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TWD-SFNN: Three-way decisions with a single hidden layer feedforward neural network.

Authors :
Cheng, Shuhui
Wu, Youxi
Li, Yan
Yao, Fang
Min, Fan
Source :
Information Sciences. Nov2021, Vol. 579, p15-32. 18p.
Publication Year :
2021

Abstract

[Display omitted] • We propose the TWD-SFNN model to optimize the hidden layer nodes of neural network. • TWD-SFNN adopts three-way decisions to determine the number of hidden layer nodes. • We analyze the space and time complexities of TWD-SFNN. • TWD-SFNN has a more compact network structure than SFNN using empirical formulas. • TWD-SFNN has a better generalization performance than other classification models. Neural networks have a strong self-learning ability and a wide range of applications. The current neural network models mainly determine the number of hidden layer nodes using empirical formulas, which lack theoretical guidance and can easily lead to poor learning performance. To improve the performance of the neural network model, inspired by the three-way decisions method, this paper proposes a model called three-way decisions with a single hidden layer feedforward neural network (TWD-SFNN). TWD-SFNN adopts three-way decisions to find the number of hidden layer nodes for a neural network in a dynamic way. TWD-SFNN has three key issues: discretizing the datasets, adjusting the learning process of the network, and evaluating the learning results of the network. TWD-SFNN adopts the k-means++ algorithm to discretize the datasets, employs the Adam algorithm to adjust the learning process of the network, and uses a confusion matrix to evaluate the learning results of the network. Therefore, the topological structure of the neural network is obtained. The experimental results verify that the network structure of TWD-SFNN is more compact than those of the SFNN models that use empirical formulas to determine the number of hidden layer nodes, and the generalization ability of TWD-SFNN is better than the state-of-the-art classification models. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00200255
Volume :
579
Database :
Academic Search Index
Journal :
Information Sciences
Publication Type :
Periodical
Accession number :
153121612
Full Text :
https://doi.org/10.1016/j.ins.2021.07.091