65
7

Nonparametric estimation of multivariate scale mixtures of uniform densities

Abstract

Suppose that \mU=(U1,,Ud)\m{U} = (U_1, \ldots , U_d) has a Uniform([0,1]d)([0,1]^d) distribution, that \mY=(Y1,,Yd)\m{Y} = (Y_1 , \ldots , Y_d) has the distribution GG on \RR+d\RR_+^d, and let \mX=(X1,,Xd)=(U1Y1,,UdYd)\m{X} = (X_1 , \ldots , X_d) = (U_1 Y_1 , \ldots , U_d Y_d ). The resulting class of distributions of \mX\m{X} (as GG varies over all distributions on \RR+d\RR_+^d) is called the {\sl Scale Mixture of Uniforms} class of distributions, and the corresponding class of densities on \RR+d\RR_+^d is denoted by \{\cal F}_{SMU}(d). We study maximum likelihood estimation in the family FSMU(d){\cal F}_{SMU}(d). We prove existence of the MLE, establish Fenchel characterizations, and prove strong consistency of the almost surely unique maximum likelihood estimator (MLE) in FSMU(d){\cal F}_{SMU}(d). We also provide an asymptotic minimax lower bound for estimating the functional ff(\mx)f \mapsto f(\m{x}) under reasonable differentiability assumptions on fFSMU(d)f\in{\cal F}_{SMU} (d) in a neighborhood of \mx\m{x}. We conclude the paper with discussion, conjectures and open problems pertaining to global and local rates of convergence of the MLE.

View on arXiv
Comments on this paper