An Improved Collaborative Filtering Model Considering Item Similarity

Yefei Zha, Yuqing Zhai
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引用次数: 2

Abstract

Because of its simplicity and effectiveness, collaborative filtering (CF) became one of the most successful recommendation algorithms. User-based CF is one classic method of CF algorithms. In order to solve the problem that common rating items are often too few to be used to effectively calculate the similarity of two users in user-based CF, we proposed an improved collaborative filtering model with item similarity called ISCF in this paper. In ISCF model, the similarity of items was considered in user-based collaborative filtering, which contributes to alleviate the problem of data sparsity and therefore calculate the similarity of user. Experimental results illustrate that our approach ISCF outperforms the average method and user-based CF. Compared with user-based CF, the average improvement in the percentage of ISCF at MAE and RMSE are 21.9% and 17.7%, respectively. In addition, our approach ISCF can predict more items than user-based CF, and the average improvement in the percentage of ISCF at prediction diversity is 33.86%.
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考虑项目相似度的改进协同过滤模型
协同过滤(CF)以其简单、有效的特点,成为目前最成功的推荐算法之一。基于用户的CF是CF算法的一种经典方法。为了解决基于用户的CF中常用评分项太少而无法有效计算两个用户相似度的问题,本文提出了一种改进的基于项相似度的协同过滤模型ISCF。在ISCF模型中,在基于用户的协同过滤中考虑了项目的相似度,有助于缓解数据稀疏性问题,从而计算用户的相似度。实验结果表明,我们的方法ISCF优于平均方法和基于用户的CF。与基于用户的CF相比,在MAE和RMSE下ISCF的平均百分比分别提高了21.9%和17.7%。此外,我们的方法ISCF比基于用户的CF可以预测更多的项目,ISCF在预测多样性方面的平均改进百分比为33.86%。
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