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TAPP-multilabel-climatebert

This model is a fine-tuned version of climatebert/distilroberta-base-climate-f on the Policy-Classification dataset. It achieves the following results on the evaluation set:

The loss function BCEWithLogitsLoss is modified with pos_weight to focus on recall, therefore instead of loss the evaluation metrics are used to assess the model performance during training

  • Precision-micro: 0.7368
  • Precision-samples: 0.7425
  • Precision-weighted: 0.7469
  • Recall-micro: 0.8044
  • Recall-samples: 0.7744
  • Recall-weighted: 0.8044
  • F1-micro: 0.7691
  • F1-samples: 0.7384
  • F1-weighted: 0.7721

Model description

The purpose of this model is to predict multiple labels simultaneously from a given input data. Specifically, the model will predict four labels - ActionLabel, PlansLabel, PolicyLabel, and TargetLabel - that are relevant to a particular task or application

  • Target: Targets are an intention to achieve a specific result, for example, to reduce GHG emissions to a specific level (a GHG target) or increase energy efficiency or renewable energy to a specific level (a non-GHG target), typically by
    a certain date.
  • Action: Actions are an intention to implement specific means of achieving GHG reductions, usually in forms of concrete projects.
  • Policies: Policies are domestic planning documents such as policies, regulations or guidlines.
  • Plans:Plans are broader than specific policies or actions, such as a general intention to ‘improve efficiency’, ‘develop renewable energy’, etc.

The terms come from the World Bank's NDC platform and WRI's publication

Intended uses & limitations

More information needed

Training and evaluation data

  • Training Dataset: 10031

    Class Positive Count of Class
    Action 5416
    Plans 2140
    Policy 1396
    Target 2911
  • Validation Dataset: 932

    Class Positive Count of Class
    Action 513
    Plans 198
    Policy 122
    Target 256

Training procedure

Training hyperparameters

The following hyperparameters were used during training:

  • learning_rate: 3.06e-05
  • 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: cosine
  • lr_scheduler_warmup_steps: 200
  • num_epochs: 5

Training results

Training Loss Epoch Step Validation Loss Precision-micro Precision-samples Precision-weighted Recall-micro Recall-samples Recall-weighted F1-micro F1-samples F1-weighted
0.7627 0.8 500 0.6471 0.6232 0.6727 0.6384 0.7989 0.7741 0.7989 0.7002 0.6929 0.7062
0.5542 1.59 1000 0.6114 0.6393 0.6754 0.6671 0.8154 0.7833 0.8154 0.7167 0.6999 0.7279
0.4219 2.39 1500 0.6145 0.7196 0.7236 0.7311 0.7989 0.7645 0.7989 0.7572 0.7231 0.7613
0.3268 3.19 2000 0.6363 0.7272 0.7383 0.7358 0.8053 0.7738 0.8053 0.7643 0.7374 0.7672
0.2477 3.99 2500 0.6509 0.7315 0.7351 0.7439 0.8007 0.7689 0.8007 0.7646 0.7319 0.7686
0.1989 4.78 3000 0.6527 0.7368 0.7425 0.7469 0.8044 0.7744 0.8044 0.7691 0.7384 0.7721
label precision recall f1-score support
Action 0.828 0.807 0.817 513.0
Plans 0.560 0.707 0.625 198.0
Policy 0.727 0.786 0.756 122.0
Target 0.741 0.886 0.808 256.0

Environmental Impact

Carbon emissions were measured using CodeCarbon.

  • Carbon Emitted: 0.02335 kg of CO2
  • Hours Used: 0.529 hours

Training Hardware

  • On Cloud: yes
  • GPU Model: 1 x Tesla T4
  • CPU Model: Intel(R) Xeon(R) CPU @ 2.00GHz
  • RAM Size: 12.67 GB

Framework versions

  • Transformers 4.38.1
  • Pytorch 2.1.0+cu121
  • Datasets 2.18.0
  • Tokenizers 0.15.2
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Dataset used to train GIZ/TAPP-multilabel-climatebert_f

Collection including GIZ/TAPP-multilabel-climatebert_f