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This model is a fine-tuned version of allenai/led-base-16384 on the SGH news articles and summaries dataset. It achieves the following results on the evaluation set:

  • Loss: 1.9680
  • Rouge1 Precision: 0.4404
  • Rouge1 Recall: 0.5874
  • Rouge1 Fmeasure: 0.4653
  • Rouge2 Precision: 0.2673
  • Rouge2 Recall: 0.3871
  • Rouge2 Fmeasure: 0.2897
  • Rougel Precision: 0.3059
  • Rougel Recall: 0.4418
  • Rougel Fmeasure: 0.3308
  • Rougelsum Precision: 0.3059
  • Rougelsum Recall: 0.4418
  • Rougelsum Fmeasure: 0.3308

Model description

This model was created to generate summaries of news articles.

Intended uses & limitations

The model takes up to maximum article length of 3072 tokens and generates a summary of maximum length of 512 tokens, and minimum length of 100 tokens.

Training and evaluation data

This model was trained on 100+ articles and summaries from SGH.

Training hyperparameters

The following hyperparameters were used during training:

  • learning_rate: 5e-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
  • num_epochs: 10
  • mixed_precision_training: Native AMP

Training results

Training Loss Epoch Step Validation Loss Rouge1 Precision Rouge1 Recall Rouge1 Fmeasure Rouge2 Precision Rouge2 Recall Rouge2 Fmeasure Rougel Precision Rougel Recall Rougel Fmeasure Rougelsum Precision Rougelsum Recall Rougelsum Fmeasure
1.4834 0.43 10 1.7001 0.2304 0.6761 0.3152 0.1326 0.4034 0.1797 0.1495 0.4624 0.2069 0.1495 0.4624 0.2069
1.5011 0.87 20 1.6051 0.4301 0.5372 0.4087 0.2481 0.3439 0.245 0.2878 0.3928 0.2834 0.2878 0.3928 0.2834
0.9289 1.3 30 1.5501 0.431 0.597 0.4364 0.2653 0.393 0.2736 0.3007 0.4233 0.3037 0.3007 0.4233 0.3037
1.0895 1.74 40 1.5969 0.4661 0.5481 0.4486 0.2736 0.3439 0.2689 0.3318 0.4045 0.3221 0.3318 0.4045 0.3221
0.7785 2.17 50 1.5875 0.4527 0.5405 0.4209 0.2942 0.3634 0.272 0.3268 0.4047 0.3042 0.3268 0.4047 0.3042
0.635 2.61 60 1.6081 0.4142 0.5649 0.4172 0.242 0.3659 0.2549 0.2787 0.4156 0.2909 0.2787 0.4156 0.2909
0.514 3.04 70 1.6150 0.4431 0.5665 0.4569 0.2656 0.3754 0.2853 0.3252 0.441 0.3434 0.3252 0.441 0.3434
0.5617 3.48 80 1.6447 0.3956 0.6304 0.451 0.2353 0.425 0.2776 0.2883 0.4904 0.3332 0.2883 0.4904 0.3332
0.396 3.91 90 1.7423 0.4276 0.609 0.4506 0.2657 0.4142 0.2858 0.3091 0.4677 0.3316 0.3091 0.4677 0.3316
0.3427 4.35 100 1.7572 0.3877 0.5633 0.4169 0.216 0.3635 0.2468 0.2706 0.4314 0.3018 0.2706 0.4314 0.3018
0.3059 4.78 110 1.7705 0.4255 0.5524 0.4429 0.2495 0.3488 0.2671 0.3184 0.4275 0.3358 0.3184 0.4275 0.3358
0.2083 5.22 120 1.7840 0.4533 0.5896 0.4655 0.284 0.4142 0.308 0.3164 0.4442 0.3376 0.3164 0.4442 0.3376
0.2591 5.65 130 1.8396 0.4391 0.5315 0.4209 0.2768 0.3661 0.2707 0.3194 0.4124 0.3111 0.3194 0.4124 0.3111
0.2609 6.09 140 1.8220 0.4425 0.5712 0.4465 0.2642 0.3738 0.2727 0.3093 0.4349 0.3208 0.3093 0.4349 0.3208
0.1696 6.52 150 1.8916 0.475 0.5557 0.4686 0.2959 0.3783 0.3019 0.3409 0.4268 0.3442 0.3409 0.4268 0.3442
0.2683 6.96 160 1.8957 0.445 0.5918 0.4748 0.285 0.4021 0.3075 0.3249 0.4551 0.3522 0.3249 0.4551 0.3522
0.1259 7.39 170 1.9371 0.4473 0.5368 0.4664 0.2608 0.3355 0.282 0.3276 0.4071 0.3492 0.3276 0.4071 0.3492
0.1919 7.83 180 1.9521 0.4026 0.5528 0.438 0.2362 0.3427 0.2604 0.2751 0.3957 0.3042 0.2751 0.3957 0.3042
0.1279 8.26 190 1.9398 0.413 0.6053 0.4575 0.2511 0.403 0.2881 0.2662 0.4195 0.3027 0.2662 0.4195 0.3027
0.1176 8.7 200 1.9556 0.4363 0.565 0.4492 0.2591 0.3727 0.2806 0.3107 0.428 0.3289 0.3107 0.428 0.3289
0.1299 9.13 210 1.9642 0.4385 0.5728 0.4587 0.2687 0.3744 0.2888 0.3212 0.436 0.3404 0.3212 0.436 0.3404
0.1303 9.57 220 1.9649 0.43 0.5648 0.439 0.2605 0.3624 0.2691 0.2958 0.4135 0.3067 0.2958 0.4135 0.3067
0.1129 10.0 230 1.9680 0.4404 0.5874 0.4653 0.2673 0.3871 0.2897 0.3059 0.4418 0.3308 0.3059 0.4418 0.3308

Framework versions

  • Transformers 4.21.3
  • Pytorch 1.12.1+cu113
  • Datasets 1.2.1
  • Tokenizers 0.12.1
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