Regularization Matters: A Nonparametric Perspective on Overparametrized Neural Network

Wang, Wenjia, Hu, Tianyang, Lin, Cong, Cheng, Guang

arXiv.org Machine Learning 

Overparametrized neural networks trained by gradient descent (GD) can provably overfit any training data. However, the generalization guarantee may not hold for noisy data. From a nonparametric perspective, this paper studies how well overparametrized neural networks can recover the true target function in the presence of random noises.

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