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Social recommendation algorithm based on stochastic gradient matrix decomposition in social network

机译:社会网络中基于随机梯度矩阵分解的社会推荐算法

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摘要

The revenue of an e-commerce system is affected directly by the prediction accuracy of recommendation system. Although recommendation systems have been comprehensively analyzed in the past decade, the study of social-based recommendation systems just started. In this paper, aiming at providing a general method for improving recommendation systems by incorporating social network information, we propose a social recommendation algorithm based on stochastic gradient matrix decomposition in social network so as to improve the prediction accuracy. This paper considered the social network as auxiliary information, and proposed a matrix factorization based on social recommendation algorithm, which systematically illustrate how to design a matrix factorization objective function with social regularization. It constructed a matrix with the social network and the user scoring matrix, and proposed a stochastic gradient descent algorithm for matrix factorization. The empirical analysis on two large datasets demonstrates our proposed algorithm has lower prediction error, and is obviously better than other state-of-the-art methods.
机译:电子商务系统的收入直接受到推荐系统的预测准确性的影响。尽管在过去十年中对推荐系统进行了全面分析,但是基于社会的推荐系统的研究才刚刚开始。本文针对通过融合社交网络信息提供改进推荐系统的通用方法,提出了一种基于随机梯度矩阵分解的社交推荐算法,以提高预测精度。本文以社交网络为辅助信息,提出了一种基于社交推荐算法的矩阵分解算法,系统地说明了如何利用社交规则化设计矩阵分解目标函数。它使用社交网络和用户评分矩阵构造了一个矩阵,并提出了一种用于矩阵分解的随机梯度下降算法。对两个大数据集的经验分析表明,我们提出的算法具有较低的预测误差,并且明显优于其他最新方法。

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