Abstract:We treat extractive summarization for questions. Neural extractive summarizers often require much labeled training data. Obtaining such labels is difficult, especially for user-generated content, such as questions posted on community question answering services. In this paper, we propose semi-supervised extractive summarizers for such questions that exploit question-answer pairs to alleviate the problem of insufficient labeled data. To this end, we propose several learning methods, namely pretraining, multi-ta… Show more
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