关系型数据库关键字搜索中的关联反馈方法

Zhaohui Peng, Jun Zhang, Shan Wang, Chang-liang Wang, Li-zhen Cui
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引用次数: 0

摘要

在关系数据库关键字搜索(KSORD)中,用户初始查询的检索结果往往不能令人满意。用户必须重新制定查询并执行新的查询,这将花费大量的时间和精力。本文介绍了一种基于相关性反馈的用户查询自动重构方法,该方法被命名为VSM-RF。针对KSORD系统的结果,VSM-RF采用基于向量空间模型的排序方法对KSORD结果进行排序。在第一次检索后,利用用户反馈或用户喜欢的伪反馈,基于概率计算展开项,并利用查询展开重新表述新的查询。在KSORD系统执行新查询之后,结果列表中的新查询将生成更多相关的结果并呈现给用户。实验结果验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VSM-RF: A method of relevance feedback in Keyword Search over Relational Databases
In Keyword Search Over Relational Databases (KSORD), retrieval of user's initial query is often unsatisfying. User has to reformulate his query and execute the new query, which costs much time and effort. In this paper, a method of automatically reformulating user queries by relevance feedback is introduced, which is named VSM-RF. Aimed at the results of KSORD systems, VSM-RF adopts a ranking method based on vector space model to rank KSORD results. After the first time of retrieval, using user feedback or pseudo feedback just as user like, VSM-RF computes expansion terms based on probability and reformulates the new query using query expansion. After KSORD systems executing the new query, more relevant results are produced by the new query in the result list and presented to user. Experimental results verify this method's effectiveness.
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