Simultaneous approximation of a smooth function and its derivatives by deep neural networks with piecewise-polynomial activations
This paper investigates the approximation properties of deep neural networks with piecewise-polynomial activation functions. We derive the required depth, width, and sparsity of a deep neural network to approximate any H\"{o}lder smooth function up to a given approximation error in H\"{o}l...
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Zusammenfassung: | This paper investigates the approximation properties of deep neural networks
with piecewise-polynomial activation functions. We derive the required depth,
width, and sparsity of a deep neural network to approximate any H\"{o}lder
smooth function up to a given approximation error in H\"{o}lder norms in such a
way that all weights of this neural network are bounded by $1$. The latter
feature is essential to control generalization errors in many statistical and
machine learning applications. |
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DOI: | 10.48550/arxiv.2206.09527 |