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Feature-based and Clique-based User Models for Movie Selection: A Comparative Study
Authors:Alspector  Joshua  Koicz  Aleksander  Karunanithi  N
Affiliation:(1) ECE Department, University of Colorado, Colorado Springs, Colorado, 90918, U.S.A.;(2) IF-319B, Bellcore, 445 South Street, Morristown, NJ, 07960
Abstract:The huge amount of information available in the currently evolving world wide information infrastructure at any one time can easily overwhelm end-users. One way to address the information explosion is to use an ‘information filtering agent’ which can select information according to the interest and/or need of an end-user. However, at present few information filtering agents exist for the evolving world wide multimedia information infrastructure. In this study, we evaluate the use of feature-based approaches to user modeling with the purpose of creating a filtering agent for the video-on-demand application. We evaluate several feature and clique-based models for 10 voluntary subjects who provided ratings for the movies. Our preliminary results suggest that feature-based selection can be a useful tool to recommend movies according to the taste of the user and can be as effective as a movie rating expert. We compare our feature-based approach with a clique-based approach, which has advantages where information from other users is available. This revised version was published online in July 2006 with corrections to the Cover Date.
Keywords:User modeling  information filtering  collaborative filtering  feature extraction  neural networks  linear models  regression trees  bagging  CART
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