A Social-Knowledge-Directed Query Suggestion Approach for Exploratory Search

Yuqing Mao, Haifeng Shen, Chengzheng Sun
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引用次数: 2

Abstract

Existing query suggestion techniques mainly revolve around mining existing queries that are most similar to a given query. If the query fails to precisely capture a user's real intent, for example, in most exploratory search tasks, suggested queries are likely to fail as well. If suggested queries are not only relevant to the query but also diverse in nature, it is likely that some of them are close to the user's real intent. In this paper, we propose a novel social-knowledge-directed query suggestion approach for exploratory search, which integrates the social knowledge into the probabilistic model based on query-URL bipartite graphs. Social knowledge is discovered by conducting kernel principle component analysis on the related queries, and incorporating the social knowledge with random walk on the bipartite graph can obtain diverse queries that are relevant to a given one. We have conducted a set of experiments to validate this approach and the results show that this approach outperforms other query suggestion methods in terms of supporting exploratory search.
面向社会知识的探索性搜索查询建议方法
现有的查询建议技术主要围绕挖掘与给定查询最相似的现有查询。如果查询不能准确地捕获用户的真实意图,例如,在大多数探索性搜索任务中,建议的查询也可能失败。如果建议的查询不仅与查询相关,而且性质多样,那么其中一些查询很可能接近用户的真实意图。本文提出了一种新的面向社会知识的探索性搜索查询建议方法,该方法将社会知识集成到基于查询- url二部图的概率模型中。社会知识是通过对相关查询进行核主成分分析来发现的,将社会知识与二部图上的随机游走结合起来,可以得到与给定查询相关的多个查询。我们已经进行了一组实验来验证该方法,结果表明该方法在支持探索性搜索方面优于其他查询建议方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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