Self-Teaching Machines to Read and Comprehend with Large-Scale Multi-Subject Question-Answering Data.

EMNLP(2021)

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摘要
In spite of much recent research in the area, it is still unclear whether subject-area question-answering data is useful for machine reading comprehension (MRC) tasks. In this paper, we investigate this question. We collect a large-scale multi-subject multiple-choice question-answering dataset, ExamQA, and use incomplete and noisy snippets returned by a web search engine as the relevant context for each questionanswering instance to convert it into a weakly-labeled MRC instance. We then propose a self-teaching paradigm to better use the generated weakly-labeled MRC instances to improve a target MRC task. Experimental results show that we can obtain an improvement of 5.1% in accuracy on a multiple-choice MRC dataset, C, demonstrating the effectiveness of our framework and the usefulness of large-scale subjectarea question-answering data for machine reading comprehension.
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