基于多项式回归的协同过滤推荐模型

Houkun Zhu, Yuan Luo, Chuliang Weng, Minglu Li
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引用次数: 4

摘要

在网格环境中,当网格用户面临大量未知的安全网格服务时,协同过滤(CF)可以用于安全推荐。此外,CF推荐系统可以应用于虚拟机管理平台中,对每个虚拟机的可信度进行度量。本研究在典型的基于用户的CF的基础上,构建了基于多项式回归的推荐模型进行安全推荐。在该模型中,根据不同的回归顺序和数据集大小,导出了基于多项式回归的推荐算法聚类。从实验中,我们发现了三个重要的结论。首先,回归阶数越低的算法预测效果越好。其次,在每个固定回归顺序的算法中,最好的算法通常满足其数据集大小与其回归顺序相等。第三,选择合适的回归顺序和数据集大小可以提高推荐质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Collaborative Filtering Recommendation Model Using Polynomial Regression Approach
In gird environment, collaborative filtering (CF) could be used for security recommendation when grid users face plenty of unknown security grid services. Also, CF recommender systems could be employed in the virtual machines managing platform to measure the creditability of each virtual machine. In this study, a polynomial regression based recommendation model on the basis of typical user-based CF is built to make security recommendation. In the model, a cluster of recommendation algorithms based on polynomial regression are derived according to various regression orders and dataset sizes. From our experiments, three significant conclusions are discovered in this model. Firstly, algorithms with lower regression orders make better predictions. Secondly, among algorithms with each fixed regression order, the best one satisfies that its dataset size is equal to its regression order in general. Thirdly, selecting appropriate regression order and dataset size could enhance recommendation quality.
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