基于位置的排序方法(LBRM)用于在搜索引擎中对搜索结果进行排序

S. Geetharani, M. Soranamageswari
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引用次数: 2

摘要

Web搜索引擎为用户提交的查询提供信息,而不考虑用户的兴趣。个性化Web搜索用于考虑提供结果的用户兴趣。现有研究提出了基于链接点击概念排序(Link-click-concept based ranking, LC2R)算法,该算法通过网络搜索得到的用户点击数据提取用户的概念偏好。此首选项用于在搜索引擎中对结果进行排序。但是考虑了用户的位置效应。本文介绍了一种在搜索引擎中对搜索结果进行排名的基于位置的排名方法(LBRM)。用户必须在不同的位置进行搜索,获得不同的搜索结果。该方法包括三个阶段:相似度识别、频率访问模式计算和加权分数计算。在相似度识别阶段,通过计算位置和检索页面之间的相似度来识别位置和页面的相似度。在频率访问模式的计算中,通过计算支持度值找到所有网页的频率检索。模式由查询、用户位置和检索页面组成。加权分数计算阶段计算模式的加权分数,并根据最高分数对结果进行排序。实验结果表明,该方法在查准率和查全率方面都达到了较高的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Location-based Ranking Method (LBRM) for ranking search results in search engines
Web search engine provides information for the submitted query of the users, without consideration of user's interests. Personalized Web search is used to consider the user interests for providing the results. Existing research Link-click-concept based ranking (LC2R) algorithm is suggested that extracts a user's conceptual preferences from users' click through data resulted from web search. This preference is used to rank the results in a search engine. But the location effects of the users are taken into consideration. In this manuscript, an innovative technique is introduced called Location-based Ranking Method (LBRM) for Ranking Search Results in the search engine. The users have to search at different locations and acquire different search results. This method consists of three phases: Similarity identification, Computation of frequent-access pattern and Weighted score computation. In the similarity identification phase, the location and page similarity is identified by computing similarity among the locations and retrieval pages. In the computation of frequent-access pattern, find all the frequent-retrieval of the web pages by computing the support value. The Pattern consists of Query, Location of the user and retrieved pages. Weighted score computation phase computes the weighted score for the patterns and rank the results based on the highest score. An experimental result shows that the proposed method achieves high efficiency in terms of precision and recall.
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