Using the "Chandrasekhar Recursions" for Likelihood Evaluation of DSGE Models
Title | Using the "Chandrasekhar Recursions" for Likelihood Evaluation of DSGE Models PDF eBook |
Author | Edward P. Herbst |
Publisher | |
Pages | 14 |
Release | 2012 |
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Using the "Chandrasekhar Recursions " for Likelihood Evaluation of DSGE Models
Title | Using the "Chandrasekhar Recursions " for Likelihood Evaluation of DSGE Models PDF eBook |
Author | Edward Herbst |
Publisher | |
Pages | 0 |
Release | 2017 |
Genre | |
ISBN |
In likelihood-based estimation of linearized Dynamic Stochastic General Equilibrium (DSGE) models, the evaluation of the Kalman Filter dominates the running time of the entire algorithm. In this paper, we revisit a set of simple recursions known as the "Chandrasekhar Recursions " developed by Morf (1974) and Morf, Sidhu, and Kalaith (1974) for evaluating the likelihood of a Linear Gaussian State Space System. We show that DSGE models are ideally suited for the use of these recursions, which work best when the number of states is much greater than the number of observables. In several examples, we show that there are substantial benefits to using the recursions, with likelihood evaluation up to five times faster. This gain is especially pronounced in light of the trivial implementation costs--no model modification is required. Moreover, the algorithm is complementary with other approaches.
An Augmented Steady-state Kalman Filter to Evaluate the Likelihood of Linear and Time
Title | An Augmented Steady-state Kalman Filter to Evaluate the Likelihood of Linear and Time PDF eBook |
Author | Johannes Huber |
Publisher | |
Pages | 0 |
Release | 2022 |
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We propose a modified version of the augmented Kalman filter (AKF) to evaluate the likelihood of linear and time-invariant state-space models (SSMs). Unlike the regular AKF, this augmented steady-state Kalman filter (ASKF), as we call it, is based on a steady-state Kalman filter (SKF). We show that to apply the ASKF, it is sufficient that the SSM at hand is stationary. We find that the ASKF can significantly reduce the computational burden to evaluate the likelihood of medium- to large-scale SSMs, making it particularly useful to estimate dynamic stochastic general equilibrium (DSGE) models and dynamic factor models. Tests using a medium-scale DSGE model, namely the 2007 version of the Smets and Wouters model, show that the ASKF is up to five times faster than the regular Kalman filter (KF). Other competing algorithms, such as the Chandrasekhar recursion (CR) or a univariate treatment of multivariate observation vectors (UKF), are also outperformed by the ASKF in terms of computational efficiency.
Piecewise-Linear Approximations and Filtering for DSGE Models with Occasionally Binding Constraints
Title | Piecewise-Linear Approximations and Filtering for DSGE Models with Occasionally Binding Constraints PDF eBook |
Author | S. Borağan Aruoba |
Publisher | |
Pages | 0 |
Release | 2022 |
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We develop an algorithm to construct approximate decision rules that are piecewise-linear and continuous for DSGE models with an occasionally binding constraint. The functional form of the decision rules allows us to derive a conditionally optimal particle filter (COPF) for the evaluation of the likelihood function that exploits the structure of the solution. We document the accuracy of the likelihood approximation and embed it into a particle Markov chain Monte Carlo algorithm to conduct Bayesian estimation. Compared with a standard bootstrap particle filter, the COPF significantly reduces the persistence of the Markov chain, improves the accuracy of Monte Carlo approximations of posterior moments, and drastically speeds up computations. We use the techniques to estimate a small-scale DSGE model to assess the effects of the government spending portion of the American Recovery and Reinvestment Act in 2009 when interest rates reached the zero lower bound.
Bayesian Estimation of DSGE Models
Title | Bayesian Estimation of DSGE Models PDF eBook |
Author | Edward P. Herbst |
Publisher | Princeton University Press |
Pages | 295 |
Release | 2015-12-29 |
Genre | Business & Economics |
ISBN | 0691161089 |
Dynamic stochastic general equilibrium (DSGE) models have become one of the workhorses of modern macroeconomics and are extensively used for academic research as well as forecasting and policy analysis at central banks. This book introduces readers to state-of-the-art computational techniques used in the Bayesian analysis of DSGE models. The book covers Markov chain Monte Carlo techniques for linearized DSGE models, novel sequential Monte Carlo methods that can be used for parameter inference, and the estimation of nonlinear DSGE models based on particle filter approximations of the likelihood function. The theoretical foundations of the algorithms are discussed in depth, and detailed empirical applications and numerical illustrations are provided. The book also gives invaluable advice on how to tailor these algorithms to specific applications and assess the accuracy and reliability of the computations. Bayesian Estimation of DSGE Models is essential reading for graduate students, academic researchers, and practitioners at policy institutions.
System Priors
Title | System Priors PDF eBook |
Author | Michal Andrle |
Publisher | International Monetary Fund |
Pages | 26 |
Release | 2013-12-19 |
Genre | Business & Economics |
ISBN | 1484318374 |
This paper proposes a novel way of formulating priors for estimating economic models. System priors are priors about the model's features and behavior as a system, such as the sacrifice ratio or the maximum duration of response of inflation to a particular shock, for instance. System priors represent a very transparent and economically meaningful way of formulating priors about parameters, without the unintended consequences of independent priors about individual parameters. System priors may complement or also substitute for independent marginal priors. The new philosophy of formulating priors is motivated, explained and illustrated using a structural model for monetary policy.
Computational Economics: Heterogeneous Agent Modeling
Title | Computational Economics: Heterogeneous Agent Modeling PDF eBook |
Author | Cars Hommes |
Publisher | Elsevier |
Pages | 836 |
Release | 2018-06-27 |
Genre | Business & Economics |
ISBN | 0444641327 |
Handbook of Computational Economics: Heterogeneous Agent Modeling, Volume Four, focuses on heterogeneous agent models, emphasizing recent advances in macroeconomics (including DSGE), finance, empirical validation and experiments, networks and related applications. Capturing the advances made since the publication of Volume Two (Tesfatsion & Judd, 2006), it provides high-level literature with sections devoted to Macroeconomics, Finance, Empirical Validation and Experiments, Networks, and other applications, including Innovation Diffusion in Heterogeneous Populations, Market Design and Electricity Markets, and a final section on Perspectives on Heterogeneity. - Helps readers fully understand the dynamic properties of realistically rendered economic systems - Emphasizes detailed specifications of structural conditions, institutional arrangements and behavioral dispositions - Provides broad assessments that can lead researchers to recognize new synergies and opportunities