语义相似与互信息预测句子理解——以汉语悬置话题结构为例

IF 1.2 4区 心理学 Q4 PSYCHOLOGY, EXPERIMENTAL
Kun Sun, Rong Wang
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引用次数: 0

摘要

摘要本研究利用语义相似性和点互信息(PMI)来估计和计算普通话悬置话题结构中话题和评论之间的关系。提出了三种计算主题与评论语义相似度的方法。我们还进行了人类对悬挂主题结构接受度的评分实验。结果表明,PMI和三种语义相似性度量可以很好地预测人类评级数据。这是第一次使用PMI和基于句子的语义相似性来预测人类如何从整体上理解句子。PMI和语义相似性度量可以进一步阐明主题结构的概念,并有助于了解中国母语人士如何理解和处理句子。更重要的是,本研究为预测整个句子的理解/处理和句法分析创造了一种新颖、有效和实用的计算方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic similarity and mutual information predicting sentence comprehension: the case of dangling topic construction in Chinese
ABSTRACT This study uses semantic similarity and pointwise mutual information (PMI) to estimate and compute the relationship between topic and comment in dangling topic construction in Mandarin. It proposes three methods to calculate the semantic similarity between topic and comment. We also carry out experiments on human ratings of the acceptance degree for dangling topic constructions. The results show that PMI and three measures of semantic similarity can make good predictions for human-rated data. This is the first time that PMI and sentence-based semantic similarity are employed to predict how humans comprehend sentences as a whole. PMI and semantic similarity measures may further elucidate the concept of topic construction and to help in seeing how Chinese native speakers understand and process sentences. More importantly, this study creates a novel, effective and practical computational approach for predicting entire sentence comprehension/processing and syntactic analysis.
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来源期刊
Journal of Cognitive Psychology
Journal of Cognitive Psychology PSYCHOLOGY, EXPERIMENTAL-
CiteScore
2.30
自引率
15.40%
发文量
54
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