Jan. 1, 2023, midnight | Alexander Tsigler, Peter L. Bartlett

JMLR www.jmlr.org

In many modern applications of deep learning the neural network has many more parameters than the data points used for its training. Motivated by those practices, a large body of recent theoretical research has been devoted to studying overparameterized models. One of the central phenomena in this regime is the ability of the model to interpolate noisy data, but still have test error lower than the amount of noise in that data. arXiv:1906.11300 characterized for which covariance structure of the …

applications arxiv covariance data deep learning error linear linear regression modern applications network neural network noise overfitting practices regression research ridge solution studying test training

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