2019
DOI: 10.48550/arxiv.1911.05206
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Shadowing Properties of Optimization Algorithms

Abstract: Ordinary differential equation (ODE) models of gradient-based optimization methods can provide insights into the dynamics of learning and inspire the design of new algorithms. Unfortunately, this thought-provoking perspective is weakened by the fact that -in the worst case -the error between the algorithm steps and its ODE approximation grows exponentially with the number of iterations. In an attempt to encourage the use of continuous-time methods in optimization, we show that, if some additional regularity on… Show more

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References 28 publications
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