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--- |
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inference: false |
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license: mit |
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language: |
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- en |
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metrics: |
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- exact_match |
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- f1 |
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- bertscore |
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pipeline_tag: text-classification |
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--- |
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# QA-Evaluation-Metrics |
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[![PyPI version qa-metrics](https://img.shields.io/pypi/v/qa-metrics.svg)](https://pypi.org/project/qa-metrics/) |
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[![Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/drive/17b7vrZqH0Yun2AJaOXydYZxr3cw20Ga6?usp=sharing) |
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QA-Evaluation-Metrics is a fast and lightweight Python package for evaluating question-answering models and prompting of black-box and open-source large language models. It provides various basic metrics to assess the performance of QA models. Check out our paper [**PANDA**](https://arxiv.org/abs/2402.11161), an efficient QA evaluation that retains competitive evaluation performance of transformer LLM models. |
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### Updates |
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- Uopdated to version 0.2.8 |
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- Supports prompting OPENAI GPT-series models and Claude Series models now. (Assuimg OPENAI version > 1.0) |
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- Supports prompting various open source models such as LLaMA-2-70B-chat, LLaVA-1.5 etc by calling API from [deepinfra](https://deepinfra.com/models). |
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## Installation |
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* Python version >= 3.6 |
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* openai version >= 1.0 |
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To install the package, run the following command: |
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```bash |
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pip install qa-metrics |
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``` |
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## Usage |
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The python package currently provides six QA evaluation methods. |
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#### Prompting LLM For Evaluation |
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Note: The prompting function can be used for any prompting purposes. |
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###### OpenAI |
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```python |
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from qa_metrics.prompt_llm import CloseLLM |
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model = CloseLLM() |
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model.set_openai_api_key(YOUR_OPENAI_KEY) |
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prompt = 'question: What is the Capital of France?\nreference: Paris\ncandidate: The capital is Paris\nIs the candidate answer correct based on the question and reference answer? Please only output correct or incorrect.' |
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model.prompt_gpt(prompt=prompt, model_engine='gpt-3.5-turbo', temperature=0.1, max_tokens=10) |
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''' |
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'correct' |
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''' |
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``` |
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###### Anthropic |
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```python |
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model = CloseLLM() |
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model.set_anthropic_api_key(YOUR_Anthropic_KEY) |
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model.prompt_claude(prompt=prompt, model_engine='claude-v1', anthropic_version="2023-06-01", max_tokens_to_sample=100, temperature=0.7) |
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''' |
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'correct' |
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''' |
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``` |
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###### deepinfra (See below for descriptions of more models) |
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```python |
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from qa_metrics.prompt_open_llm import OpenLLM |
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model = OpenLLM() |
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model.set_deepinfra_key(YOUR_DEEPINFRA_KEY) |
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model.prompt(message=prompt, model_engine='mistralai/Mixtral-8x7B-Instruct-v0.1', temperature=0.1, max_tokens=10) |
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''' |
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'correct' |
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''' |
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``` |
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#### Exact Match |
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```python |
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from qa_metrics.em import em_match |
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reference_answer = ["The Frog Prince", "The Princess and the Frog"] |
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candidate_answer = "The movie \"The Princess and the Frog\" is loosely based off the Brother Grimm's \"Iron Henry\"" |
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match_result = em_match(reference_answer, candidate_answer) |
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print("Exact Match: ", match_result) |
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''' |
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Exact Match: False |
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''' |
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``` |
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#### Transformer Match |
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Our fine-tuned BERT model is this repository. Our Package also supports downloading and matching directly. distilroberta, distilbert, and roberta are also supported now! 🔥🔥🔥 |
