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Bayesian estimation of agent-based models
Institution:1. Università Cattolica del Sacro Cuore, Department of Economics and Finance, Largo A. Gemelli, 1, 20123 Milano, Italy;2. Università Cattolica del Sacro Cuore, Complexity Lab in Economics, Milano Italy;3. CESifo, Munich, Germany;4. Institute for New Economic Thinking, Eagle House, Walton Well rd., Oxford OX2 6ED, United Kingdom;5. Department of Economics and Statistics, University of Torino, and Collegio Carlo Alberto, Moncalieri, Italy;6. Lancaster University Management Shool, Department of Economics, Bailrigg, Lancaster LA1 4YX, UK;1. Department of Accounting, Economics and Finance, University of the West of England, United Kingdom;2. School of Economics, University of Surrey, United Kingdom;1. Department of Economics, University of Kiel, Olshausenstr. 40, 24118 Kiel, Germany;2. Banco de España Chair in Computational Economics,University Jaume I, Campus del Riu Sec, 12071 Castellon, Spain
Abstract:We consider Bayesian inference techniques for agent-based (AB) models, as an alternative to simulated minimum distance (SMD). Three computationally heavy steps are involved: (i) simulating the model, (ii) estimating the likelihood and (iii) sampling from the posterior distribution of the parameters. Computational complexity of AB models implies that efficient techniques have to be used with respect to points (ii) and (iii), possibly involving approximations. We first discuss non-parametric (kernel density) estimation of the likelihood, coupled with Markov chain Monte Carlo sampling schemes. We then turn to parametric approximations of the likelihood, which can be derived by observing the distribution of the simulation outcomes around the statistical equilibria, or by assuming a specific form for the distribution of external deviations in the data. Finally, we introduce Approximate Bayesian Computation techniques for likelihood-free estimation. These allow embedding SMD methods in a Bayesian framework, and are particularly suited when robust estimation is needed. These techniques are first tested in a simple price discovery model with one parameter, and then employed to estimate the behavioural macroeconomic model of De Grauwe (2012), with nine unknown parameters.
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