Department of Mathematics and Statistics, Chinhoyi University of Technology, Chinhoyi, Zimbabwe. Private Bag 7724, Chinhoyi, Zimbabwe.
World Journal of Advanced Engineering Technology and Sciences, 2025, 17(03), 051–059
Article DOI: 10.30574/wjaets.2025.17.3.1524
Received 20 October 2025; revised on 29 November 2025; accepted on 01 December 2025
This research outlines a novel approach to obtaining mathematical models from neural networks. The target scenario is one where a response variable depends on a number of factors, each factor has an effect which is a function of the factor and the response variable is the sum of the effects of the factors. A neural network was trained such that response values were generated from factor values. It was assumed that each effect was zero when the underlying factor was set to zero. The effect of a factor could be isolated by setting all other factors to zero, so that the response value became equal to the effect of the factor being isolated. In that way each effect was isolated and then modelled as a function of the factor. Thus, the technique was developed, for modelling a response variable as a function of its input factors.
Neural Network; Perceptron; Mathematical Modelling; Machine Learning; Simulation
Get Your e Certificate of Publication using below link
Preview Article PDF
Henry Samambgwa, Thomas Musora and Joseph Kamusha. Deriving mathematical models from neural networks: A method for deducing individual effects of factors on a response variable. Publication history: Received 20 October 2025; revised on 29 November 2025; accepted on 01 December 2025. Article DOI: https://doi.org/10.30574/wjaets.2025.17.3.1524.