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arxiv: 1804.05090 · v1 · pith:MCNUHVOHnew · submitted 2018-04-13 · 💻 cs.LG · cs.IR· stat.ML

Regularized Singular Value Decomposition and Application to Recommender System

classification 💻 cs.LG cs.IRstat.ML
keywords rsvddecompositionanalysisapplicationmathematicalrecommenderregularizedsingular
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Singular value decomposition (SVD) is the mathematical basis of principal component analysis (PCA). Together, SVD and PCA are one of the most widely used mathematical formalism/decomposition in machine learning, data mining, pattern recognition, artificial intelligence, computer vision, signal processing, etc. In recent applications, regularization becomes an increasing trend. In this paper, we present a regularized SVD (RSVD), present an efficient computational algorithm, and provide several theoretical analysis. We show that although RSVD is non-convex, it has a closed-form global optimal solution. Finally, we apply RSVD to the application of recommender system and experimental result show that RSVD outperforms SVD significantly.

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