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Aggregate Two-Way Co-Clustering of Ads and User Data for Online Advertisements

机译:在线广告的广告和用户数据的双向双向汇总

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Clustering plays an important role in data mining, as it is used by many applications as a preprocessing step for data analysis. Traditional clustering focuses on grouping similar objects, while two-way co-clustering can group dyadic data (objects as well as their attributes) simultaneously. In this research, we apply two-way co-clustering to the analysis of online advertising where both ads and users need to be clustered. However, in addition to the ad-user link matrix that denotes the ads which a user has linked, we also have two additional matrices, which represent extra information about users and ads. In this paper, we proposed a 3-staged clustering method that makes use of the three data matrices to enhance clustering performance. In addition, an Iterative Cross Co-Clustering (ICCC) algorithm is also proposed for two-way co-clustering. The experiment is performed using the advertisement and user data from Morgenstern, a financial social website that focuses on the agency of advertisements. The result shows that iterative cross co-clustering provides better performance than traditional clustering and completes the task more efficiently.
机译:集群在数据挖掘中起着重要作用,因为它被许多应用程序用作数据分析的预处理步骤。传统的聚类集中于对相似的对象进行分组,而双向共聚可以同时对二进位数据(对象及其属性)进行分组。在这项研究中,我们将双向联合聚类应用于需要将广告和用户都聚在一起的在线广告分析。但是,除了表示用户已链接广告的广告用户链接矩阵之外,我们还有两个附加矩阵,它们代表有关用户和广告的额外信息。在本文中,我们提出了一种三阶段聚类方法,该方法利用三个数据矩阵来增强聚类性能。另外,还提出了一种双向交叉交叉聚类算法(ICCC)。该实验是使用广告和来自Morgenstern的用户数据执行的,Morgenstern是一家专注于广告代理的金融社交网站。结果表明,迭代交叉协同集群提供的性能比传统集群更好,并且可以更高效地完成任务。

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