2023
DOI: 10.3390/axioms12080759
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A Method for Extrapolating Continuous Functions by Generating New Training Samples for Feedforward Artificial Neural Networks

Abstract: The goal of the present study is to find a method for improving the predictive capabilities of feedforward neural networks in cases where values distant from the input–output sample interval are predicted. This paper proposes an iterative prediction algorithm based on two assumptions. One is that predictions near the statistical sample have much lower error than those distant from the sample. The second is that a neural network can generate additional training samples and use them to train itself in order to g… Show more

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