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COLLABORATIVE FILTERING VIA CO-FACTORIZATION OF INDIVIDUALS AND GROUPS
MPhil Thesis Defence Title: "COLLABORATIVE FILTERING VIA CO-FACTORIZATION OF INDIVIDUALS AND GROUPS" By Mr. Yihai HUANG Abstract Matrix factorization is one of the most successful collaborative filtering methods for recommender systems. Traditionally, matrix factorization only makes use of observed user-item feedback information so that predictions of cold users/items are difficult. In many real recommender systems, there is also available content information that has been successfully used in content-based methods. Thus in recent years, there is some work on how to incorporate content information into matrix factorization models and Factorization Machine(FM) is one of the most powerful integrated models among them. However, FM is originally designed as a generalized factorization model that models pairwise interactions between all features into a latent feature space. We find some issues of applying FM directly in the area of recommender system. In this thesis, we propose a novel matrix co-factorization model to solve some key limitations of Factorization Machine. Experimental results on benchmark data sets show that the method outperforms baseline methods especially for cold users and cold items. Date: Wednesday, 6 May 2015 Time: 4:30pm - 6:30pm Venue: Room 3501 Lifts 25/26 Committee Members: Prof. James Kwok (Supervisor) Prof. Dit-Yan Yeung (Chairperson) Dr. Pan Hui **** ALL are Welcome ****