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Article
An Impulsive Delay Discrete Stochastic Neural Network Fractional-Order Model and Applications in Finance
Filomat
  • Martin Bohner, Missouri University of Science and Technology
  • Ivanka M. Stamova
Abstract

In this paper, we propose a new tool for modeling and analysis in finance, introducing an impulsive discrete stochastic neural network (NN) fractional-order model. The main advantages of the proposed approach are: (i) Using NNs which can be trained without the restriction of a model to derive parameters and discover relationships, driven and shaped solely by the nature of the data; (ii) using fractional-order differences, whose nonlocal property makes the fractional calculus a suitable tool for modeling actual financial systems; (iii) using impulsive perturbations, which give an opportunity to control the dynamic behavior of the model; (iv) including a stochastic term, which allows to study the effect of noise disturbances generally existing in financial assets; (v) taking into account the existence of time delayed influences. The modeling approach proposed in this paper can be applied to investigate macroeconomic systems.

Department(s)
Mathematics and Statistics
Keywords and Phrases
  • Applications in finance,
  • Delay,
  • Discrete stochastic neural network,
  • Fractional-order system,
  • Impulsive control,
  • Stability
Document Type
Article - Journal
Document Version
Citation
File Type
text
Language(s)
English
Rights
© 2018 University of Nis, All rights reserved.
Publication Date
1-1-2018
Publication Date
01 Jan 2018
Citation Information
Martin Bohner and Ivanka M. Stamova. "An Impulsive Delay Discrete Stochastic Neural Network Fractional-Order Model and Applications in Finance" Filomat Vol. 32 Iss. 18 (2018) p. 6339 - 6352 ISSN: 0354-5180; 2406-0933
Available at: http://works.bepress.com/martin-bohner/141/