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Asymptotics and bootstrap for inverse Gaussian regression
Authors:Gutti Jogesh Babu  Yogendra P. Chaubey
Affiliation:(1) Department of Statistics, Pennsylvania State University, 319 Classroom Building, 16802 University Park, PA, U.S.A.;(2) Department of Mathematics and Statistics, Concordia University, Loyola Campus, 7141 Sherbrooks Street West, H4B 1R6 Montreal, Quebec, Canada
Abstract:This paper studies regression, where the reciprocal of the mean of a dependent variable is considered to be a linear function of the regressor variables, and the observations on the dependent variable are assumed to have an inverse Gaussian distribution. The large sample theory for the pseudo maximum likelihood estimators is available in the literature, only when the number of replications increase at a fixed rate. This is inadequate for many practical applications. This paper establishes consistency and derives the asymptotic distribution for the pseudo maximum likelihood estimators under very general conditions on the design points. This includes the case where the number of replications do not grow large, as well as the one where there are no replications. The bootstrap procedure for inference on the regression parameters is also investigated.Research supported in part by NSF Grant DMS-9208066.Research supported in part by NSERC of Canada.
Keywords:Chi-square distribution  inverse Gaussian distribution  pseudo maximum likelihood estimator  strong consistency  weak convergence
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