68] [765, 701, 637, 573] [69.01960784313725, 32.23965763195435, 18.367346938775512, 11.8673647469459] 0.0000 765 17012 0.0000 19.0
1.811 7.17 6000 1.3629 0.0000 [526, 225, 119, 69] [768, 704, 640, 576] [68.48958333333333, 31.960227272727273, 18.59375, 11.979166666666666] 0.0000 768 17012 0.0000 19.0
1.7635 7.77 6500 1.3451 0.0000 [529, 230, 124, 72] [765, 701, 637, 573] [69.15032679738562, 32.810271041369475, 19.46624803767661, 12.565445026178011] 0.0000 765 17012 0.0000 19.0
1.7782 8.36 7000 1.3376 0.0000 [530, 240, 132, 79] [771, 707, 643, 579] [68.74189364461738, 33.946251768033946, 20.52877138413686, 13.644214162348877] 0.0000 771 17012 0.0000 19.0
1.7528 8.96 7500 1.3305 0.0000 [543, 242, 129, 78] [779, 715, 651, 587] [69.70474967907573, 33.84615384615385, 19.81566820276498, 13.287904599659285] 0.0000 779 17012 0.0000 19.0
1.7365 9.56 8000 1.3273 0.0000 [532, 232, 123, 73] [770, 706, 642, 578] [69.0909090909091, 32.861189801699716, 19.1588785046729, 12.629757785467127] 0.0000 770 17012 0.0000 19.0
1.7212 10.16 8500 1.3247 0.0000 [544, 245, 136, 80] [777, 713, 649, 585] [70.01287001287001, 34.36185133239832, 20.955315870570107, 13.675213675213675] 0.0000 777 17012 0.0000 19.0
1.7027 10.75 9000 1.3229 0.0000 [548, 244, 131, 77] [776, 712, 648, 584] [70.61855670103093, 34.26966292134831, 20.21604938271605, 13.184931506849315] 0.0000 776 17012 0.0000 19.0
1.702 11.35 9500 1.3198 0.0000 [544, 247, 137, 82] [774, 710, 646, 582] [70.2842377260982, 34.7887323943662, 21.207430340557277, 14.0893470790378] 0.0000 774 17012 0.0000 19.0
1.7258 11.95 10000 1.3193 0.0000 [545, 246, 135, 80] [777, 713, 649, 585] [70.14157014157014, 34.50210378681627, 20.801232665639446, 13.675213675213675] 0.0000 777 17012 0.0000 19.0

Framework versions

  • Transformers 4.28.1
  • Pytorch 2.0.0+cu118
  • Datasets 2.11.0
  • Tokenizers 0.13.3
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