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Characterizing Implicit Bias in Terms of Optimization Geometry

2018-02-22ICML 2018Unverified0· sign in to hype

Suriya Gunasekar, Jason Lee, Daniel Soudry, Nathan Srebro

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Abstract

We study the implicit bias of generic optimization methods, such as mirror descent, natural gradient descent, and steepest descent with respect to different potentials and norms, when optimizing underdetermined linear regression or separable linear classification problems. We explore the question of whether the specific global minimum (among the many possible global minima) reached by an algorithm can be characterized in terms of the potential or norm of the optimization geometry, and independently of hyperparameter choices such as step-size and momentum.

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