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14 - Simulation-based estimation of a non-linear, latent factor aggregate production function

Published online by Cambridge University Press:  04 August 2010

Roberto Mariano
Affiliation:
University of Pennsylvania
Til Schuermann
Affiliation:
AT&T Bell Laboratories, New Jersey
Melvyn J. Weeks
Affiliation:
University of Cambridge
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Summary

Introduction

The purpose of this chapter is to explore in detail a number of econometric issues associated with the specification and estimation of a non-linear, latent variable aggregate production function developed in Krusell, Ohanian, Rios-Rull, and Violante (1995) (hereafter KORV). In particular, we discuss how different simulation-based methods can be used to address a number of difficult problems associated with our particular model, and evaluate the relative performance of these methods. Since some of these issues have not been analyzed in much detail using simulation-based methods, the findings reported here may be of use to other researchers working in similar environments.

In our earlier paper, we developed an aggregate production function that differs substantially from the standard production function used in macro-economic analysis. The development of our alternative model was motivated by a key fact of the US economy. In the last 30 years, a substantial difference has emerged in the growth rates of wages for workers with different educational levels. John, Murphy, and Pierce (1993) report that the median wage earner among college graduates experienced a 15 percent increase in inflation-adjusted wages between 1964 and 1988, while the median wage earner among high school graduates experienced a 5 percent decline in real wages over the same period. The widening gap in the relative wage of skilled or unskilled labor is commonly referred to as the “wage premium” or “skill premium.”

Type
Chapter
Information
Simulation-based Inference in Econometrics
Methods and Applications
, pp. 359 - 399
Publisher: Cambridge University Press
Print publication year: 2000

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