Using the Sequence-Space Jacobian to Solve and Estimate Heterogeneous-Agent Models

87 Pages Posted: 23 Dec 2020 Last revised: 31 Mar 2021

See all articles by Adrien Auclert

Adrien Auclert

Stanford University - Department of Economics

Bence Bardóczy

Northwestern University

Matthew Rognlie

Northwestern University

Ludwig Straub

Harvard University

Multiple version iconThere are 2 versions of this paper

Date Written: July 2019

Abstract

We propose a general and highly efficient method for solving and estimating general equilibrium heterogeneous-agent models with aggregate shocks in discrete time. Our approach relies on the rapid computation of sequence-space Jacobians-the derivatives of perfect-foresight equilibrium mappings between aggregate sequences around the steady state. Our main contribution is a fast algorithm for calculating Jacobians for a large class of heterogeneous-agent problems. We combine this algorithm with a systematic approach to composing and inverting Jacobians to solve for general equilibrium impulse responses. We obtain a rapid procedure for likelihood-based estimation and computation of nonlinear perfect-foresight transitions. We apply our methods to three canonical heterogeneous-agent models: a neoclassical model, a New Keynesian model with one asset, and a New Keynesian model with two assets.

JEL Classification: C63, E21, E32

Suggested Citation

Auclert, Adrien and Bardóczy, Bence and Rognlie, Matthew and Straub, Ludwig, Using the Sequence-Space Jacobian to Solve and Estimate Heterogeneous-Agent Models (July 2019). CEPR Discussion Paper No. DP13890, Available at SSRN: https://ssrn.com/abstract=3753888

Adrien Auclert (Contact Author)

Stanford University - Department of Economics ( email )

Landau Economics Building
579 Serra Mall
Stanford, CA 94305-6072
United States

Bence Bardóczy

Northwestern University ( email )

2001 Sheridan Road
Evanston, IL 60208
United States

Matthew Rognlie

Northwestern University

Ludwig Straub

Harvard University ( email )

1875 Cambridge Street
Cambridge, MA 02138
United States

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