2016
DOI: 10.2139/ssrn.2712715
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Network Calibration and Metamodeling of a Financial Accelerator Agent Based Model

Abstract: We allow firms and banks to entertain multiple credit connections in a financially constrained production framework, resorting to a random network model whose parameters are calibrated with real data. The calibration is successful since the network model is able to reproduce the degree and strength (debt and loan) distributions of the Japanese credit market. We run simulations over the parameter space using an efficient design, and compare a number of alternative statistical metamodels in order to select the b… Show more

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Cited by 16 publications
(24 citation statements)
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References 27 publications
(19 reference statements)
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“…With respect to surrogate modelling, we extend recent contributions in the economic literature that use kriging to build a surrogate meta-model for ABMs (Salle and Yildizoglu, 2014;Dosi et al, 2017c;Bargigli et al, 2016). One of the primary challenges with kriging-based meta-models is that they cannot efficiently model more than a dozen parameters.…”
Section: Calibration and Validation Of Agent-based Models: The Case Fmentioning
confidence: 99%
See 3 more Smart Citations
“…With respect to surrogate modelling, we extend recent contributions in the economic literature that use kriging to build a surrogate meta-model for ABMs (Salle and Yildizoglu, 2014;Dosi et al, 2017c;Bargigli et al, 2016). One of the primary challenges with kriging-based meta-models is that they cannot efficiently model more than a dozen parameters.…”
Section: Calibration and Validation Of Agent-based Models: The Case Fmentioning
confidence: 99%
“…In the binary outcome case, we employ a two samples Kolmogorov-Smirnov (KS) test between the distribution of logarithmic returns obtained from the numerical simulation 13 We underline that the dimension of the parameter space is in line or even larger that in recent studies on ABM meta-modelling (see e.g. Salle and Yildizoglu, 2014;Bargigli et al, 2016). of the model and the one obtained from real stock market data. 14 More specifically, we rely on daily adjusted closing prices for the S&P 500 going from December 09, 2013 to December 07, 2015, for a total of 502 observations, and we compute the following test statistic: 15…”
Section: Experimental Design and Empirical Settingmentioning
confidence: 99%
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“…Recent developments try to mitigate over-parameterization issues resorting to phase-diagrams (Gualdi et al, 2015), Kriging meta-modeling (Salle and Yıldızoglu, 2014;Dosi et al, 2016c;Bargigli et al, 2016), and machine-learning surrogates (Lamperti et al, 2016b). We shall briefly come back to these issues in the concluding remarks.…”
Section: Model Selection and Empirical Validationmentioning
confidence: 99%