Improved recommendation system via propagated neighborhoods based collaborative filtering

Hao Ji, Xuan Chen, M. He, Jinfeng Li, Changrui Ren
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引用次数: 1

Abstract

In this paper, a new two levels propagated neighborhoods based collaborative filtering method (PNCF) is proposed for developing effective and efficient recommendation system. Traditional collaborative filtering (CF) algorithms focus on construct k-nearest neighborhood for each item/user from user-item purchase/rating matrix, such as item-based k-nearest-neighbor collaborative filtering method (itemKNN) and user-based k-nearest-neighbor collaborative filtering method (userKNN). However, the utilization of K-nearest neighborhood method for singe item/user always misses some nature neighbors due to inevitable data noise and data sparsity, resulting in poor prediction accuracy. A novel two levels propagated neighborhoods construction strategy is introduced in PNCF to complement traditional K-nearest neighborhood method, uncovering the underlying neighborhood relationship of each data sample. Furthermore, utilizing propagated neighborhoods improves the recommendation quality. Numerous experiments on MovieLens data set show the superiority of our approach over current state of the art recommendation methods.
基于传播邻域协同过滤的推荐系统改进
为了开发高效的推荐系统,本文提出了一种新的基于两层传播邻域的协同过滤方法(PNCF)。传统的协同过滤算法侧重于从用户-物品购买/评价矩阵中为每个物品/用户构建k近邻,如基于物品的k近邻协同过滤方法(itemKNN)和基于用户的k近邻协同过滤方法(userKNN)。然而,由于不可避免的数据噪声和数据稀疏性,使用k近邻方法对单个物品/用户的预测往往会遗漏一些自然邻居,导致预测精度较差。在PNCF中引入了一种新的两层传播邻域构建策略,以补充传统的k近邻方法,揭示每个数据样本的潜在邻域关系。此外,利用传播的邻域可以提高推荐质量。在MovieLens数据集上的大量实验表明,我们的方法优于当前最先进的推荐方法。
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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