Applying SVD on item-based filtering

M. Vozalis, K. Margaritis
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引用次数: 53

Abstract

In this paper we examine the use of a matrix factorization technique called singular value decomposition (SVD) in item-based collaborative filtering. After a brief introduction to SVD and some of its previous applications in recommender systems, we proceed with a full description of our algorithm, which uses SVD in order to reduce the dimension of the active item's neighborhood. The experimental part of this work first locates the ideal parameter settings for the algorithm, and concludes by contrasting it with plain item-based filtering which utilizes the original, high dimensional neighborhood. The results show that a reduction in the dimension of the item neighborhood is promising, since it does not only tackle some of the recorded problems of recommender systems, but also assists in increasing the accuracy of systems employing it.
将奇异值分解应用于基于项的过滤
在本文中,我们研究了一种称为奇异值分解(SVD)的矩阵分解技术在基于项目的协同过滤中的应用。在简要介绍了SVD及其之前在推荐系统中的一些应用之后,我们继续对我们的算法进行全面描述,该算法使用SVD来降低活动项目的邻域维数。本工作的实验部分首先确定了算法的理想参数设置,并将其与利用原始高维邻域的普通基于项的滤波进行了对比。结果表明,降低项目邻域的维度是有希望的,因为它不仅解决了推荐系统的一些记录问题,而且还有助于提高使用它的系统的准确性。
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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