(S)GD over Diagonal Linear Networks: Implicit bias, Large Stepsizes and Edge of Stability

Part of Advances in Neural Information Processing Systems 36 (NeurIPS 2023) Main Conference Track

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Authors

Mathieu Even, Scott Pesme, Suriya Gunasekar, Nicolas Flammarion

Abstract

In this paper, we investigate the impact of stochasticity and large stepsizes on the implicit regularisation of gradient descent (GD) and stochastic gradient descent (SGD) over $2$-layer diagonal linear networks. We prove the convergence of GD and SGD with macroscopic stepsizes in an overparametrised regression setting and characterise their solutions through an implicit regularisation problem. Our crisp characterisation leads to qualitative insights about the impact of stochasticity and stepsizes on the recovered solution. Specifically, we show that large stepsizes consistently benefit SGD for sparse regression problems, while they can hinder the recovery of sparse solutions for GD. These effects are magnified for stepsizes in a tight window just below the divergence threshold, in the ``edge of stability'' regime. Our findings are supported by experimental results.