Affiliation:
1. Muğla Sıtkı Koçman University , Faculty of Science, Department of Mathematics , 48000 , Muğla Turkey
Abstract
Abstract
In this study, we present a model which represents the interaction of financial companies in their network. Since the long time series have a global memory effect, we present our model in the terms of fractional integro-differential equations. This model characterize the behavior of the complex network where vertices are the financial companies operating in XU100 and edges are formed by distance based on Pearson correlation coefficient. This behavior can be seen as the financial interactions of the agents. Hence, we first cluster the complex network in the terms of high modularity of the edges. Then, we give a system of fractional integro-differential equation model with two parameters. First parameter defines the strength of the connection of agents to their cluster. Hence, to estimate this parameter we use vibrational potential of each agent in their cluster. The second parameter in our model defines how much agents in a cluster affect each other. Therefore, we use the disparity measure of PMFGs of each cluster to estimate second parameter. To solve model numerically we use an efficient algorithmic decomposition method and concluded that those solutions are consistent with real world data. The model and the solutions we present with fractional derivative show that the real data of Borsa Istanbul Stock Exchange Market always seek for an equilibrium state.
Subject
Applied Mathematics,Engineering (miscellaneous),Modeling and Simulation,General Computer Science
Reference60 articles.
1. Haken H., Jumarie G. (2006) A macroscopic approach to complex system, Springer-Verlag, Berlin, Heidelberg, New York, 3th Edition
2. Milo R., Shen-Orr S. (2002) Itzkovitz S., Kashtan N., Chklovskii D., Alon U., Network motifs: simple building blocks of complex networks. Science, 298(5594): 824–827
3. Castellano C., Pastor-Storras R. (2010) Thresholds for epidemic spreading in networks, Phys. Rev. Kett., 105(21): 218701
4. Read J. M., Eames K. T., Edmunds W. J. (2008) Dynamic social networks and the implications for the spread of infectious disease, J. R. Soc. Interface, 6–6(26): 1001–1007
5. Keeling M. J. (2008) Rohani P, Modelling Infectious Diaseases in Human and Animals, Princeton University Press
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