4.7 Article

Training Two-Layer ReLU Networks with Gradient Descent is Inconsistent

Journal

JOURNAL OF MACHINE LEARNING RESEARCH
Volume 23, Issue -, Pages -

Publisher

MICROTOME PUBL

Keywords

Neural networks; consistency; gradient descent; initialization; neural tangent kernel

Funding

  1. Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) [EXC 2075-390740016]

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This study proves that two-layer (Leaky)ReLU networks initialized by the widely used method proposed by He et al. (2015) and trained using gradient descent on a least-squares loss are not universally consistent. In certain cases, the network can only find a bad local minimum and essentially performs linear regression, even for non-linear target functions.
We prove that two-layer (Leaky)ReLU networks initialized by e.g. the widely used method proposed by He et al. (2015) and trained using gradient descent on a least-squares loss are not universally consistent. Specifically, we describe a large class of one-dimensional data-generating distributions for which, with high probability, gradient descent only finds a bad local minimum of the optimization landscape, since it is unable to move the biases far away from their initialization at zero. It turns out that in these cases, the found network essentially performs linear regression even if the target function is non-linear. We further provide numerical evidence that this happens in practical situations, for some multi-dimensional distributions and that stochastic gradient descent exhibits similar behavior. We also provide empirical results on how the choice of initialization and optimizer can influence this behavior.

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