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---
license: apache-2.0
base_model: t5-small
tags:
- generated_from_trainer
model-index:
- name: text_shortening_model_v73
  results: []
---

<!-- This model card has been generated automatically according to the information the Trainer had access to. You
should probably proofread and complete it, then remove this comment. -->

# text_shortening_model_v73

This model is a fine-tuned version of [t5-small](https://huggingface.co./t5-small) on the None dataset.
It achieves the following results on the evaluation set:
- Loss: 1.6126
- Bert precision: 0.9015
- Bert recall: 0.9014
- Bert f1-score: 0.901
- Average word count: 6.4004
- Max word count: 16
- Min word count: 2
- Average token count: 10.4705
- % shortened texts with length > 12: 1.1011

## 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: 0.0005
- train_batch_size: 64
- eval_batch_size: 64
- seed: 42
- optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
- lr_scheduler_type: linear
- num_epochs: 40

### Training results

| Training Loss | Epoch | Step | Validation Loss | Bert precision | Bert recall | Bert f1-score | Average word count | Max word count | Min word count | Average token count | % shortened texts with length > 12 |
|:-------------:|:-----:|:----:|:---------------:|:--------------:|:-----------:|:-------------:|:------------------:|:--------------:|:--------------:|:-------------------:|:----------------------------------:|
| 1.5857        | 1.0   | 37   | 1.1932          | 0.8846         | 0.8848      | 0.8842        | 6.5315             | 16             | 1              | 10.4525             | 1.7017                             |
| 1.184         | 2.0   | 74   | 1.0965          | 0.8918         | 0.8915      | 0.8911        | 6.4855             | 17             | 2              | 10.4735             | 0.5005                             |
| 1.0114        | 3.0   | 111  | 1.0773          | 0.8895         | 0.8962      | 0.8924        | 6.8959             | 18             | 2              | 10.995              | 1.3013                             |
| 0.8887        | 4.0   | 148  | 1.0798          | 0.8947         | 0.8936      | 0.8937        | 6.4454             | 17             | 2              | 10.4605             | 1.8018                             |
| 0.7851        | 5.0   | 185  | 1.0807          | 0.8941         | 0.8948      | 0.894         | 6.5676             | 16             | 2              | 10.6016             | 1.6016                             |
| 0.7116        | 6.0   | 222  | 1.1002          | 0.8984         | 0.8978      | 0.8976        | 6.4605             | 15             | 2              | 10.4174             | 1.2012                             |
| 0.6472        | 7.0   | 259  | 1.1171          | 0.8982         | 0.8997      | 0.8985        | 6.5836             | 16             | 2              | 10.6426             | 1.3013                             |
| 0.5872        | 8.0   | 296  | 1.1196          | 0.8998         | 0.9015      | 0.9002        | 6.5415             | 16             | 2              | 10.6226             | 1.5015                             |
| 0.5393        | 9.0   | 333  | 1.1739          | 0.9007         | 0.8979      | 0.8988        | 6.3333             | 16             | 2              | 10.3063             | 1.1011                             |
| 0.4879        | 10.0  | 370  | 1.2079          | 0.8997         | 0.8983      | 0.8985        | 6.3343             | 15             | 2              | 10.2913             | 1.001                              |
| 0.4615        | 11.0  | 407  | 1.2230          | 0.8988         | 0.8997      | 0.8988        | 6.5165             | 15             | 2              | 10.6426             | 1.3013                             |
| 0.4245        | 12.0  | 444  | 1.2325          | 0.8996         | 0.8979      | 0.8983        | 6.3704             | 15             | 2              | 10.4334             | 1.3013                             |
| 0.3973        | 13.0  | 481  | 1.2657          | 0.8973         | 0.8987      | 0.8975        | 6.4855             | 15             | 2              | 10.5876             | 1.6016                             |
| 0.3658        | 14.0  | 518  | 1.2875          | 0.8985         | 0.8993      | 0.8984        | 6.4735             | 15             | 2              | 10.5355             | 1.2012                             |
| 0.3422        | 15.0  | 555  | 1.3202          | 0.9002         | 0.8991      | 0.8992        | 6.2873             | 14             | 2              | 10.3594             | 1.001                              |
| 0.3271        | 16.0  | 592  | 1.3315          | 0.9006         | 0.9         | 0.8998        | 6.3784             | 15             | 2              | 10.4454             | 0.9009                             |
| 0.305         | 17.0  | 629  | 1.3441          | 0.8994         | 0.9005      | 0.8995        | 6.4705             | 16             | 2              | 10.5906             | 1.2012                             |
