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Papers/Simple and Effective Multi-Paragraph Reading Comprehension

Simple and Effective Multi-Paragraph Reading Comprehension

Christopher Clark, Matt Gardner

2017-10-29ACL 2018 7Reading ComprehensionQuestion AnsweringTriviaQA
PaperPDFCode(official)

Abstract

We consider the problem of adapting neural paragraph-level question answering models to the case where entire documents are given as input. Our proposed solution trains models to produce well calibrated confidence scores for their results on individual paragraphs. We sample multiple paragraphs from the documents during training, and use a shared-normalization training objective that encourages the model to produce globally correct output. We combine this method with a state-of-the-art pipeline for training models on document QA data. Experiments demonstrate strong performance on several document QA datasets. Overall, we are able to achieve a score of 71.3 F1 on the web portion of TriviaQA, a large improvement from the 56.7 F1 of the previous best system.

Results

TaskDatasetMetricValueModel
Question AnsweringSQuAD1.1EM72.139BiDAF + Self Attention (single model)
Question AnsweringSQuAD1.1F181.048BiDAF + Self Attention (single model)
Question AnsweringTriviaQAEM66.37S-Norm
Question AnsweringTriviaQAF171.32S-Norm

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