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```python |
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from qa_metrics.transformerMatcher import TransformerMatcher |
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question = "Which movie is loosley based off the Brother Grimm's Iron Henry?" |
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tm = TransformerMatcher("roberta") |
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scores = tm.get_scores(reference_answer, candidate_answer, question) |
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match_result = tm.transformer_match(reference_answer, candidate_answer, question) |
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print("Score: %s; TM Match: %s" % (scores, match_result)) |
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''' |
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Score: {'The Frog Prince': {'The movie "The Princess and the Frog" is loosely based off the Brother Grimm\'s "Iron Henry"': 0.88954514}, 'The Princess and the Frog': {'The movie "The Princess and the Frog" is loosely based off the Brother Grimm\'s "Iron Henry"': 0.9381995}}; TM Match: True |
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''' |
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``` |
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#### F1 Score |
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```python |
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from qa_metrics.f1 import f1_match,f1_score_with_precision_recall |
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f1_stats = f1_score_with_precision_recall(reference_answer[0], candidate_answer) |
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print("F1 stats: ", f1_stats) |
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match_result = f1_match(reference_answer, candidate_answer, threshold=0.5) |
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print("F1 Match: ", match_result) |
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''' |
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F1 stats: {'f1': 0.25, 'precision': 0.6666666666666666, 'recall': 0.15384615384615385} |
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F1 Match: False |
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''' |
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``` |
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#### PANDA Match |
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```python |
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from qa_metrics.pedant import PEDANT |
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question = "Which movie is loosley based off the Brother Grimm's Iron Henry?" |
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pedant = PEDANT() |
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scores = pedant.get_scores(reference_answer, candidate_answer, question) |
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max_pair, highest_scores = pedant.get_highest_score(reference_answer, candidate_answer, question) |
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match_result = pedant.evaluate(reference_answer, candidate_answer, question) |
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print("Max Pair: %s; Highest Score: %s" % (max_pair, highest_scores)) |
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print("Score: %s; PANDA Match: %s" % (scores, match_result)) |
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''' |
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Max Pair: ('the princess and the frog', 'The movie "The Princess and the Frog" is loosely based off the Brother Grimm\'s "Iron Henry"'); Highest Score: 0.854451712151719 |
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Score: {'the frog prince': {'The movie "The Princess and the Frog" is loosely based off the Brother Grimm\'s "Iron Henry"': 0.7131625951317375}, 'the princess and the frog': {'The movie "The Princess and the Frog" is loosely based off the Brother Grimm\'s "Iron Henry"': 0.854451712151719}}; PANDA Match: True |
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''' |
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``` |
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```python |
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print(pedant.get_score(reference_answer[1], candidate_answer, question)) |
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''' |
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0.7122460127464126 |
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''' |
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``` |
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If you find this repo avialable, please cite our paper: |
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```bibtex |
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@misc{li2024panda, |
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title={PANDA (Pedantic ANswer-correctness Determination and Adjudication):Improving Automatic Evaluation for Question Answering and Text Generation}, |
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author={Zongxia Li and Ishani Mondal and Yijun Liang and Huy Nghiem and Jordan Lee Boyd-Graber}, |
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year={2024}, |
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eprint={2402.11161}, |
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archivePrefix={arXiv}, |
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primaryClass={cs.CL} |
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} |
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``` |
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## Updates |
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- [01/24/24] 🔥 The full paper is uploaded and can be accessed [here](https://arxiv.org/abs/2402.11161). The dataset is expanded and leaderboard is updated. |
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- Our Training Dataset is adapted and augmented from [Bulian et al](https://github.com/google-research-datasets/answer-equivalence-dataset). Our [dataset repo](https://github.com/zli12321/Answer_Equivalence_Dataset.git) includes the augmented training set and QA evaluation testing sets discussed in our paper. |
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- Now our model supports [distilroberta](https://huggingface.co/Zongxia/answer_equivalence_distilroberta), [distilbert](https://huggingface.co/Zongxia/answer_equivalence_distilbert), a smaller and more robust matching model than Bert! |
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## License |
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This project is licensed under the [MIT License](LICENSE.md) - see the LICENSE file for details. |
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## Contact |
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For any additional questions or comments, please contact [[email protected]]. |