A Personalized Recommendation Algorithm Based on Approximating the Singular Value Decomposition (ApproSVD)

Xun Zhou, Jing He, Guangyan Huang, Yanchun Zhang
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引用次数: 21

Abstract

Personalized recommendation is, according to the user's interest characteristics and purchasing behavior, to recommend information and goods to users in which they may be interested. With the rapid development of Internet technology, we have entered the era of information explosion, where huge amounts of information are presented at the same time. On one hand, it is difficult for the user to discover information in which he is most interested, on the other hand, general users experience difficult in obtaining information which very few people browse. In order to extract information in which the user is interested from a massive amount of data, we propose a personalized recommendation algorithm based on approximating the singular value decomposition (SVD) in this paper. SVD is a powerful technique for dimensionality reduction. However, due to its expensive computational requirements and weak performance for large sparse matrices, it has been considered inappropriate for practical applications involving massive data. Finally, we present an empirical study to compare the prediction accuracy of our proposed algorithm with that of Drineas's LINEARTIMESVD algorithm and the standard SVD algorithm on the Movie Lens dataset, and show that our method has the best prediction quality.
基于近似奇异值分解(ApproSVD)的个性化推荐算法
个性化推荐是根据用户的兴趣特征和购买行为,向用户推荐可能感兴趣的信息和商品。随着互联网技术的飞速发展,我们已经进入了信息爆炸时代,海量的信息同时呈现。一方面,用户很难发现自己最感兴趣的信息,另一方面,一般用户很难获得很少有人浏览的信息。为了从海量数据中提取用户感兴趣的信息,本文提出了一种基于近似奇异值分解(SVD)的个性化推荐算法。SVD是一种强大的降维技术。然而,由于其计算量大且对大型稀疏矩阵的性能较差,因此被认为不适合涉及海量数据的实际应用。最后,通过实证研究,将本文算法与Drineas的LINEARTIMESVD算法和标准SVD算法在Movie Lens数据集上的预测精度进行了比较,结果表明本文方法具有最佳的预测质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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