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Full-Information Estimation of Heterogeneous Agent Models Using Macro and Micro Data

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arxiv 2101.04771 v2 pith:R3ZDQ4MC submitted 2021-01-12 econ.EM

Full-Information Estimation of Heterogeneous Agent Models Using Macro and Micro Data

classification econ.EM
keywords datamicrofull-informationheterogeneousinferencelikelihoodmodelsagent
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We develop a generally applicable full-information inference method for heterogeneous agent models, combining aggregate time series data and repeated cross sections of micro data. To handle unobserved aggregate state variables that affect cross-sectional distributions, we compute a numerically unbiased estimate of the model-implied likelihood function. Employing the likelihood estimate in a Markov Chain Monte Carlo algorithm, we obtain fully efficient and valid Bayesian inference. Evaluation of the micro part of the likelihood lends itself naturally to parallel computing. Numerical illustrations in models with heterogeneous households or firms demonstrate that the proposed full-information method substantially sharpens inference relative to using only macro data, and for some parameters micro data is essential for identification.

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