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Implicit Bias of Mirror Flow on Separable Data

18 June 2024
Scott Pesme
Radu-Alexandru Dragomir
Nicolas Flammarion
ArXiv (abs)PDFHTML
Abstract

We examine the continuous-time counterpart of mirror descent, namely mirror flow, on classification problems which are linearly separable. Such problems are minimised `at infinity' and have many possible solutions; we study which solution is preferred by the algorithm depending on the mirror potential. For exponential tailed losses and under mild assumptions on the potential, we show that the iterates converge in direction towards a ϕ∞\phi_\inftyϕ∞​-maximum margin classifier. The function ϕ∞\phi_\inftyϕ∞​ is the horizon function\textit{horizon function}horizon function of the mirror potential and characterises its shape `at infinity'. When the potential is separable, a simple formula allows to compute this function. We analyse several examples of potentials and provide numerical experiments highlighting our results.

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