Evaluation of Randomized Variable Translation Wavelet Neural Networks
Abstract
A variable translation wavelet neural network (VT-WNN) is a type
of wavelet neural network that is able to adapt to the changes in the input.
Different learning algorithms have been proposed such as backpropagation and
hybrid wavelet-particle swarm optimization. However, most of them are time
costly. This paper proposed a new learning mechanism for VT-WNN using
random weights. To validate the performance of randomized VT-WNN, several
experiments using benchmark data form UCI machine learning datasets were
conducted. The experimental results show that RVT-WNN can work on a broad
range of applications from the small size up to the large size with comparable
performance to other well-known classifiers.
Collections
- LSP-Conference Proceeding [1874]