SyMSS: A syntax-based measure for short-text semantic similarity

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摘要

Sentence and short-text semantic similarity measures are becoming an important part of many natural language processing tasks, such as text summarization and conversational agents. This paper presents SyMSS, a new method for computing short-text and sentence semantic similarity. The method is based on the notion that the meaning of a sentence is made up of not only the meanings of its individual words, but also the structural way the words are combined. Thus, SyMSS captures and combines syntactic and semantic information to compute the semantic similarity of two sentences. Semantic information is obtained from a lexical database. Syntactic information is obtained through a deep parsing process that finds the phrases in each sentence. With this information, the proposed method measures the semantic similarity between concepts that play the same syntactic role. Psychological plausibility is added to the method by using previous findings about how humans weight different syntactic roles when computing semantic similarity. The results show that SyMSS outperforms state-of-the-art methods in terms of rank correlation with human intuition, thus proving the importance of syntactic information in sentence semantic similarity computation.

论文关键词:Linguistic tools for IS modeling,Text DBs,Natural language processing (NLP),Semantic similarity,Sentence similarity

论文评审过程:Received 30 July 2009, Revised 12 January 2011, Accepted 14 January 2011, Available online 22 January 2011.

论文官网地址:https://doi.org/10.1016/j.datak.2011.01.002