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首页> 外文期刊>International journal of data analysis techniques and strategies >An efficient semantic clustering of URLs for web page recommendation
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An efficient semantic clustering of URLs for web page recommendation

机译:用于网页推荐的URL的有效语义聚类

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摘要

Document clustering is a process of text-mining in which documents with similar contents are considered in one cluster while dissimilar documents are considered in other cluster. The number of texts and hypertext documents are growing quickly due to growing speed of WWW and it has become a very challenging task to discover the truly relevant content for some user or purpose due to the huge size, high dynamics and large diversity of the web. There are several web browsers, which use web pages to retrieve information in the form of image, audio, video, text through URLs. There are some URLs, which are used frequently by web users. In this paper, an efficient semantic clustering (ESC) algorithm is proposed in which the number of URLs are clustered together to find larger clusters of most frequent URLs. The ESC algorithm is experimented on two large datasets for semantic clustering. The proposed approach will be useful to recommend most appropriate and relevant URLs to the web users according to their query.
机译:文档聚类是一种文本挖掘过程,其中在一个聚类中考虑内容相似的文档,而在另一聚类中考虑不相似的文档。随着WWW的发展,文本和超文本文档的数量正在迅速增长,并且由于网络的巨大规模,高动态性和多样性,为某些用户或目的发现真正相关的内容已成为一项非常具有挑战性的任务。有几种网络浏览器,它们使用网页通过URL检索图像,音频,视频,文本形式的信息。有一些URL,Web用户经常使用。在本文中,提出了一种有效的语义聚类(ESC)算法,其中将URL的数量聚在一起,以找到频率最高的URL的较大聚类。在两个大型数据集上对ESC算法进行了实验,以进行语义聚类。所提出的方法将有助于根据用户的查询向Web用户推荐最合适和最相关的URL。

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