Modified Gauss-Newton Algorithms under Noise

Citation:

K. Pillutla, V. Roulet, S. Kakade, and Z. Harchaoui, “Modified Gauss-Newton Algorithms under Noise,” IEEE SSP, 2023.

Abstract:

Gauss-Newton methods and their stochastic version have been widely used in machine learning and signal processing. Their nonsmooth counterparts, modified Gauss-Newton or prox-linear algorithms, can lead to contrasting outcomes when compared to gradient descent in large-scale statistical settings. We explore the contrasting performance of these two classes of algorithms in theory on a stylized statistical example, and experimentally on learning problems including structured prediction. In theory, we delineate the regime where the quadratic convergence of the modified Gauss-Newton method is active under statistical noise. In the experiments, we underline the versatility of stochastic (sub)-gradient descent to minimize nonsmooth composite objectives.

arXiv Version

See also: 2023
Last updated on 12/11/2023