Talk to Papers: Bringing Neural Question Answering to Academic Search

ACL 2020 Tianchang ZhaoKyusong Lee

We introduce Talk to Papers, which exploits the recent open-domain question answering (QA) techniques to improve the current experience of academic search. It's designed to enable researchers to use natural language queries to find precise answers and extract insights from a massive amount of academic papers... (read more)

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