Title
Hybrid Methods Of Gmdh-Neural Networks Synthesis And Training For Solving Problems Of Time Series Forecasting
Abstract
In this paper, for solving the problem of forecasting non-stationary time series, hybrid learning methods for GMDH-neural networks are proposed. Training methods combine artificial immune systems with members of the evolutionary algorithm family, in particular, gene expression programming systems. The following hybrid computational methods for the synthesis and training of GMDH-neural networks have been developed: a method in which candidate models are represented as gene expression, and training is performed by clonal selection; the method of two-phase structural-parametric synthesis, in which the structural component is formed by programming the expression of genes, and the parameterization is performed by clonal selection; a method based on cooperative-competitive processes of interaction of the elements of the immune system, in which the structure and parameters of the GMDH-neural network are represented by the entire population element-wise. Comparative experimental studies of the quality of the proposed computational methods for solving forecasting problems were carried out.
Year
DOI
Venue
2019
10.1007/978-3-030-26474-1_36
LECTURE NOTES IN COMPUTATIONAL INTELLIGENCE AND DECISION MAKING
Keywords
DocType
Volume
Group method of data handling, Clonal selection method, Gene expression programming
Conference
1020
ISSN
Citations 
PageRank 
2194-5357
1
0.35
References 
Authors
0
8