Two-Dimensional Deep ReLU CNN Approximation for Korobov Functions: A Constructive Approach
Two-Dimensional Deep ReLU CNN Approximation for Korobov Functions: A Constructive Approach
This paper investigates approximation capabilities of two-dimensional (2D) deep convolutional neural networks (CNNs), with Korobov functions serving as a benchmark. We focus on 2D CNNs, comprising multi-channel convolutional layers with zero-padding and ReLU activations, followed by a fully connected layer. We propose a fully constructive approach for building 2D CNNs to approximate Korobov functions and provide rigorous analysis of the complexity of the constructed networks. Our results demonstrate that 2D CNNs achieve near-optimal approximation rates under the continuous weight selection model, significantly alleviating the curse of dimensionality. This work provides a solid theoretical foundation for 2D CNNs and illustrates their potential for broader applications in function approximation.
Lei Shi、Min Xu、Ding-Xuan Zhou、Qin Fang
计算技术、计算机技术
Lei Shi,Min Xu,Ding-Xuan Zhou,Qin Fang.Two-Dimensional Deep ReLU CNN Approximation for Korobov Functions: A Constructive Approach[EB/OL].(2025-03-10)[2025-04-28].https://arxiv.org/abs/2503.07976.点此复制
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