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Web Page Recommendation from Sparse Big Web Data

机译:稀疏大Web数据中的Web页面推荐

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In many real-life web applications, web surfers would like to get recommendation on which collections of web pages that would be interested to them or that they should follow. In order to discover this information and make recommendation, data analytics-and specially, association rule mining or web data mining-is in demand. Since its introduction, association rule mining has drawn attention of many researchers. Consequently, many association rule mining algorithms have been proposed for finding interesting relationships-in the form of association rules-among frequently occurring patterns. For instance, in IEEE/WIC/ACM WI 2016 and 2017, serial and parallel algorithms were proposed to find interesting web pages. However, like most of the existing association rule mining algorithms, these two algorithms also were not designed for mining big data. Moreover, the search space of web pages can sparse in the sense that web pages are connected to a small subset of all web pages in the search space. In this paper, we present a compact bitwise representation for web pages in the search space. Such a representation can then be used with a bitwise serial or parallel association rule mining system for web mining and recommendation. Evaluation results show the effectiveness of our compression and the practicality of our algorithm-which discovers popular pages on the web, which in turn gives the web surfers recommendation of web pages that might be interested to them-in real-life web applications.
机译:在许多现实生活中的Web应用程序中,网络冲浪者希望获得关于他们感兴趣或应该遵循的网页集合的推荐。为了发现此信息并提出建议,需要进行数据分析,尤其是关联规则挖掘或Web数据挖掘。自引入以来,关联规则挖掘吸引了许多研究人员的关注。因此,已经提出了许多关联规则挖掘算法,用于在频繁发生的模式中以关联规则的形式找到有趣的关系。例如,在IEEE / WIC / ACM WI 2016和2017中,提出了串行和并行算法来查找有趣的网页。但是,像大多数现有的关联规则挖掘算法一样,这两种算法也不是为挖掘大数据而设计的。此外,在网页被连接到搜索空间中所有网页的一小部分的意义上,网页的搜索空间可以稀疏。在本文中,我们为搜索空间中的网页提供了一种紧凑的按位表示形式。然后,可以将这种表示形式与按位串行或并行关联规则挖掘系统一起使用,以进行Web挖掘和推荐。评估结果表明,压缩的有效性和算法的实用性-发现了Web上受欢迎的页面,从而为网络冲浪者推荐了现实生活中的Web应用程序中可能感兴趣的网页。

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