Training Feedforward Neural Network Using Enhanced Black Hole Algorithm: A Case Study on COVID-19 Related ACE2 Gene Expression Classification
Özet
The aim of this paper is twofold. First, black hole algorithm (BHA) is proposed as a new training algorithm for feedforward
neural networks (FNNs), since most traditional and metaheuristic algorithms for training FNNs sufer from the problem of
slow coverage and getting stuck at local optima. BHA provides a reliable alternative to address these drawbacks. Second,
complementary learning components and Levy fight random walk are introduced into BHA to result in a novel optimization algorithm (BHACRW) for the purpose of improving the FNNs’ accuracy by fnding optimal weights and biases. Four
benchmark functions are frst used to evaluate BHACRW’s performance in numerical optimization problems. Later, the
classifcation performance of the suggested models, using BHA and BHACRW for training FNN, is evaluated against seven
various benchmark datasets: iris, wine, blood, liver disorders, seeds, Statlog (Heart), balance scale. Experimental result demonstrates that the BHACRW performs better in terms of mean square error (MSE) and accuracy of training FNN, compared
to standard BHA and eight well-known metaheuristic algorithms: whale optimization algorithm (WOA), biogeography-based
optimizer (BBO), gravitational search algorithm (GSA), genetic algorithm (GA), cuckoo search (CS), multiverse optimizer
(MVO), symbiotic organisms search (SOS), and particle swarm optimization (PSO). Moreover, we examined the classifcation
performance of the suggested approach on the angiotensin-converting enzyme 2 (ACE2) gene expression as a coronavirus
receptor, which has been overexpressed in human rhinovirus-infected nasal tissue. Results demonstrate that BHACRW-FNN
achieves the highest accuracy on the dataset compared to other classifers.
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https://hdl.handle.net/11363/4905Koleksiyonlar
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