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Erschienen in: Journal of Economic Interaction and Coordination 4/2020

14.01.2020 | Regular Article

A path integral approach to business cycle models with large number of agents

verfasst von: Pierre Gosselin, Aïleen Lotz, Marc Wambst

Erschienen in: Journal of Economic Interaction and Coordination | Ausgabe 4/2020

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Abstract

This paper presents an analytical treatment of economic systems with an arbitrary number of agents that keeps track of the systems’ interactions and agents’ complexity. This formalism does not seek to aggregate agents. It rather replaces the standard optimization approach by a probabilistic description of both the entire system and agents’ behaviors. This is done in two distinct steps. A first step considers an interacting system involving an arbitrary number of agents, where each agent’s utility function is subject to unpredictable shocks. In such a setting, individual optimization problems need not be resolved. Each agent is described by a time-dependent probability distribution centered around his utility optimum. The entire system of agents is thus defined by a composite probability depending on time, agents’ interactions and forward-looking behaviors. This dynamic system is described by a path integral formalism in an abstract space—the space of economic variables—and is very similar to a statistical physics or quantum mechanics system. The usual utility optimization of a representative agent is recovered as a particular case. Compared to a standard optimization, such a description eases the treatment of systems with small number of agents. It becomes however useless for a large number of agents. In a second step therefore, we show that for a large number of agents, the previous description is equivalent to a more compact description in terms of field theory. This yields an analytical though approximate treatment of the system. This field theory does not model the aggregation of a microeconomic system in the usual sense. It rather describes an environment of a large number of interacting agents. From this description, various phases or equilibria may be retrieved, along with individual agents’ behaviors and their interactions with the environment. For illustrative purposes, this paper studies a business cycle model with a large number of agents.

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Literatur
Zurück zum Zitat Abergel F, Chakraborti A, Muni Toke I, Patriarca M (2011) Econophysics review: I. Empirical facts. Quant Finance 11(7):991–1012CrossRef Abergel F, Chakraborti A, Muni Toke I, Patriarca M (2011) Econophysics review: I. Empirical facts. Quant Finance 11(7):991–1012CrossRef
Zurück zum Zitat Abergel F, Chakraborti A, Muni Toke I, Patriarca M (2011) Econophysics review: II. Agent-based models. Quant. Finance 11(7):1013–1041CrossRef Abergel F, Chakraborti A, Muni Toke I, Patriarca M (2011) Econophysics review: II. Agent-based models. Quant. Finance 11(7):1013–1041CrossRef
Zurück zum Zitat Bensoussan A, Frehse J, Yam P (2018) Mean field games and mean field type control theory. Springer, New York Bensoussan A, Frehse J, Yam P (2018) Mean field games and mean field type control theory. Springer, New York
Zurück zum Zitat Gaffard JL, Napoletano M (eds) (2012) Agent-based models and economic policy. OFCE, Paris Gaffard JL, Napoletano M (eds) (2012) Agent-based models and economic policy. OFCE, Paris
Zurück zum Zitat Gomes DA, Nurbekyan L, Pimentel EA (2015) Economic models and mean-field games theory. In: Publicações Matemáticas do IMPA, 30o Col óquio Brasileiro de Matemática, Rio de Janeiro Gomes DA, Nurbekyan L, Pimentel EA (2015) Economic models and mean-field games theory. In: Publicações Matemáticas do IMPA, 30o Col óquio Brasileiro de Matemática, Rio de Janeiro
Zurück zum Zitat Jackson M (2010) Social and economic networks. Princeton University Press, PrincetonCrossRef Jackson M (2010) Social and economic networks. Princeton University Press, PrincetonCrossRef
Zurück zum Zitat Kleinert H (1989) Gauge fields in condensed matter vol. I, superflow and vortex lines, disorder fields, phase transitions, vol. II, stresses and defects, differential geometry, crystal melting. World Scientific, SingaporeCrossRef Kleinert H (1989) Gauge fields in condensed matter vol. I, superflow and vortex lines, disorder fields, phase transitions, vol. II, stresses and defects, differential geometry, crystal melting. World Scientific, SingaporeCrossRef
Zurück zum Zitat Kleinert H (2009) Path integrals in quantum mechanics, statistics, polymer physics, and financial markets, 5th edn. World Scientific, SingaporeCrossRef Kleinert H (2009) Path integrals in quantum mechanics, statistics, polymer physics, and financial markets, 5th edn. World Scientific, SingaporeCrossRef
Zurück zum Zitat Lucas RE (1976) Econometric policy evaluation: a critique. In: Brunner K, Meltzer A (eds) The Phillips curve and labor markets. Carnegie-Rochester conference series on public policy. 1. Elsevier, North-Holland, pp 19–46 Lucas RE (1976) Econometric policy evaluation: a critique. In: Brunner K, Meltzer A (eds) The Phillips curve and labor markets. Carnegie-Rochester conference series on public policy. 1. Elsevier, North-Holland, pp 19–46
Zurück zum Zitat Lux T (2008) Applications of statistical physics in finance and economics. Kiel Institute for the World Economy (IfW), Kiel Lux T (2008) Applications of statistical physics in finance and economics. Kiel Institute for the World Economy (IfW), Kiel
Zurück zum Zitat Obstfeld M, Rogoff KS (1996) Foundations of international macroeconomics. The MIT Press, Cambridge Obstfeld M, Rogoff KS (1996) Foundations of international macroeconomics. The MIT Press, Cambridge
Zurück zum Zitat Peskin ME, Schroeder DV (1995) An introduction to quantum field theory. Addison-Wesley Publishing Company, Boston Peskin ME, Schroeder DV (1995) An introduction to quantum field theory. Addison-Wesley Publishing Company, Boston
Zurück zum Zitat Romer D (1996) Advanced macroeconomics. McGraw-Hill, New York Romer D (1996) Advanced macroeconomics. McGraw-Hill, New York
Zurück zum Zitat Zinn-Justin J (1993) Quantum field theory and critical phenomena, 2nd edn. Oxford University Press, New York Zinn-Justin J (1993) Quantum field theory and critical phenomena, 2nd edn. Oxford University Press, New York
Metadaten
Titel
A path integral approach to business cycle models with large number of agents
verfasst von
Pierre Gosselin
Aïleen Lotz
Marc Wambst
Publikationsdatum
14.01.2020
Verlag
Springer Berlin Heidelberg
Erschienen in
Journal of Economic Interaction and Coordination / Ausgabe 4/2020
Print ISSN: 1860-711X
Elektronische ISSN: 1860-7128
DOI
https://doi.org/10.1007/s11403-019-00280-3

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