基于短语语义相似度的查询扩展算法

Yongli Liu, C. Li, Pingan Zhang, Z. Xiong
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引用次数: 30

摘要

在传统搜索引擎的索引过程中,网页成为一个术语列表,但单个术语并不能代表网页的丰富内容,这使得主要基于术语匹配的信息检索方法往往导致精度降低。提出了一种以短语为扩展单元的查询扩展技术。短语通常比其组成词具有更高的信息量和更小的歧义程度,因此比单个术语更准确地表达了文本中表达的概念。该方法从原始结果中提取关键短语,利用基于WordNet的语义相似度算法计算查询短语与提取的每个短语之间的语义相似度,然后将最相似的短语扩展到查询中进行再次搜索。实验结果表明,该算法比传统的查询扩展方法具有更高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Query Expansion Algorithm Based on Phrases Semantic Similarity
During the indexing process of traditional search engine, web pages become a list of terms, but single term cannot represent the rich content of web pages, which makes information retrieval methods mainly based on terms matching often result in depressed precision. This paper proposes a novel query expansion technique that has phrases as its expansion unit. Phrases typically have a higher information content and a smaller degree of ambiguity than their constituent words, and therefore represent the concepts expressed in text more accurately than single terms. This method extracts key phrases from original results, and calculates the semantic similarity between the query phrase and each phrase extracted using the semantic similarity algorithm based on WordNet, and then expands the query with the most similar phrases to search again. Experimental results show that the proposed algorithm can provide more precision than the traditional query expansion methods.
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