CLJun 10, 2016

Simple Question Answering by Attentive Convolutional Neural Network

arXiv:1606.03391v2175 citations
Originality Highly original
AI Analysis

It addresses factoid question answering for knowledge base queries, with incremental improvements in entity linking and predicate matching.

The paper tackles simple question answering over Freebase by proposing a two-step pipeline with an improved entity linker and a novel attentive maxpooling method for fact selection, achieving new state-of-the-art results.

This work focuses on answering single-relation factoid questions over Freebase. Each question can acquire the answer from a single fact of form (subject, predicate, object) in Freebase. This task, simple question answering (SimpleQA), can be addressed via a two-step pipeline: entity linking and fact selection. In fact selection, we match the subject entity in a fact candidate with the entity mention in the question by a character-level convolutional neural network (char-CNN), and match the predicate in that fact with the question by a word-level CNN (word-CNN). This work makes two main contributions. (i) A simple and effective entity linker over Freebase is proposed. Our entity linker outperforms the state-of-the-art entity linker over SimpleQA task. (ii) A novel attentive maxpooling is stacked over word-CNN, so that the predicate representation can be matched with the predicate-focused question representation more effectively. Experiments show that our system sets new state-of-the-art in this task.

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