Title of article :
Nonnegative Minimum Biased Quadratic Estimation in Mixed Linear Models
Author/Authors :
Gnot، نويسنده , , Stanis?aw and Grzadziel، نويسنده , , Mariusz، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2002
Abstract :
The problem of nonnegative quadratic estimation of a parametric function γ(β, σ)=β′Fβ+∑ri=1 fiσ2i in a general mixed linear model M{y, Xβ, V(σ)=∑ri=1 σ2iVi} is discussed. Necessary and sufficient conditions are given for y′A0y to be a minimum biased estimator for γ. It is shown how to formulate the problem of finding a nonnegative minimium biased estimator of γ as a conic optimization problem, which can be efficiently solved using convex optimization techniques. Models with two variance components are considered in detail. Some applications to one-way classification mixed models are given. For these models minimum biased estimators with minimum norms for square of expectation β2 and for σ21 are presented in explicit forms.
Keywords :
primal-dual interior-point method , Mixed linear model , Quadratic estimation , nonnegative minimum biased estimators , Mean squared error , one-way classification model , Symmetric cone
Journal title :
Journal of Multivariate Analysis
Journal title :
Journal of Multivariate Analysis