DocumentCode
3166705
Title
Clustering on Multiple Incomplete Datasets via Collective Kernel Learning
Author
Weixiang Shao ; Xiaoxiao Shi ; Yu, Philip S.
Author_Institution
Dept. of Comput. Sci., Univ. of Illinois at Chicago, Chicago, IL, USA
fYear
2013
fDate
7-10 Dec. 2013
Firstpage
1181
Lastpage
1186
Abstract
Multiple datasets containing different types of features may be available for a given task. For instance, users´ profiles can be used to group users for recommendation systems. In addition, a model can also use users´ historical behaviors and credit history to group users. Each dataset contains different information and suffices for learning. A number of clustering algorithms on multiple datasets were proposed during the past few years. These algorithms assume that at least one dataset is complete. So far as we know, all the previous methods will not be applicable if there is no complete dataset available. However, in reality, there are many situations where no dataset is complete. As in building a recommendation system, some new users may not have profiles or historical behaviors, while some may not have credit history. Hence, no available dataset is complete. In order to solve this problem, we propose an approach called Collective Kernel Learning to infer hidden sample similarity from multiple incomplete datasets. The idea is to collectively completes the kernel matrices of incomplete datasets by optimizing the alignment of shared instances of the datasets. Furthermore, a clustering algorithm is proposed based on the kernel matrix. The experiments on both synthetic and real datasets demonstrate the effectiveness of the proposed approach. The proposed clustering algorithm outperforms the comparison algorithms by as much as two times in normalized mutual information.
Keywords
learning (artificial intelligence); pattern clustering; recommender systems; collective kernel learning; credit history; incomplete dataset kernel matrices; multiple incomplete dataset clustering; normalized mutual information; real dataset; recommendation systems; synthetic dataset; user historical behavior; user profiles; Algorithm design and analysis; Clustering algorithms; Correlation; Equations; Kernel; Laplace equations; Optimization;
fLanguage
English
Publisher
ieee
Conference_Titel
Data Mining (ICDM), 2013 IEEE 13th International Conference on
Conference_Location
Dallas, TX
ISSN
1550-4786
Type
conf
DOI
10.1109/ICDM.2013.117
Filename
6729618
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