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Universal Function Approximation by Deep Neural Nets with Bounded Width and ReLU Activations

Author

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  • Boris Hanin

    (Department of Mathematics, Texas A&M, College Station, TX 77843, USA)

Abstract

This article concerns the expressive power of depth in neural nets with ReLU activations and a bounded width. We are particularly interested in the following questions: What is the minimal width w min ( d ) so that ReLU nets of width w min ( d ) (and arbitrary depth) can approximate any continuous function on the unit cube [ 0 , 1 ] d arbitrarily well? For ReLU nets near this minimal width, what can one say about the depth necessary to approximate a given function? We obtain an essentially complete answer to these questions for convex functions. Our approach is based on the observation that, due to the convexity of the ReLU activation, ReLU nets are particularly well suited to represent convex functions. In particular, we prove that ReLU nets with width d + 1 can approximate any continuous convex function of d variables arbitrarily well. These results then give quantitative depth estimates for the rate of approximation of any continuous scalar function on the d -dimensional cube [ 0 , 1 ] d by ReLU nets with width d + 3 .

Suggested Citation

  • Boris Hanin, 2019. "Universal Function Approximation by Deep Neural Nets with Bounded Width and ReLU Activations," Mathematics, MDPI, vol. 7(10), pages 1-9, October.
  • Handle: RePEc:gam:jmathe:v:7:y:2019:i:10:p:992-:d:278197
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    Citations

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    Cited by:

    1. Sejun Park, 2023. "Efficient Automatic Subdifferentiation for Programs with Linear Branches," Mathematics, MDPI, vol. 11(23), pages 1-18, December.
    2. Christoph Hertrich & Martin Skutella, 2023. "Provably Good Solutions to the Knapsack Problem via Neural Networks of Bounded Size," INFORMS Journal on Computing, INFORMS, vol. 35(5), pages 1079-1097, September.
    3. Jentzen, Arnulf & Welti, Timo, 2023. "Overall error analysis for the training of deep neural networks via stochastic gradient descent with random initialisation," Applied Mathematics and Computation, Elsevier, vol. 455(C).
    4. Rehan Zubair Khalid & Atta Ullah & Asifullah Khan & Afrasyab Khan & Mansoor Hameed Inayat, 2023. "Comparison of Standalone and Hybrid Machine Learning Models for Prediction of Critical Heat Flux in Vertical Tubes," Energies, MDPI, vol. 16(7), pages 1-22, March.
    5. Timothy DeLise, 2023. "Deep Semi-Supervised Anomaly Detection for Finding Fraud in the Futures Market," Papers 2309.00088, arXiv.org.

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