Globally Q-linear Gauss-Newton Method for Overparameterized Non-convex Matrix Sensing
–Neural Information Processing Systems
This paper focuses on the optimization of overparameterized, non-convex low-rank matrix sensing (LRMS)--an essential component in contemporary statistics and machine learning. Recent years have witnessed significant breakthroughs in first-order methods, such as gradient descent, for tackling this non-convex optimization problem. However, the presence of numerous saddle points often prolongs the time required for gradient descent to overcome these obstacles.
Neural Information Processing Systems
Mar-19-2026, 02:34:11 GMT
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