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Evaluating the Factual Consistency of Large Language Models Through News Summarization
November 15, 2022 ยท Entered Twilight ยท ๐ Annual Meeting of the Association for Computational Linguistics
Repo contents: .DS_Store, .gitignore, README.md, bin, dataset_LICENSE, img, multiple_choice-dataset, requirements.txt, software_LICENSE, src
Authors
Derek Tam, Anisha Mascarenhas, Shiyue Zhang, Sarah Kwan, Mohit Bansal, Colin Raffel
arXiv ID
2211.08412
Category
cs.CL: Computation & Language
Citations
135
Venue
Annual Meeting of the Association for Computational Linguistics
Repository
https://github.com/r-three/fib
โญ 26
Last Checked
1 month ago
Abstract
While large language models (LLMs) have proven to be effective on a large variety of tasks, they are also known to hallucinate information. To measure whether an LLM prefers factually consistent continuations of its input, we propose a new benchmark called FIB(Factual Inconsistency Benchmark) that focuses on the task of summarization. Specifically, our benchmark involves comparing the scores an LLM assigns to a factually consistent versus a factually inconsistent summary for an input news article. For factually consistent summaries, we use human-written reference summaries that we manually verify as factually consistent. To generate summaries that are factually inconsistent, we generate summaries from a suite of summarization models that we have manually annotated as factually inconsistent. A model's factual consistency is then measured according to its accuracy, i.e.\ the proportion of documents where it assigns a higher score to the factually consistent summary. To validate the usefulness of FIB, we evaluate 23 large language models ranging from 1B to 176B parameters from six different model families including BLOOM and OPT. We find that existing LLMs generally assign a higher score to factually consistent summaries than to factually inconsistent summaries. However, if the factually inconsistent summaries occur verbatim in the document, then LLMs assign a higher score to these factually inconsistent summaries than factually consistent summaries. We validate design choices in our benchmark including the scoring method and source of distractor summaries. Our code and benchmark data can be found at https://github.com/r-three/fib.
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