Semiparametric Inference and Lower Bounds for Real Elliptically Symmetric Distributions
Stefano Fortunati, Fulvio Gini, Maria S. Greco, Abdelhak M. Zoubir,, Muralidhar Rangaswamy

TL;DR
This paper explores the semiparametric structure of Real Elliptically Symmetric distributions, deriving a lower bound for estimating key parameters and evaluating the efficiency of common estimators through simulations.
Contribution
It introduces a semiparametric framework for RES distributions and derives a new lower bound (CSCRB) for robust estimation of mean and scatter matrix.
Findings
Derived a closed-form expression for the CSCRB.
Assessed the efficiency of Tyler's and Huber's estimators.
Validated the bounds through simulation studies.
Abstract
This paper has a twofold goal. The first aim is to provide a deeper understanding of the family of the Real Elliptically Symmetric (RES) distributions by investigating their intrinsic semiparametric nature. The second aim is to derive a semiparametric lower bound for the estimation of the parametric component of the model. The RES distributions represent a semiparametric model where the parametric part is given by the mean vector and by the scatter matrix while the non-parametric, infinite-dimensional, part is represented by the density generator. Since, in practical applications, we are often interested only in the estimation of the parametric component, the density generator can be considered as nuisance. The first part of the paper is dedicated to conveniently place the RES distributions in the framework of the semiparametric group models. The second part of the paper, building on…
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