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ContraQA: Question Answering under Contradicting Contexts

2021-10-15 01:55:18
Liangming Pan, Wenhu Chen, Min-Yen Kan, William Yang Wang

Abstract

With a rise in false, inaccurate, and misleading information in propaganda, news, and social media, real-world Question Answering (QA) systems face the challenges of synthesizing and reasoning over contradicting information to derive correct answers. This urgency gives rise to the need to make QA systems robust to misinformation, a topic previously unexplored. We study the risk of misinformation to QA models by investigating the behavior of the QA model under contradicting contexts that are mixed with both real and fake information. We create the first large-scale dataset for this problem, namely Contra-QA, which contains over 10K human-written and model-generated contradicting pairs of contexts. Experiments show that QA models are vulnerable under contradicting contexts brought by misinformation. To defend against such a threat, we build a misinformation-aware QA system as a counter-measure that integrates question answering and misinformation detection in a joint fashion.

Abstract (translated)

URL

https://arxiv.org/abs/2110.07803

PDF

https://arxiv.org/pdf/2110.07803.pdf


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