The purpose of this paper is to describe the performance of
generalized empirical likelihood (GEL) methods for time series
instrumental variable models specified by nonlinear moment restrictions as
in Stock and Wright (2000, Econometrica
68, 1055–1096) when identification may be weak. The paper makes two
main contributions. First, we show that all GEL estimators are first-order
equivalent under weak identification. The GEL estimator under weak
identification is inconsistent and has a nonstandard asymptotic
distribution. Second, the paper proposes new GEL test statistics, which
have chi-square asymptotic null distributions independent of the strength
or weakness of identification. Consequently, unlike those for Wald and
likelihood ratio statistics, the size of tests formed from these
statistics is not distorted by the strength or weakness of identification.
Modified versions of the statistics are presented for tests of hypotheses
on parameter subvectors when the parameters not under test are strongly
identified. Monte Carlo results for the linear instrumental variable
regression model suggest that tests based on these statistics have very
good size properties even in the presence of conditional
heteroskedasticity. The tests have competitive power properties,
especially for thick-tailed or asymmetric error distributions.This paper is a revision of Guggenberger's
job market paper “Generalized Empirical Likelihood Tests under
Partial, Weak, and Strong Identification.” We are thankful to the
editor, P.C.B. Phillips, and three referees for very helpful suggestions
on an earlier version of this paper. Guggenberger gratefully acknowledges
the continuous help and support of his adviser, Donald Andrews, who played
a prominent role in the formulation of this paper. He thanks Peter
Phillips and Joseph Altonji for their extremely valuable comments. We also
thank Vadim Marner for help with the simulation section and John Chao,
Guido Imbens, Michael Jansson, Frank Kleibergen, Marcelo Moreira, Jonathan
Wright, and Motohiro Yogo for helpful comments. Aspects of this research
have been presented at the 2003 Econometric Society European Meetings;
York Econometrics Workshop 2004; Seminaire Malinvaud; CREST-INSEE; and
seminars at Albany, Alicante, Austin (Texas), Brown, Chicago, Chicago GSB,
Harvard/MIT, Irvine, ISEG/Universidade Tecnica de Lisboa,
Konstanz, Laval, Madison (Wisconsin), Mannheim, Maryland, NYU, Penn, Penn
State, Pittsburgh, Princeton, Rice, Riverside, Rochester, San Diego, Texas
A&M, UCLA, USC, and Yale. We thank all the seminar participants.
Guggenberger and Smith received financial support through a Carl Arvid
Anderson Prize Fellowship and a 2002 Leverhulme Major Research Fellowship,
respectively.