会议论文详细信息
5th Asian Conference on Machine Learning
Novel Boosting Frameworks to Improve the Performance of Collaborative Filtering
数学科学;计算机科学
Xiaotian Jiang 0532yangya@163.com ; Jiamin Guo minminte@hotmail.com ; Zihan Lin linzihan@bit.edu.cn ; Qian Zhou 2120111231@bit.edu.cn
PID  :  123066
来源: CEUR
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【 摘 要 】

Recommender systems are often based on collaborative filtering. Previous researches on collaborative filtering mainly focus on one single recommender or formulating hybrid with different approaches. In consideration of the problems of sparsity, recommender error rate, sample weight update, and potential, we adapt AdaBoost and propose two novel boosting frameworks for collaborative filtering. Each of the frameworks combines multiple homogeneous recommenders, which are based on the same collaborative filtering algorithm with different sample weights. We use seven popular collaborative filtering algorithms to evaluate the two frameworks with two MovieLens datasets of different scale. Experimental result shows the proposed frameworks improve the performance of collaborative filtering.

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