Numerically stable and accurate stochastic simulation approaches for solving dynamic economic models
- Kenneth Judd 1
- Lilia Maliar 2
- Serguei Maliar 2
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1
Stanford University
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2
Universitat d'Alacant
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Año de publicación: 2011
Número: 15
Páginas: 1-60
Tipo: Documento de Trabajo
Resumen
We develop numerically stable and accurate stochastic simulation approaches for solving dynamic economic models. First, instead of standard least-squares methods, we examine a variety of alternatives, including least-squares methods using singular value decomposition and Tikhonov regularization, least-absolute deviations methods, and principal component regression method, all of which are numerically stable and can handle ill-conditioned problems. Second, instead of conventional Monte Carlo integration, we use accurate quadrature and monomial integration. We test our generalized stochastic simulation algorithm (GSSA) in three applications: the standard representative agent neoclassical growth model, a model with rare disasters and a multi-country models with hundreds of state variables. GSSA is simple to program, and MATLAB codes are provided.