Evaluating Specification Search
in Cross-country Growth Regressions:
Extreme Bounds vs. General-to-Specific Methodologies.
Professor Kevin Hoover
University of California Davis
Department of Economics
Friday, April 19,
2002
3:00 PM - 4:15PM
Saunders 515
Abstract
This paper is a substantially revised version of our earlier working paper,
"Truth and Robustness in Cross-country Growth Regressions." The
most important revisions concern the handling of missing observations in the
cross-country data set. In the earlier paper, these hand been handled through
case-wise deletion-the method common to all pervious studies. In this version,
they are handled through multiple imputation- a method that retains substantially
more of the information content of the data set. Two variants of Leamer's
(1983) extreme-bounds analysis are evaluated for their ability to recover
the true specification and compared to a cross-sectional version of the general-to-specific
search methodology associated with the LSE approach to econometrics. Evaluations
are based on a realistic Monte Carlo experiment in which the universe of potential
determinants is drawn from those in Levine and Renelt's (1992) study. Levine
and Renelt's method is shown to have low size and extremely low power: nothing
is robust. Sala-i-Martin's (1997a, b) method is shown to have high size and
high power: it is undiscriminating. The general-to-specific methodology is
shown to have size near nominal size and high power. Sala-i-Martin's method
and the general-to-specific method are then applied to the actual data from
Sala-i-Martin's original study. The results are consistent with the Monte
Carlo results and suggest that only a few of the 61 potential determinants
of growth matter.
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