2022
DOI: 10.1007/s11222-022-10169-0
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A phase transition for finding needles in nonlinear haystacks with LASSO artificial neural networks

Abstract: To fit sparse linear associations, a LASSO sparsity inducing penalty with a single hyperparameter provably allows to recover the important features (needles) with high probability in certain regimes even if the sample size is smaller than the dimension of the input vector (haystack). More recently learners known as artificial neural networks (ANN) have shown great successes in many machine learning tasks, in particular fitting nonlinear associations. Small learning rate, stochastic gradient descent algorithm a… Show more

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