| 0.2847        | 18.0  | 666  | 1.3648          | 0.8997         | 0.8989      | 0.8989        | 6.3584             | 14             | 2              | 10.4244             | 0.9009                             |
| 0.2707        | 19.0  | 703  | 1.3837          | 0.9005         | 0.9011      | 0.9003        | 6.4545             | 16             | 2              | 10.5365             | 1.3013                             |
| 0.254         | 20.0  | 740  | 1.4180          | 0.8997         | 0.9006      | 0.8997        | 6.4444             | 15             | 2              | 10.5516             | 1.2012                             |
| 0.2421        | 21.0  | 777  | 1.4100          | 0.9014         | 0.903       | 0.9017        | 6.4755             | 16             | 2              | 10.6016             | 0.9009                             |
| 0.2301        | 22.0  | 814  | 1.4437          | 0.9            | 0.901       | 0.9           | 6.4825             | 15             | 2              | 10.5626             | 0.8008                             |
| 0.2183        | 23.0  | 851  | 1.4762          | 0.9003         | 0.9014      | 0.9004        | 6.4995             | 16             | 2              | 10.6116             | 1.3013                             |
| 0.2148        | 24.0  | 888  | 1.4815          | 0.9007         | 0.9014      | 0.9006        | 6.4484             | 16             | 2              | 10.5495             | 1.1011                             |
| 0.2013        | 25.0  | 925  | 1.5039          | 0.9018         | 0.9015      | 0.9012        | 6.4144             | 15             | 2              | 10.4925             | 1.001                              |
| 0.1924        | 26.0  | 962  | 1.5217          | 0.9013         | 0.9014      | 0.9009        | 6.4024             | 16             | 2              | 10.4765             | 1.2012                             |
| 0.1854        | 27.0  | 999  | 1.5125          | 0.902          | 0.9014      | 0.9012        | 6.3774             | 16             | 2              | 10.4565             | 1.1011                             |
| 0.1769        | 28.0  | 1036 | 1.5384          | 0.8998         | 0.9011      | 0.9           | 6.4925             | 16             | 2              | 10.6106             | 1.001                              |
| 0.1713        | 29.0  | 1073 | 1.5627          | 0.9012         | 0.9018      | 0.901         | 6.4715             | 16             | 2              | 10.5395             | 1.2012                             |
| 0.1685        | 30.0  | 1110 | 1.5473          | 0.9011         | 0.9004      | 0.9002        | 6.4064             | 16             | 2              | 10.4484             | 1.1011                             |
| 0.1681        | 31.0  | 1147 | 1.5592          | 0.9018         | 0.9018      | 0.9013        | 6.4194             | 15             | 2              | 10.5165             | 0.8008                             |
| 0.1599        | 32.0  | 1184 | 1.5800          | 0.9006         | 0.9007      | 0.9002        | 6.4254             | 16             | 2              | 10.5005             | 1.001                              |
| 0.1509        | 33.0  | 1221 | 1.5822          | 0.9012         | 0.9005      | 0.9004        | 6.3994             | 16             | 2              | 10.4314             | 1.001                              |
| 0.1509        | 34.0  | 1258 | 1.5924          | 0.9013         | 0.9008      | 0.9006        | 6.4084             | 16             | 2              | 10.4655             | 1.1011                             |
| 0.1408        | 35.0  | 1295 | 1.6045          | 0.9028         | 0.9024      | 0.9021        | 6.4074             | 16             | 2              | 10.4845             | 1.2012                             |
| 0.1487        | 36.0  | 1332 | 1.6133          | 0.9014         | 0.9012      | 0.9008        | 6.4244             | 16             | 2              | 10.4775             | 1.001                              |
| 0.1444        | 37.0  | 1369 | 1.6157          | 0.9016         | 0.9016      | 0.9012        | 6.4304             | 16             | 2              | 10.5045             | 1.2012                             |
| 0.1418        | 38.0  | 1406 | 1.6105          | 0.9012         | 0.9011      | 0.9006        | 6.4084             | 16             | 2              | 10.4615             | 1.1011                             |
| 0.1402        | 39.0  | 1443 | 1.6116          | 0.9017         | 0.9015      | 0.9011        | 6.3894             | 16             | 2              | 10.4494             | 1.1011                             |
| 0.1375        | 40.0  | 1480 | 1.6126          | 0.9015         | 0.9014      | 0.901         | 6.4004             | 16             | 2              | 10.4705             | 1.1011                             |


### Framework versions

- Transformers 4.33.1
- Pytorch 2.0.1+cu118
- Datasets 2.14.5
- Tokenizers 0.13.3