Knowledge Discovery in a Recommender System: The Matrix Factorization Approach

Murchhana Tripathy, Santilata Champati, H. K. Bhuyan
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引用次数: 2

Abstract

Two famous matrix factorization techniques, the Singular Value Decomposition (SVD) and the Nonnegative Matrix Factorization (NMF), are popularly used by recommender system applications. Recommender system data matrices have many missing entries, and to make them suitable for factorization, the missing entries need to be filled. For matrix completion, we use mean, median and mode as three different cases of imputation. The natural clusters produced after factorization are used to formulate simple out-of-sample extension algorithms and methods to generate recommendation for a new user. Two cluster evaluation measures, Normalized Mutual Information (NMI) and Purity are used to evaluate the quality of clusters.
推荐系统中的知识发现:矩阵分解方法
两种著名的矩阵分解技术奇异值分解(SVD)和非负矩阵分解(NMF)被广泛应用于推荐系统。推荐系统数据矩阵中有许多缺失条目,为了使其适合因式分解,需要对缺失条目进行填充。对于矩阵补全,我们使用均值、中值和众数作为三种不同的补全情况。利用分解后产生的自然聚类来制定简单的样本外扩展算法和方法,为新用户生成推荐。使用归一化互信息(NMI)和纯度两个聚类评价指标来评价聚类的质量。
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