Erich P. Stuntebeck, John S. Davis II, et al.
HotMobile 2008
Recommender systems use historical data on user prefer- ences and other available data on users (e.g., demographics) and items (e.g., taxonomy) to predict items a new user might like. Applications of these methods include recommending items for purchase and per- sonalizing the browsing experience on a web-site. Collaborative filter- ing methods have focused on using just the history of user preferences to make the recommendations. These methods have been categorized as memory-based if they operate over the entire data to make predic- tions and as model-based if they use the data to build a model which is then used for predictions. In this paper, we propose the use of lin- ear classifiers in a model-based recommender system. We compare our method with another model-based method using decision trees and with memory-based methods using data from various domains. Our experi- mental results indicate that these linear models are well suited for this application. They outperform the commonly proposed approach using a memory-based method in accuracy and also have a better tradeoff be- tween off-line and on-line computational requirements.
Erich P. Stuntebeck, John S. Davis II, et al.
HotMobile 2008
Pradip Bose
VTS 1998
Raymond Wu, Jie Lu
ITA Conference 2007
Ehud Altman, Kenneth R. Brown, et al.
PRX Quantum