Strengthening the Training of Convolutional Neural Networks By Using Walsh Matrix
Tamer \"Olmez, Z\"umray Dokur

TL;DR
This paper proposes a modified CNN training method using Walsh functions and a minimum distance network classifier, achieving higher accuracy with fewer nodes across various datasets.
Contribution
Introduces DivFE, a novel CNN training approach employing Walsh functions and a minimum distance classifier to improve performance and reduce complexity.
Findings
Higher classification accuracy across multiple datasets.
Reduced number of nodes in the network structure.
Effective training enhancement using Walsh functions.
Abstract
DNN structures are continuously developing and achieving high performances in classification problems. Also, it is observed that success rates obtained with DNNs are higher than those obtained with traditional neural networks. In addition, one of the advantages of DNNs is that there is no need to spend an extra effort to determine the features; the CNN automatically extracts the features from the dataset during the training. Besides their benefits, the DNNs have the following three major drawbacks among the others: (i) Researchers have struggled with over-fitting and under-fitting issues in the training of DNNs, (ii) determination of even a coarse structure for the DNN may take days, and (iii) most of the time, the proposed network structure is too large to be too bulky to be used in real time applications. We have modified the training and structure of DNN to increase the…
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Taxonomy
TopicsECG Monitoring and Analysis · EEG and Brain-Computer Interfaces · Brain Tumor Detection and Classification
