2021
DOI: 10.48550/arxiv.2105.03788
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Dynamic Game Theoretic Neural Optimizer

Guan-Horng Liu,
Tianrong Chen,
Evangelos A. Theodorou

Abstract: The connection between training deep neural networks (DNNs) and optimal control theory (OCT) has attracted considerable attention as a principled tool of algorithmic design. Despite few attempts being made, they have been limited to architectures where the layer propagation resembles a Markovian dynamical system. This casts doubts on their flexibility to modern networks that heavily rely on non-Markovian dependencies between layers (e.g. skip connections in residual networks). In this work, we propose a novel … Show more

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