35
v1v2v3 (latest)

Componentwise Equivariant Estimation of Order Restricted Location and Scale Parameters In Bivariate Models: A Unified Study

Abstract

The problem of estimating location (scale) parameters θ1\theta_1 and θ2\theta_2 of two distributions when the ordering between them is known apriori (say, θ1θ2\theta_1\leq \theta_2) has been extensively studied in the literature. Many of these studies are centered around deriving estimators that dominate the best location (scale) equivariant estimators, for the unrestricted case, by exploiting the prior information that θ1θ2\theta_1 \leq \theta_2. Several of these studies consider specific distributions such that the associated random variables are statistically independent. This paper considers a general bivariate model and general loss function and unifies various results proved in the literature. We also consider applications of these results to a bivariate normal and a Cheriyan and Ramabhadran's bivariate gamma model. A simulation study is also considered to compare the risk performances of various estimators under bivariate normal and Cheriyan and Ramabhadran's bivariate gamma models.

View on arXiv
Comments on this paper