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Main Authors: Hu, Xuming, Chen, Junzhe, Guo, Zhijiang, Yu, Philip S.
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2305.16128
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author Hu, Xuming
Chen, Junzhe
Guo, Zhijiang
Yu, Philip S.
author_facet Hu, Xuming
Chen, Junzhe
Guo, Zhijiang
Yu, Philip S.
contents Evidence plays a crucial role in automated fact-checking. When verifying real-world claims, existing fact-checking systems either assume the evidence sentences are given or use the search snippets returned by the search engine. Such methods ignore the challenges of collecting evidence and may not provide sufficient information to verify real-world claims. Aiming at building a better fact-checking system, we propose to incorporate full text from source documents as evidence and introduce two enriched datasets. The first one is a multilingual dataset, while the second one is monolingual (English). We further develop a latent variable model to jointly extract evidence sentences from documents and perform claim verification. Experiments indicate that including source documents can provide sufficient contextual clues even when gold evidence sentences are not annotated. The proposed system is able to achieve significant improvements upon best-reported models under different settings.
format Preprint
id arxiv_https___arxiv_org_abs_2305_16128
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Give Me More Details: Improving Fact-Checking with Latent Retrieval
Hu, Xuming
Chen, Junzhe
Guo, Zhijiang
Yu, Philip S.
Computation and Language
Evidence plays a crucial role in automated fact-checking. When verifying real-world claims, existing fact-checking systems either assume the evidence sentences are given or use the search snippets returned by the search engine. Such methods ignore the challenges of collecting evidence and may not provide sufficient information to verify real-world claims. Aiming at building a better fact-checking system, we propose to incorporate full text from source documents as evidence and introduce two enriched datasets. The first one is a multilingual dataset, while the second one is monolingual (English). We further develop a latent variable model to jointly extract evidence sentences from documents and perform claim verification. Experiments indicate that including source documents can provide sufficient contextual clues even when gold evidence sentences are not annotated. The proposed system is able to achieve significant improvements upon best-reported models under different settings.
title Give Me More Details: Improving Fact-Checking with Latent Retrieval
topic Computation and Language
url https://arxiv.org/abs/2305.16128