基于用户的元搜索和共引图

A. Keyhanipour, M. Piroozmand, A. Bidoki, K. Badie
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引用次数: 4

摘要

尽管Web环境中有许多搜索引擎,但没有一个能声称在所有条件下都能产生可靠的结果。考虑到Web资源数量的指数级增长,这个问题变得更加严重。为了应对这些挑战,引入元搜索引擎,将一些优秀的搜索引擎作为其信息资源,以提高搜索过程。结果组合问题是元搜索环境中最基本的问题,近年来,人们提出了一些解决结果组合问题的方法。本文利用由搜索引擎和返回列表构建的网络共被引图的特点,提出了一种新的合并/重排序方法。从共引图中提取的信息,在自适应框架中被用户的点击数据作为隐含反馈进行组合和丰富。实验结果表明,相对于基本方法和一些知名的元搜索引擎,该方法有了明显的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
User-based meta-search with the co-citation graph
Although there are numerous search engines in the Web environment, no one could claim producing reliable results in all conditions. This problem is becoming more serious considering the exponential growth of the number of Web resources. In the response to these challenges, the meta-search engines are introduced to enhance the search process by devoting some outstanding search engines as their information resources. In recent years, some approaches are proposed to handle the result combination problem which is the fundamental problem in the meta-search environment. In this paper, a new merging/re-ranking method is introduced which uses the characteristics of the Web co-citation graph that is constructed from search engines and returned lists. The information extracted from the co-citation graph, is combined and enriched by the userspsila click-through data as their implicit feedback in an adaptive framework. Experimental results show a noticeable improvement against the basic method as well as some well-known meta-search engines.
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