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  • title: Learning-to-learn piecewise-Lipschitz functions
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            Learning-to-learn piecewise-Lipschitz functions
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            Learning-to-learn piecewise-Lipschitz functions

            Dec 6, 2021

            Speakers

            NB

            Nina Balcan

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            Misha Khodak

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            DS

            Dravyansh Sharma

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            About

            We analyze the meta-learning of the initialization and step-size of learning algorithms for piecewise-Lipschitz functions, a non-convex setting with applications to both machine learning and algorithms. Starting from recent regret bounds for the exponential forecaster on losses with dispersed discontinuities, we generalize them to be initialization-dependent and then use this result to propose a practical meta-learning procedure that learns both the initialization and the step-size of the algori…

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            NeurIPS 2021

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