Regime Switching, Learning, and the Great Moderation

36 Pages Posted: 30 Apr 2008

See all articles by James Murray

James Murray

University of Wisconsin - La Crosse – Department of Economics

Date Written: April 30, 2008

Abstract

This paper examines the "bad luck" explanation for changing volatility in U.S. inflation and output when agents do not have rational expectations, but instead form expectations through least squares learning with an endogenously changing learning gain. It has been suggested that this type of endogenously changing learning mechanism can create periods of excess volatility without the need for changes in the variance of the underlying shocks. Bad luck is modeled into a standard New Keynesian model by augmenting it with two states that evolve according to a Markov chain, where one state is characterized by large variances for structural shocks, and the other state has relatively smaller variances. To assess whether learning can explain the Great Moderation, the New Keynesian model with volatility regime switching and dynamic gain learning is estimated by maximum likelihood. The results show that learning does lead to lower variances for the shocks in the volatile regime, but changes in regime is still significant in differences in volatility from the 1970s and after the 1980s.

Keywords: Learning, regime switching, great moderation, New Keynesian model, maximum likelihood

JEL Classification: C13, E31, E50

Suggested Citation

Murray, James, Regime Switching, Learning, and the Great Moderation (April 30, 2008). CAEPR Working Paper No. 2008-011, Available at SSRN: https://ssrn.com/abstract=1127313 or http://dx.doi.org/10.2139/ssrn.1127313

James Murray (Contact Author)

University of Wisconsin - La Crosse – Department of Economics ( email )

1725 State Street
La Crosse, WI 54601
United States
608-785-5140 (Phone)

HOME PAGE: http://www.murraylax.org

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