CLApr 27, 2017

Question Answering on Knowledge Bases and Text using Universal Schema and Memory Networks

arXiv:1704.08384v1144 citations
Originality Highly original
AI Analysis

This work addresses the incompleteness of knowledge bases for question answering, offering a hybrid approach that benefits users needing accurate answers from both structured and unstructured sources.

The paper tackled the problem of question answering by combining knowledge bases and text using universal schema and memory networks, achieving an 8.5 F1 point improvement over the state-of-the-art on a fill-in-the-blank dataset.

Existing question answering methods infer answers either from a knowledge base or from raw text. While knowledge base (KB) methods are good at answering compositional questions, their performance is often affected by the incompleteness of the KB. Au contraire, web text contains millions of facts that are absent in the KB, however in an unstructured form. {\it Universal schema} can support reasoning on the union of both structured KBs and unstructured text by aligning them in a common embedded space. In this paper we extend universal schema to natural language question answering, employing \emph{memory networks} to attend to the large body of facts in the combination of text and KB. Our models can be trained in an end-to-end fashion on question-answer pairs. Evaluation results on \spades fill-in-the-blank question answering dataset show that exploiting universal schema for question answering is better than using either a KB or text alone. This model also outperforms the current state-of-the-art by 8.5 $F_1$ points.\footnote{Code and data available in \url{https://rajarshd.github.io/TextKBQA}}

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