2023
DOI: 10.4018/ijwsr.334703
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A Quasi-Newton Matrix Factorization-Based Model for Recommendation

Shiyun Shao,
Yunni Xia,
Kaifeng Bai
et al.

Abstract: Solving large-scale non-convex optimization problems is the fundamental challenge in the development of matrix factorization (MF)-based recommender systems. Unfortunately, employing conventional first-order optimization approaches proves to be an arduous endeavor since their curves are very complex. The exploration of second-order optimization methods holds great promise. They are more powerful because they consider the curvature of the optimization problem, which is captured by the second-order derivatives of… Show more

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