TY - CHAP AB - In this chapter we approach the estimation of dynamic stochastic general equilibrium models through a moments-based estimator, the empirical likelihood. We attempt to show that this inference process can be a valid alternative to maximum likelihood, which has been one of the preferred choices of the related literature to estimate these models. The empirical likelihood estimator is characterized by a simple setup and only requires knowledge about the moments of the data generating process of the model. In this context, we exploit the fact that these economies can be formulated as a set of moment conditions to infer on their parameters through this technique. For illustrational purposes, we consider a standard real business cycle model with a constant relative risk averse utility function and indivisible labor, driven by a normal technology shock. VL - 28 SN - 978-1-78190-305-6, 978-1-78190-306-3/0731-9053 DO - 10.1108/S0731-9053(2012)0000028012 UR - https://doi.org/10.1108/S0731-9053(2012)0000028012 AU - Riscado Sara ED - Nathan Balke ED - Fabio Canova ED - Fabio Milani ED - Mark A. Wynne PY - 2012 Y1 - 2012/01/01 TI - On the Estimation of Dynamic Stochastic General Equilibrium Models: An Empirical Likelihood Approach T2 - DSGE Models in Macroeconomics: Estimation, Evaluation, and New Developments T3 - Advances in Econometrics PB - Emerald Group Publishing Limited SP - 387 EP - 419 Y2 - 2024/04/23 ER -