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Entropic Mirror Descent for Linear Systems: Polyak's Stepsize and Implicit Bias

5 May 2025
Yura Malitsky
Alexander Posch
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Abstract

This paper focuses on applying entropic mirror descent to solve linear systems, where the main challenge for the convergence analysis stems from the unboundedness of the domain. To overcome this without imposing restrictive assumptions, we introduce a variant of Polyak-type stepsizes. Along the way, we strengthen the bound for ℓ1\ell_1ℓ1​-norm implicit bias, obtain sublinear and linear convergence results, and generalize the convergence result to arbitrary convex LLL-smooth functions. We also propose an alternative method that avoids exponentiation, resembling the original Hadamard descent, but with provable convergence.

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@article{malitsky2025_2505.02614,
  title={ Entropic Mirror Descent for Linear Systems: Polyak's Stepsize and Implicit Bias },
  author={ Yura Malitsky and Alexander Posch },
  journal={arXiv preprint arXiv:2505.02614},
  year={ 2025 }
}
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