Relating Piecewise Linear Kolmogorov Arnold Networks to ReLU Networks

Schoots, Nandi, Villani, Mattia Jacopo, de Bos, Niels uit

arXiv.org Artificial Intelligence 

Kolmogorov-Arnold Networks are a new family of neural network architectures which holds promise for overcoming the curse of dimensionality and has interpretability benefits (Liu et al., 2024). In this paper, we explore the connection between Kolmogorov Arnold Networks (KANs) with piecewise linear (uni-variate real) functions and ReLU networks. We provide completely explicit constructions to convert a piecewise linear KAN into a ReLU network and vice versa.