Multi Kernel Fusion RBF Architecture

Multi-Kernel Fusion for RBF Neural Networks

In this paper, we propose a novel multi-kernel RBFNN in which every base kernel has its own (local) weight. This novel flexibility in the network provides better performance such as faster convergence rate, better local minima and resilience against stucking in poor local minima. These performance gains are achieved at a competitive computational complexity compared to the contemporary multi-kernel RBF algorithms.

April 2023 · Syed Muhammad Atif, Shujaat Khan, Imran Naseem, ยท Roberto Togneri, Mohammed Bennamoun