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基于用户日志的查询扩展统计模型
引用本文:崔航,文继荣,李敏强.基于用户日志的查询扩展统计模型[J].软件学报,2003,14(9):1593-1599.
作者姓名:崔航  文继荣  李敏强
作者单位:1. 天津大学,系统工程研究所,天津,300072
2. 微软亚洲研究院,北京,100080
基金项目:Supported by the National Natural Science Foundation of China under Grant Nos.69974026, 70171002 (国家自然科学基金)
摘    要:信息检索长期存在着用词歧义性问题,在Web搜索上的表现更加突出.提出了一种基于用户查询日志的查询扩展统计模型,将用户查询中使用的词或短语与文档中出现的相应词或短语以条件概率的形式连接,利用贝叶斯公式挑选出文档中与该查询关联最紧密的词加入原查询,以达到扩展优化的目的.实验结果表明,该方法更适宜改进Web上的信息检索,相对传统的查询扩展算法可以大幅度提高查询精度.

关 键 词:信息检索  查询扩展  用户日志  日志挖掘
文章编号:1000-9825/2003/14(09)1593
收稿时间:2002/3/12 0:00:00
修稿时间:2002年3月12日

A Statistical Query Expansion Model Based on Query Logs
CUI Hang,WEN Ji-Rong and LI Min-Qiang.A Statistical Query Expansion Model Based on Query Logs[J].Journal of Software,2003,14(9):1593-1599.
Authors:CUI Hang  WEN Ji-Rong and LI Min-Qiang
Abstract:Ambiguity of query terms has been a long-standing problem in information retrieval field, which becomes more serious in Web searching. A method for automatic query expansion based on query logs obtained from users?daily usage is suggested. This model establishes probabilistic relationship between terms in documents and in user queries through statistical learning from the log, and selects high-related expansion terms based on Bayesian theory. These expansion terms are added into the original query to formulate a new one in order to improve the effectiveness of retrieval. Experimental results show that this technique is more adaptive to Web searching, and can improve the precision of document retrieval markedly compared with conventional ones.
Keywords:information retrieval  query expansion  user log  log mining
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