元搜索引擎中结果合并的综合方法

Xiao-Li Chen, Qingshan Li, Yishuai Lin, B. Zhou
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引用次数: 6

摘要

元搜索引擎是在成员搜索引擎的基础上建立起来的综合性搜索工具。成员搜索引擎报告的所有结果实体根据其质量合并为一个排名列表。众所周知,元搜索引擎的核心问题是如何合并结果,为用户提供一个更有效的排名列表。本文研究了一种利用5个特征来估计每个结果实体质量的综合合并算法。对于返回的结果实体,我们首先记录其在原始结果列表中的位置。其次,计算重复的数量。第三,计算查询项与结果内容之间的相似度。第四,获取待调用的搜索成员的容量。第五,分析当前实体是否符合用户利益。其中用户的兴趣是根据用户的浏览历史和反馈得到的。最后,利用线性融合模型对结果集进行合并,并对结果列表进行重新排序。实验结果表明,与成员搜索引擎和现有的几种元搜索引擎相比,本文提出的合并方法在某些情况下提高了准确性和满意度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A synthesized method of result merging in meta-search engine
Meta-search engine is a comprehensive search tool, which is build base on those member search engines. All result entities reported by member search engines are merged into one ranked list according to their quality. It is well knowing that the core problem in meta-search engine is how to merge the results and provide user with a more effective rank list. This paper dealt with a synthesized merging algorithm by utilizing five features to estimate the quality of each result entity. For a returned result entity, we first record its' position of the original result list. Secondly, count the number of duplications. Thirdly, calculate the similarity between query terms and result content. Fourthly, get the capacity of the search members which will be called later. Fifth, analyze whether the current entity is in line with user's interests. Wherein users' interests are obtained both according to users' browsing history and feedback. Finally, we use the linear fusion model to merge the results set and re-ranking the results list. Experimental results shown that the merging method we proposed in this paper improved the accuracy and satisfaction degree in some cases compared with member search engines and several current meta-search engines.
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