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Computational linguistics / Artificial intelligence / Linguistics / Computational science / Question answering / Semantic parsing / Training /  test /  and validation sets / Cyc / Artificial neural network / Reading comprehension / Named-entity recognition / Wikipedia
Date: 2017-04-30 21:08:35
Computational linguistics
Artificial intelligence
Linguistics
Computational science
Question answering
Semantic parsing
Training
test
and validation sets
Cyc
Artificial neural network
Reading comprehension
Named-entity recognition
Wikipedia

Reading Wikipedia to Answer Open-Domain Questions Adam Fisch, Jason Weston & Antoine Bordes Danqi Chen∗ Facebook AI Research Computer Science 770 Broadway

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Source URL: arxiv.org

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