time series prediction based on hybrid neural networks

time series prediction based on hybrid neural networks

;S. A. Yarushev;A. V. Fedotova;V. B. Tarasov;A. N. Averkin
BMJ open 2016 pp. 233-246
143
yarushev2016naukatime

Abstract

In this paper, we suggest to use hybrid approach to time series forecasting problem. In first part of paper, we create a literature review of time series forecasting methods based on hybrid neural networks and neuro-fuzzy approaches. Hybrid neural networks especially effective for specific types of applications such as forecasting or classification problem, in contrast to traditional monolithic neural networks. These classes of problems include problems with different characteristics in different modules. The main part of paper create a detailed overview of hybrid networks benefits, its architectures and performance under traditional neural networks. Hybrid neural networks models for time series forecasting are discussed in the paper. Experiments with modular neural networks are given.

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