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Building a Post-search Academic Search Engine based on a serial of Clustering Methods

机译:基于串行方法构建搜索后的学术搜索引擎

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Academic search engines, such as Google Scholar and Scirus, provide a Web-based interface to effectively find relevant scientific articles to researchers. However, current academic search engines are lacking the ability to cluster the search results into a hierarchical tree structure. In this paper, we develop a post-search academic search engine by using a mixed clustering method. In this method, we first adopt a suffix tree clustering and a two-way hash mechanism to generate all meaningful labels. We then develop a divisive hierarchical clustering algorithm to organize the labels into a hierarchical tree. According to the results of experiments, we conclude that using our mixed clustering method to cluster the search results can give significant performance gains than current academic search engines. In this paper, we make two contributions. First, we present a high performance academic search engine based on our mixed clustering method. Second, we develop a divisive hierarchical clustering algorithm to organize all returned search results into a hierarchical tree structure.
机译:学术搜索引擎,如Google Scholar和Scirus,提供了基于网络的界面,以有效地查找相关的科学文章给研究人员。但是,目前的学术搜索引擎缺乏将搜索结果集成到层次结构树结构中的能力。在本文中,我们通过使用混合聚类方法开发搜索后的学术搜索引擎。在此方法中,我们首先采用后缀树群集和双向哈希机制来生成所有有意义的标签。然后,我们开发了一个分隔的分层聚类算法,将标签组织到分层树中。根据实验结果,我们得出的结论是,使用我们的混合聚类方法来聚类搜索结果可以提供比当前学术搜索引擎的显着性能提升。在本文中,我们做出了两项贡献。首先,我们基于我们的混合聚类方法展示了高性能的学术搜索引擎。其次,我们开发了一个分隔的分层聚类算法,将所有返回的搜索结果组织成分层树结构。

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