Parameters as interacting particles: long time convergence and asymptotic error scaling of neural networks

Grant Rotskoff, Eric Vanden-Eijnden

Neural Information Processing Systems 

The performance of neural networks on high-dimensional data distributions suggests that it may be possible to parameterize a representation of a given high-dimensional function with controllably small errors, potentially outperforming standard interpolation methods. We demonstrate, both theoretically and numerically, that this is indeed the case.

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