Title :
A Comparison of Collaborative-Filtering Recommendation Algorithms for E-commerce
Author :
Huang, Zan ; Zeng, Daniel ; Chen, Hsinchun
Author_Institution :
Pennsylvania State Univ, James City
Abstract :
Collaborative filtering is one of the most widely adopted and successful recommendation approaches. Unlike approaches based on intrinsic consumer and product characteristics, CF characterizes consumers and products implicitly by their previous interactions. The simplest example is to recommend the most popular products to all consumers. Researchers are advancing CF technologies in such areas as algorithm design, human- computer interaction design, consumer incentive analysis, and privacy protection.
Keywords :
electronic commerce; groupware; information filtering; information filters; algorithm design; collaborative-filtering recommendation algorithms e-commerce; consumer incentive analysis; human- computer interaction design; intrinsic consumer; privacy protection; product characteristics; recommendation approaches; Aggregates; Algorithm design and analysis; Collaboration; Feedback; Filtering algorithms; Guidelines; Optical wavelength conversion; Prediction algorithms; Privacy; Protection; algorithm design and evaluation; collaborative filtering; e-commerce; recommender systems;
Journal_Title :
Intelligent Systems, IEEE
DOI :
10.1109/MIS.2007.4338497