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Universal information extraction with instruction learning

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InstructUIE

  • This repo releases our implementation for the InstructUIE model.
  • It is built based on the pretrained T5 model, and finetuned on our data.

Requirements

Our main experiments and analysis are conducted on the following environment:

  • CUDA (11.3)
  • cuDNN (8.2.0.53)
  • Pytorch (1.10.0)
  • Transformers (4.17.0)
  • DeepSpeed

You can install the required libraries by running

bash setup.sh

Data

Our models are trained and evaluated on InstructUIE data, which can be cloned by running:

TODO

If you want to use the T5 code here, you can convert the data into text2text format with scripts/convert_data_to_s2s.sh.

Training

A sample script for training the Tk-Instruct 3B model in our paper can be found at scripts/train_tk_instruct.sh. You can run it as follows:

./scripts/train_uie_instruct.sh

Released Checkpoints

Our 3B and 11B model checkpoints are accessible via the Hugging Face Hub. You can load them easily using the Transformers library:

TODO
>>> from transformers import AutoTokenizer, AutoModelForSeq2SeqLM

>>> tokenizer = AutoTokenizer.from_pretrained("allenai/tk-instruct-3b-def")
>>> model = AutoModelForSeq2SeqLM.from_pretrained("allenai/tk-instruct-3b-def")

>>> input_ids = tokenizer.encode(
        "Definition: return the currency of the given country. Now complete the following example - Input: India. Output:", 
        return_tensors="pt"
    )
>>> output = model.generate(input_ids, max_length=10)
>>> output = tokenizer.decode(output[0], skip_special_tokens=True)

Evaluation

The following script evaluates our 3B Tk-Instruct model that uses task definition + 2 positive examples as instructions:

TODO

This should give you a ROUGE-L score of ~54.0, as is reported in the Table 3 of our paper.

You can also try other models under different encodings. You can control whether to include definition / explanation, or the number of pos/neg examples, by specifying the arguments in src/run_s2s.py.

Model Predictions and Performance

TODO The predictions of our tested models can be found in the output folder. You can evaluate each predition file in the following way:

python src/compute_metrics.py --predictions output/default/tk-instruct-3b-def-pos/predicted_examples.jsonl --track default --compute_per_category_metrics
python src/compute_metrics.py --predictions output/xlingual/mtk-instruct-3b-def-pos/predicted_examples.jsonl --track xlingual --compute_per_category_metrics

Here are the performance numbers (in ROUGE-L) for our tested models:

Models Default Track (en) X-lingual Track
Heuristic Baselines Copying Instance Input 14.20 5.44
Copying Demo. Output 28.54 50.31
Pretrained LMs T5-LM (11B) 30.16 -
GPT3 (175B) 45.05 51.20
Instruction-tuned Models T0 (11B) 32.28 -
GPT3-Instruct (175B) 52.06 53.74
Tk-Instruct (Ours, 3B) 54.33 -
Tk-Instruct (Ours, 11B) 60.07 -
mTk-Instruct (Ours, 3B) - 56.72

Note that these numbers might be different from the numbers reported in the our arxiv paper, because we 1) resampled our evaluation instances; 2) updated our evaluation script. We will update the paper once allowed.

We will keep adding the predictions and performance of new models into this repository.

Citation

TODO

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