ISSN: 2475-7586
Department of Statistics, Michael Okpara University of Agriculture Umudike, Umuahia, Abia State, Nigeria
Research Article
The Effects of Modified ReLU Activation Functions in Image Classification
Author(s): Charles Chinedu Nworu*, Emmanuel John Ekpenyong, John Chisimkwuo, Christian Nduka Onyeukwu, Godwin Okwara and Onyekachi Joy Agwu
The choice of activation functions is very important in deep learning. This is because activation functions are
capable of capturing non- linear patterns in a data. The most popular activation function is the Rectified Linear
Unit (ReLU) but it suffers from gradient vanishing problem. Therefore, we examined the modifications of the
ReLU activation function to determine its effectiveness (accuracy) and efficiency (time complexity). The effectiveness
and efficiency was verified by conducting an empirical experiment using x-ray images that contains pneumonia
and normal samples. Our experiments show that the modified ReLU, ReLU6 performed better in terms of low
generalization error (97.05% training accuracy and 78.21% test accuracy). The sensitivity analysis also suggests
that the ELU is capable of correctly predicting more than half of the positive cases with 52.14% .. View More»
DOI:
10.35248/2475-7586.22.07.237