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One of the most important advantage of ABM (Agent-Based Modeling) used in social and economic calculation simulation is that the critical behavioral characteristics of the micro agents can be deeply depicted by the approach. Why, what and how real behavior(s) should be incorporated into ABM and is it appropriate and effective to use ABM with HSCA collaboration and micro-macro link features for complex economy/finance analysis? Through deepening behavioral analysis and using computational experimental methods incorporating HS (Human Subject) into CA (Computational Agent), which is extended ABM, based on the theory of behavioral finance and complexity science as well, we constructed a micro-macro integrated model with the key behavioral characteristics of investors as an experimental platform to cognize the conduction mechanism of complex capital market and typical phenomena in this paper, and illustrated briefly applied cases including the internal relations between impulsive behavior and the fluctuation of stock’s, the asymmetric cognitive bias and volatility cluster, deflective peak and fat-tail of China stock market.
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Tom
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257--270
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Bibliogr. 22 poz., rys.
Bibliografia
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- [10] G. Wang, Deepening micro-behavioral analysis and exploring the complexity of macro-economy. Jiangsu Social Sciences, No. 3, 2013, 20-28.
- [11] G. Wang, Behavioral Macro-Financial Modeling from Investor’s Bias with Applications — Based on the Experiment of Incorporating HS and CA, Journal of Management Science & Statistical Decision Vol. 11, no.1, 2014, 24–40.
- [12] G. Wang, and Y. Long, Study on Emergence of Capital Market with Cognitive Hierarchy and Extensive Agent-Based Modeling— An Application of e-Science in Social Sciences, e-Science Technology & Application, 5(1), 2014, 83˜92.
- [13] G. Wang, and S.G. Zhang.,Behavioral Compatibility, ACF and the Emergence of Chinese Stock Market, 21st International Conference on Computing in Economics and Finance, Taipei, Taiwan, June 20-22, 2015.
- [14] J. D. Farmer and D. Foley, The economy needs agent-based modeling, Nature, (6th August) 460, 2009, 685-686.
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- [18] M. Lengnick and H. W. Wohltmann , Agent-based financial markets and New Keynesian macroeconomics: a synthesis, Journal of Economic Interaction and Coordination, Springer, vol. 8(1), 2013, 1-32.
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- [22] W. Zhang, Y. J. Zhang and X. Xiong, Agent-based Computational Finance, Beijing, Science Press, 2010.
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Bibliografia
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