This repository hosts the code for our ACL 2023 paper: https://arxiv.org/abs/2305.06984.
Lexical matching is the standard evaluation method for open-domain question answering (QA), but it fails when plausible answers are not in the provided list. In this study, we manually examined the answers of several open-domain QA models and found that
- The true performance of all models is severely underestimated by lexical matching;
- The performance of LLMs increases by nearly +60%, and the few-shot LLM (InstructGPT
text-davinci-003
) actually achieves state-of-the-art; - Automated evaluation methods (BERT-based or LLM-based) are a reasonable surrogate for lexical matching in some circumstances, but not for long-form answers usually generated by LLMs.
Please see our paper for more details.
The code needs Python 3.8+ (we tested it with Python 3.8
).
To install from the repo:
pip install git+https://github.com/ehsk/OpenQA-eval.git
To install from the source:
git clone [email protected]:ehsk/OpenQA-eval.git
pip install -e .
We worked on the Natural Questions-open (Lee et al., ACL 2019) test dataset that consists of 3,610 questions. We randomly sampled 301 questions for annotation.
In the data directory, we provide the answers generated by all open-domain QA models along with the output of the four evaluation mechanisms, described in the paper:
data
├── model_outputs # Answers generated by 12 open-domain QA models
│ ├── NQ301_text-davinci-003_fewshot-n64.jsonl # InstructGPT (few-shot)
│ ├── NQ301_text-davinci-003_zeroshot.jsonl # InstructGPT (zero-shot)
│ ├── NQ_ANCE-plus_FiD.jsonl # ANCE+ & Fusion-In-Decoder
│ └── ...
├── NQ301_BEM.tsv # BEM predictions for all generated answers
├── NQ301_gpt-4.tsv # GPT4-eval output for all generated answers
├── NQ301_human.tsv # Human judgments for all generated answers
└── NQ301_text-davinci-003.tsv # InstructGPT-eval output for all generated answers
The annotations can also be viewed online here.
The evaluation script takes a prediction file in a jsonl format as below and measures its performance with different metrics.
{"question": "who is under the mask of darth vader", "answer": ["Anakin Skywalker"], "prediction": "Anakin Skywalker"}
{"question": "which is the default file extension for an audio file in windows media player", "answer": ["Windows Playlist ( WPL )"], "prediction": "WMA"}
The following command computes only two lexical matching metrics: EM (Exact-Match accuracy) and macro-averaged F1.
python -m oqaeval /path/to/prediction_file.jsonl
To evaluate using an LLM like InstructGPT-eval in the paper, the model name (text-davinci-003
or gpt-4
) argument should be passed:
python -m oqaeval /path/to/prediction_file.jsonl --model text-davinci-003
which calls OpenAI APIs. The environment variable OPENAI_API_KEY
needs to be set first.
Bear in mind that running this command will result in charges to your OpenAI account.
We did not see a significant difference between GPT-4 and InstructGPT, so we recommend using the cheaper model (InstructGPT).
To evaluate using our provided annotated files including human judgment, you can simply run:
python -m oqaeval /path/to/prediction_file.jsonl --annotation data/NQ301_human.tsv
The above command evaluates only 301 annotated questions and skips the rest in the prediction file.
If you have any questions or encounter any problems, feel free to open an issue.
If you want to cite our papers, please use:
@article{kamalloo2023evaluating,
title = "{Evaluating Open-Domain Question Answering in the Era of Large Language Models}",
author = {Kamalloo, Ehsan and Dziri, Nouha and Clarke, Charles L. A. and Rafiei, Davood},
journal={arXiv preprint arXiv:2305.06984},
year={2018}
}
This work is licensed under the MIT license. See LICENSE for details.