Detail publikace

Do 'complex' financial models really lead to complex dynamics? Agent-based models and multifractality

Autor: prof. PhDr. Ladislav Krištoufek Ph.D.,
PhDr. Jiří Kukačka Ph.D.,
Typ: Články v impaktovaných časopisech
Rok: 2020
Číslo: 113
ISSN / ISBN:
Publikováno v: Journal of Economic Dynamics and Control, 113C, DOI
Místo vydání:
Klíčová slova: complex systems, financial agent-based models, time series analysis, multifractal analysis, detrended fluctuation analysis
JEL kódy: C13, C22, C63, D84, G02, G17
Citace: Kukacka, J., Kristoufek, L. (2020). Do 'complex' financial models really lead to complex dynamics? Agent-based models and multifractality. Journal of Economic Dynamics and Control, 113C, 103855.
Granty: PRIMUS/19/HUM/17 2019-2021 Behaviorální finance a makroekonomie: Nové pohledy pro hlavní proud
Abstrakt: Agent-based models are usually claimed to generate complex dynamics; however, the link to such complexity has not been subject to rigorous examination. This paper studies this link between the complexity of financial time series---measured by their multifractal properties---and the design of various small-scale agent-based frameworks used to model the heterogeneity of financial markets. Nine popular models are analyzed, and while some of the models do not generate interesting multifractal patterns, we observe the strongest tendency towards multifractal behavior for the Bornholdt Ising model, the discrete choice-based models by Gaunersdorfer & Hommes and Schmitt & Westerhoff, and the transition probabilities-based framework by Franke & Westerhoff. Complexity is thus not an automatic feature of the time series generated by any agent-based model but generated only by models with specific properties. In addition, because multifractality is considered a financial stylized fact, its presence can be used as a new means to validate such models.
Prosinec 2020
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