Apples to Apples: Learning Semantics of Common Entities Through a Novel Comprehension Task

ACL 2017 BakhshOmid ehJames Allen

Understanding common entities and their attributes is a primary requirement for any system that comprehends natural language. In order to enable learning about common entities, we introduce a novel machine comprehension task, GuessTwo: given a short paragraph comparing different aspects of two real-world semantically-similar entities, a system should guess what those entities are... (read more)

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