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JOURNALS // Sistemy i Sredstva Informatiki [Systems and Means of Informatics] // Archive

Sistemy i Sredstva Inform., 2018 Volume 28, Issue 3, Pages 62–71 (Mi ssi586)

Forecasting moments of finite normal mixtures using feedforward neural networks

A. K. Gorsheninab, V. Yu. Kuzminc

a Faculty of Computational Mathematics and Cybernetics, M. V. Lomonosov Moscow State University, 1-52 Leninskiye Gory, GSP-1, Moscow 119991, Russian Federation
b Institute of Informatics Problems, Federal Research Center "Computer Science and Control" of the Russian Academy of Sciences, 44-2 Vavilov Str., Moscow 119333, Russian Federation
c "Wi2Geo LLC", 3-1 Mira Ave., Moscow 129090, Russian Federation

Abstract: Modeling and analysis of nonstationary data flows in real systems of various types can be effectively performed using finite local-scale normal mixtures. Approbation of the prediction methodology developed by the authors is carried out on the example of time-varied moments of the mixed probability model. Within this approach, values of the initial continuous time-series are replaced with the discrete ones and then modified samples are analyzed with a neural network. For short-term forecasting, the accuracy of more than $80\%$ is demonstrated. Feedforward neural network is implemented using the Keras deep learning library, the TensorFlow framework, and the Python programming language.

Keywords: finite normal mixtures; moments; artificial neural network; forecasting; deep learning; data mining.

Received: 13.08.2018

DOI: 10.14357/08696527180305



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