An item-oriented recommendation algorithm on cold-start problem

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Published 18 August 2011 Europhysics Letters Association
, , Citation Tian Qiu et al 2011 EPL 95 58003 DOI 10.1209/0295-5075/95/58003

0295-5075/95/5/58003

Abstract

Based on a hybrid algorithm incorporating the heat conduction and probability spreading processes (Proc. Natl. Acad. Sci. U.S.A., 107 (2010) 4511), in this letter, we propose an improved method by introducing an item-oriented function, focusing on solving the dilemma of the recommendation accuracy between the cold and popular items. Differently from previous works, the present algorithm does not require any additional information (e.g., tags). Further experimental results obtained in three real datasets, RYM, Netflix and MovieLens, show that, compared with the original hybrid method, the proposed algorithm significantly enhances the recommendation accuracy of the cold items, while it keeps the recommendation accuracy of the overall and the popular items. This work might shed some light on both understanding and designing effective methods for long-tailed online applications of recommender systems.

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10.1209/0295-5075/95/58003