An Improved Item-based Collaborative Filtering Recommendation System

Lan-jun YAO, Li-hong SHANG, Mi ZHOU

Abstract


Today E-commerce is very popular, recommendation systems are very widely applied to various sites [1]. However, there still remains many problems in current recommendation system to be resolved. Given the data sparse problem in the traditional collaborative filter algorithm, we will introduce the relationship of the trust between the items, and transmit the similarity throughout it. In this paper, Experiment shows that the accuracy and coverage rate of the algorithm have been improved.

Keywords


Item-based collaborative filtering, Similarity transmit, Trust network


DOI
10.12783/dtcse/aics2016/8216

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