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Character-Level Question Answering with Attention

About

We show that a character-level encoder-decoder framework can be successfully applied to question answering with a structured knowledge base. We use our model for single-relation question answering and demonstrate the effectiveness of our approach on the SimpleQuestions dataset (Bordes et al., 2015), where we improve state-of-the-art accuracy from 63.9% to 70.9%, without use of ensembles. Importantly, our character-level model has 16x fewer parameters than an equivalent word-level model, can be learned with significantly less data compared to previous work, which relies on data augmentation, and is robust to new entities in testing.

David Golub, Xiaodong He• 2016

Related benchmarks

TaskDatasetResultRank
Knowledge Graph Question AnsweringSimpleQuestions
Hit@170.3
14
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