SADDLEPOINT APPROXIMATIONS FOR SPATIAL PANEL DATA MODELS
JIANG, C.*, LA VECCHIA, D.*, RONCHETTI, E.*, and SCAILLET, O.**
* Research Center for Statistics and Geneva School of Economics and Management, University of Geneva** Geneva Finance Research Institute, Geneva School of Economics and Management, University of Geneva and Swiss Finance Institute
Abstract
We develop new higher-order asymptotic techniques for the Gaussian maximum
likelihood estimator in a spatial panel data model, with fixed effects, time-varying
covariates, and spatially correlated errors. Our saddlepoint density and tail area
approximation feature relative error of order O(1/(n(T −1))) with n being the crosssectional
dimension and T the time-series dimension. The main theoretical tool is
the tilted-Edgeworth technique in a non-identically distributed setting. The density
approximation is always non-negative, does not need resampling, and is accurate
in the tails. Monte Carlo experiments on density approximation and testing in the
presence of nuisance parameters illustrate the good performance of our approximation
over first-order asymptotics and Edgeworth expansion. An empirical application
to the investment-saving relationship in OECD (Organisation for Economic Cooperation
and Development) countries shows disagreement between testing results
based on first-order asymptotics and saddlepoint techniques.
Keywords: Higher-order asymptotics, investment-saving, random field, tail area.
JEL: C21, C23, C52.