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A Survey on Web Mining with Matrix Approximation
PhD Qualifying Examination Title: "A Survey on Web Mining with Matrix Approximation" Mr. Bin CAO Abstract: Many learning and data mining problems involve dyadic data that can be represented by matrices. Matrix approximation models are im- portant tools to explore the structure underlying these dyadic data. In this survey, we give an overview on the matrix approximation mod- els developed in the literature. By decomposing the models to several components including loss function, constraints and regularization, we give discussions on each component. Besides single matrix approxi- mation models, we also survey the multiple matrices approximation models including tensor-based approaches and collective matrix fac- torization models. Furthermore, we discuss the applications of matrix approximation models in Web mining related to social networks and Web search. Date: Friday, 15 May 2009 Time: 10:00am-12:00noon Venue: Room 5504 lifts 25-26 Committee Members: Prof. Qiang Yang (Supervisor) Dr. James Kwok (Chairperson) Dr. Raymond Wong Prof. Dit-Yan Yeung **** ALL are Welcome ****