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Gradient descent in matrix factorization: Understanding large initialization

30 May 2023
Hengchao Chen
Xin Chen
Mohamad Elmasri
Qiang Sun
    AI4CE
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Abstract

Gradient Descent (GD) has been proven effective in solving various matrix factorization problems. However, its optimization behavior with large initial values remains less understood. To address this gap, this paper presents a novel theoretical framework for examining the convergence trajectory of GD with a large initialization. The framework is grounded in signal-to-noise ratio concepts and inductive arguments. The results uncover an implicit incremental learning phenomenon in GD and offer a deeper understanding of its performance in large initialization scenarios.

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