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A Monte-Carlo simulation application for automatic new topic identification of search engine transaction logs

机译:用于自动识别搜索引擎交易日志的蒙特卡洛模拟应用程序

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摘要

One of the most important dimensions of Web user information seeking behavior and search engine research is content-based behavior, and limited research has focused on content-based behavior of search engine users. The purpose of this study is to perform automatic new topic identification in search engine transaction logs using Monte-Carlo simulation. Sample data logs from FAST and Excite are used in the study. Findings show that Monte-Carlo simulation for new topic identification yields satisfactory results in terms of identifying topic continuations; however, the performance measures regarding topic shifts should be improved.
机译:Web用户信息搜索行为和搜索引擎研究的最重要方面之一是基于内容的行为,而有限的研究集中在搜索引擎用户的基于内容的行为上。这项研究的目的是使用蒙特卡洛模拟在搜索引擎交易日志中执行自动的新主题识别。研究中使用了FAST和Excite的样本数据日志。结果表明,对于新主题识别的蒙特卡罗模拟在识别主题延续性方面产生了令人满意的结果;但是,应该改进有关主题转移的绩效指标。

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