Discourse-Based Approach to Involvement of Background Knowledge for Question Answering

Boris A. Galitsky, Dmitry Ilvovsky
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引用次数: 3

Abstract

We introduce a concept of a virtual discourse tree to improve question answering (Q/A) recall for complex, multi-sentence questions. Augmenting the discourse tree of an answer with tree fragments obtained from text corpora playing the role of ontology, we obtain on the fly a canonical discourse representation of this answer that is independent of the thought structure of a given author. This mechanism is critical for finding an answer that is not only relevant in terms of questions entities but also in terms of inter-relations between these entities in an answer and its style. We evaluate the Q/A system enabled with virtual discourse trees and observe a substantial increase of performance answering complex questions such as Yahoo! Answers and www.2carpros.com.
基于话语的问答背景知识介入方法
我们引入了一个虚拟语篇树的概念来提高复杂的多句问题的问答(Q/ a)召回。用从文本语料库中获得的树状片段作为本体论,对答案的话语树进行扩充,我们得到了一个独立于给定作者思想结构的答案的规范话语表示。这种机制对于找到答案至关重要,因为答案不仅与问题实体相关,而且与答案及其风格中这些实体之间的相互关系相关。我们评估了启用虚拟话语树的问答系统,并观察到在回答复杂问题(如Yahoo!答案和www.2carpros.com。
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