題名: Aggregate Two-way Co-Clustering of Ads and User Analysis for Online Advertisements
作者: Wu, Meng-Lun
Chang, Chia-Hui
Liu, Rui-Zhe
Fan, Teng-Kai
關鍵字: co-clustering
decision tree
KL divergence
Dyadic data analysis; clustering evaluation
期刊名/會議名稱: 2010 ICS會議
摘要: 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. The key data that connect ads and users are contained in the user-ad link matrix, which denotes the ads that a user has linked. We proposed a three-staged clustering that makes use of the three data matrices to enhance clustering performance. In addition, an iterative cross co-clustering 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 agent of advertisements. The result shows that three staged clustering provides better performance than traditional clustering, while iterative co-clustering completes the task more efficiently.
日期: 2011-01-26T00:31:09Z
分類:2010年 ICS 國際計算機會議(如需查看全文,請連結至IEEE Xplore網站)

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