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Asymptotic Properties of Minimum S-Divergence Estimator for Discrete Models
Published 25 Mar 2014 in stat.ME, math.ST, and stat.TH | (1403.6295v2)
Abstract: Robust inference based on the minimization of statistical divergences has proved to be a useful alternative to the classical techniques based on maximum likelihood and related methods. Recently Ghosh et al. (2013) proposed a general class of divergence measures, namely the S-Divergence Family and discussed its usefulness in robust parametric estimation through some numerical illustrations. In this present paper, we develop the asymptotic properties of the proposed minimum S-Divergence estimators under discrete models.
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