Wavelet neural networks versus wavelet-based naural networks
Permanent link
https://hdl.handle.net/10037/32699Date
2023Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
This is the first paper in a sequence of studies including also [#!llhm2022!#] and [#!llhm2022_1!#] in which we introduce a new type of neural networks (NNs) – wavelet-based neural networks (WBNNs) – and study their properties and potential for applications. We begin this study with a comparison to the currently existing type of wavelet neural networks (WNNs) and show that WBNNs vastly outperform WNNs. One reason for the vast superiority of WBNNs is their advanced hierarchical tree structure based on biorthonormal multiresolution analysis (MRA). Another reason for this is the implementation of our new idea to incorporate the wavelet tree depth into the neural width of the NN. The separation of the roles of wavelet depth and neural depth provides a conceptually and algorithmically simple but very highly efficient methodology for sharp increase in functionality of swarm and deep WBNNs and rapid acceleration of the machine learning process.
Publisher
IJAM (International Journal of Applied Mathematics)Citation
Dechevski / Dechevsky, Tangrand. Wavelet neural networks versus wavelet-based neural networks. International Journal of Applied Mathematics (IJAM). 2023;36(2):205-251Metadata
Show full item record
Copyright 2023 The Author(s)