A Combined Predictor for Item-Based Collaborative Filtering

Zhonghuo Wu, Jun Zheng, Su Wang, Hongfeng Feng
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引用次数: 2

Abstract

Collaborative filtering is one of most important technologies in the field of recommender systems, the process of making predictions about user preferences for products or services by learning known user-item relationships. In this paper, slope one and item-based nearest neighbor collaborative filtering algorithms are analyzed on the Movie Lens dataset. In order to obtain better accuracy and rationality, a new combined approach is proposed that takes advantages of slope one and item-based nearest neighbor model. In addition, simple gradient descent and bias effects are used further to improve performance. Finally, some experiments are implemented on the dataset, and the experimental results show that the proposed final solution achieves great improvement of prediction accuracy when compared to the method of using slope one or item-based nearest neighbor model alone.
基于项目协同过滤的组合预测器
协同过滤是推荐系统中最重要的技术之一,它通过学习已知的用户-物品关系来预测用户对产品或服务的偏好。本文在Movie Lens数据集上分析了斜率1和基于项目的最近邻协同过滤算法。为了获得更好的准确性和合理性,提出了一种新的结合斜率1和基于项目的最近邻模型的组合方法。此外,还使用了简单的梯度下降和偏置效应来进一步提高性能。最后,在数据集上进行了实验,实验结果表明,与单独使用斜率1或基于项的最近邻模型的方法相比,所提出的最终解决方案的预测精度有很大提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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