The disambiguation strategies of semantic analysis in Chinese spoken dialogue system

Bei Liu, Limin Du
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Abstract

Semantic frame analysis is one of the most commonly used semantic analysis methods in Chinese spoken dialogue system research. And the two typical ambiguous structures commonly encountered in semantic analysis are relation-ambiguity and structural-ambiguity. According to the features of these two ambiguous structures, this paper puts forth the semantic PCFG (probabilistic context free grammar) model based disambiguation strategy to solve structural-ambiguity, and the expectation model (EM) based disambiguation strategy to solve relation-ambiguity. Efficient algorithms of the two methods are also provided. The experimental results show that applying these two disambiguation strategies can greatly improve the performance of language understanding in a base-line system. Especially, sentence accuracy is improved from 75.7% to 91.5%, and the three targets of semantic unit understanding rate-correction, recall, and precision are also improved by 10% on average.
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汉语口语对话系统语义分析中的消歧策略
语义框架分析是汉语口语对话系统研究中最常用的语义分析方法之一。语义分析中常见的两种典型的歧义结构是关系歧义和结构歧义。针对这两种歧义结构的特点,本文分别提出了基于语义PCFG(概率上下文无关语法)模型的结构歧义消解策略和基于期望模型的关系歧义消解策略。并给出了两种方法的有效算法。实验结果表明,采用这两种消歧策略可以大大提高基线系统的语言理解性能。特别是句子的正确率从75.7%提高到91.5%,语义单元理解率的三个指标——纠错率、查全率和查准率也平均提高了10%。
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