面向主题的语义解析

L. Sharma, Namita Mittal
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引用次数: 2

摘要

语义解析仍然是开放领域问答中一个具有挑战性的问题。在语义分析中,问题被映射到它们的意义表示。这些表示与知识库中的可行答案相匹配。在知识库(如Freebase)中,知识以topic的形式存储。为了从Freebase中成功提取答案,需要正确识别问题的Topic节点(或Topic word),并检索与此Topic节点关联的每个类型和属性。本文提出了正确识别问题主题的主题节点识别(TNI)算法和正确识别问题主题节点所在领域的领域词识别(DWI)算法。在域标识之后,将进一步扩展Topic节点的所有类型和属性。在所有已识别的类型中,其中一个类型和相关属性可能是问题的答案。TWI和DWI算法在问题依赖解析器的帮助下使用了基于规则和机器学习的方法。所提出的方法的结果优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topic oriented semantic parsing
Semantic parsing is still a challenging problem for open domain question answering. In semantic parsing, questions are mapped with their meaning representations. These representations are matched with feasible answers in knowledge bases. In Knowledge bases (e.g. Freebase), knowledge is stored in the form of Topics. For a successful answer extraction from Freebase, it is required to correctly identify the Topic node (or Topic word) of the question and retrieve every type and property associated with this Topic node. In this paper, a Topic Node Identification (TNI) algorithm is proposed for correctly identifying question Topic and Domain Word Identification (DWI) algorithm is proposed for correctly identifying domain of the Topic node. After domain identification the Topic node is further expanded for its all types and properties. Out of all types identified, one of the type and associated property is likely to be an answer of the question. TWI and DWI algorithms use techniques i.e. proposed rulebased and machine learning approach with the help of question dependency parser. Results of proposed approach outperform state of art approaches.
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