On Bayesian Estimation of Loss and Risk Functions

Randhir Singh
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引用次数: 2

Abstract

Loss functions and Risk functions play very important role in Bayesian estimation. This paper aims at the Bayesian estimation for the loss and risk functions of the unknown parameter of the H(r, theta), (theta being the unknown parameter) distribution The estimation has been performed under Rukhin’s loss function. The importance of this distribution is that it contains some important distributions such as the Half Normal distribution, Rayleigh distribution and Maxwell’s distribution as particular cases. The inverse Gamma distribution has assumed as the prior distribution for the unknown parameter theta. This prior distribution is a Natural Conjugate prior distribution for the unknown parameter because the posterior probability density function of the unknown parameter is also inverse gamma distribution The Rukhin’s loss function involves another loss function denoted by w(theta, delta) he form of w(theta, delta) is important as it changes the estimate. In this paper, three forms of w(theta, delta) have been taken and corresponding estimates have been derived. The three, forms are, the Squared Error Loss Function (SELF) and two different forms of Weighted Squared Error Loss Function (WSELF) namely, the Minimum Expected Loss (MELO) Function and the Exponentially Weighted Minimum Expected Loss (EWMELO) Function have been considered. A criterion of performance of various form of w(theta, delta) has ben defined. It has been proved that among three forms of w(theta, delta), considered here, the form corresponding to EWMELO is most dominant.
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损失和风险函数的贝叶斯估计
损失函数和风险函数在贝叶斯估计中起着非常重要的作用。本文针对H(r, theta), (theta为未知参数)分布的未知参数的损失和风险函数的贝叶斯估计,在Rukhin损失函数下进行了估计。这种分布的重要性在于它包含了一些重要的分布,如半正态分布、瑞利分布和麦克斯韦分布作为特殊情况。逆分布被假定为未知参数的先验分布。这个先验分布是未知参数的自然共轭先验分布,因为未知参数的后验概率密度函数也是逆分布。Rukhin的损失函数涉及另一个损失函数,表示为w(θ, δ) w(θ, δ)的形式很重要,因为它改变了估计。本文采用了w(theta, delta)的三种形式,并推导了相应的估计。考虑了三种形式,即平方误差损失函数(SELF)和两种不同形式的加权平方误差损失函数(WSELF),即最小期望损失(MELO)函数和指数加权最小期望损失(EWMELO)函数。定义了各种形式w(θ, δ)的性能准则。已经证明,在这里考虑的w(theta, delta)的三种形式中,与EWMELO相对应的形式是最占优势的。
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