FAQAugmenter - Suggesting Questions for Enterprise FAQ Pages.

WSDM '20: The Thirteenth ACM International Conference on Web Search and Data Mining Houston TX USA February, 2020(2020)

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摘要
Lack of comprehensive information on frequently asked questions (FAQ) web pages forces users to pose their questions on community question answering forums or contact businesses over slow media like emails or phone calls. This in turn often results into sub-optimal user experience and opportunity loss for businesses. While previous work focuses on FAQ mining and answering queries from FAQ pages, there is no work on verifying completeness or augmenting FAQ pages. We present a system, called FAQAugmenter, which given an FAQ web page, (1) harnesses signals from query logs and the web corpus to identify missing topics, and (2) suggests ranked list of questions for FAQ web page augmentation. Our experiments with FAQ pages from five enterprises each across three categories (banks, hospitals and airports) show that FAQAugmenter suggests high quality relevant questions. FAQAugmenter will contribute significantly not just in improving quality of FAQ web pages but also in turn improving quality of downstream applications like Microsoft QnA Maker.
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关键词
FAQ pages, question recommendation, deep learning, intent extraction, novelty detection, frequently asked questions
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