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RECONSIDER: Re-Ranking using Span-Focused Cross-Attention for Open Domain Question Answering

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arxiv 2010.10757 v1 pith:HWEXVFOG submitted 2020-10-21 cs.CL

RECONSIDER: Re-Ranking using Span-Focused Cross-Attention for Open Domain Question Answering

classification cs.CL
keywords modelsre-rankingreconsiderexamplespositiveaccuracyansweringhigh
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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State-of-the-art Machine Reading Comprehension (MRC) models for Open-domain Question Answering (QA) are typically trained for span selection using distantly supervised positive examples and heuristically retrieved negative examples. This training scheme possibly explains empirical observations that these models achieve a high recall amongst their top few predictions, but a low overall accuracy, motivating the need for answer re-ranking. We develop a simple and effective re-ranking approach (RECONSIDER) for span-extraction tasks, that improves upon the performance of large pre-trained MRC models. RECONSIDER is trained on positive and negative examples extracted from high confidence predictions of MRC models, and uses in-passage span annotations to perform span-focused re-ranking over a smaller candidate set. As a result, RECONSIDER learns to eliminate close false positive passages, and achieves a new state of the art on four QA tasks, including 45.5% Exact Match accuracy on Natural Questions with real user questions, and 61.7% on TriviaQA.

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