2022
DOI: 10.48550/arxiv.2207.01602
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Minimax Optimal Deep Neural Network Classifiers Under Smooth Decision Boundary

Abstract: Deep learning has gained huge empirical successes in large-scale classification problems. In contrast, there is a lack of statistical understanding about deep learning methods, particularly in the minimax optimality perspective. For instance, in the classical smooth decision boundary setting, existing deep neural network (DNN) approaches are rate-suboptimal, and it remains elusive how to construct minimax optimal DNN classifiers. Moreover, it is interesting to explore whether DNN classifiers can circumvent the… Show more

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References 27 publications
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