Title :
Enhancing personalized ranking quality through multidimensional modeling of inter-item competition
Author :
Feng, Qinyuan ; Liu, Ling ; Sun, Yan Lindsay ; Yu, Ting ; Dai, Yafei
Author_Institution :
Peking Univ., Beijing, China
Abstract :
This paper presents MAPS - a personalized Multi-Attribute Probabilistic Selection framework - to estimate the probability of an item being a user´s best choice and rank the items accordingly. The MAPS framework makes three original contributions in this paper. First, we capture the inter-attribute tradeoff by a visual angle model which maps multi-attribute items into points (stars) in a multidimensional space (sky). Second, we model the inter-item competition using the dominating areas of the stars. Third, we capture the user´s personal preferences by a density function learned from his/her history. The MAPS framework carefully combines all three factors to estimate the probability of an item being a user´s best choice, and produces a personalized ranking accordingly. We evaluate the accuracy of MAPS through extensive simulations. The results show that MAPS significantly outperforms existing multi-attribute ranking algorithms.
Keywords :
groupware; probability; social networking (online); MAPS; collaborative computing; inter item competition; multi attribute probabilistic selection framework; multidimensional modeling; personalized ranking quality enhancement; social networking; Collaboration; Communities; Concrete; Gallium; Irrigation; USA Councils;
Conference_Titel :
Collaborative Computing: Networking, Applications and Worksharing (CollaborateCom), 2010 6th International Conference on
Conference_Location :
Chicago, IL
Print_ISBN :
978-963-9995-24-6