利用奇异值分解近似进行协同滤波

Sheng Zhang, Weihong Wang, J. Ford, F. Makedon, J. Pearlman
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引用次数: 137

摘要

奇异值分解(SVD)和期望最大化(EM)过程可以用来找到一个低维模型,使推荐系统中观察到的评分的对数似然最大化。然而,这种方法的计算成本是一个主要问题,因为EM算法的每次迭代都需要新的SVD计算。我们提出了一种新的算法,将SVD近似纳入EM过程,以降低总体计算成本,同时保持准确的预测。此外,我们提出了一个分布式推荐系统中协作过滤的新框架,该框架允许用户维护自己的评级文件以保护隐私。服务器定期收集在线用户的汇总信息,为所有用户提供预测。理论分析和实验结果表明,该框架是有效的,可以达到与集中式系统几乎相同的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using singular value decomposition approximation for collaborative filtering
Singular value decomposition (SVD), together with the expectation-maximization (EM) procedure, can be used to find a low-dimension model that maximizes the log-likelihood of observed ratings in recommendation systems. However, the computational cost of this approach is a major concern, since each iteration of the EM algorithm requires a new SVD computation. We present a novel algorithm that incorporates SVD approximation into the EM procedure to reduce the overall computational cost while maintaining accurate predictions. Furthermore, we propose a new framework for collaborating filtering in distributed recommendation systems that allows users to maintain their own rating profiles for privacy. A server periodically collects aggregate information from those users that are online to provide predictions for all users. Both theoretical analysis and experimental results show that this framework is effective and achieves almost the same prediction performance as that of centralized systems.
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