Hybrid collaborative filtering model for improved recommendation

Hao Ji, Jinfeng Li, Changrui Ren, M. He
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引用次数: 15

Abstract

Collaborative filtering (CF) based recommendation system, which can automatically predict unknown preference of a user to certain products and then generate meaningful recommendations using a explicit known ratings matrix, has become one of the most successful approaches in web-based activities such as e-commerce. As users will typically not bother to rate items they bought, data sparsity is one main challenge for CF task. Item-oriented CF algorithm and user-oriented CF algorithm are two state of the art techniques for recommendation system. However, the utilization of singe item similarity matrix or single user similarity matrix always results in poor prediction accuracy because of sparse data. In this paper, a new hybrid collaborative filtering model is proposed by combining item-based CF algorithm and user-based CF algorithm. Both item similarity matrix and user similarity matrix are considered in this hybrid CF model, which is more robust to sparse problem. Experimental results on MovieLens data set show the superiority of our approach over current state of the art methods.
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改进推荐的混合协同过滤模型
基于协同过滤(CF)的推荐系统能够自动预测用户对某些产品的未知偏好,然后使用明确的已知评级矩阵生成有意义的推荐,已成为电子商务等基于网络的活动中最成功的方法之一。由于用户通常不会费心对他们购买的商品进行评级,因此数据稀疏性是CF任务的一个主要挑战。面向项目的推荐算法和面向用户的推荐算法是目前推荐系统的两种最新技术。然而,由于数据稀疏,单项目相似度矩阵或单用户相似度矩阵的使用往往导致预测精度较差。本文将基于项目的协同过滤算法与基于用户的协同过滤算法相结合,提出了一种新的混合协同过滤模型。该混合CF模型同时考虑了项目相似矩阵和用户相似矩阵,对稀疏问题具有更强的鲁棒性。在MovieLens数据集上的实验结果表明,我们的方法比目前最先进的方法具有优越性。
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