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Bayesian Estimation of Inequality and Poverty Indices in Case of Pareto Distribution Using Different Priors under LINEX Loss Function

机译:LINEX损失函数下使用不同先验的帕累托分布情况下的不平等和贫困指数的贝叶斯估计

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Bayesian estimators of Gini index and a Poverty measure are obtained in case of Pareto distribution under censored and complete setup. The said estimators are obtained using two noninformative priors, namely, uniform prior and Jeffreys’ prior, and one conjugate prior under the assumption of Linear Exponential (LINEX) loss function. Using simulation techniques, the relative efficiency of proposed estimators using different priors and loss functions is obtained. The performances of the proposed estimators have been compared on the basis of their simulated risks obtained under LINEX loss function.
机译:在经过审查和完整设置的情况下,在帕累托分布的情况下,可以获得基尼指数的贝叶斯估计量和贫困测度。在线性指数(LINEX)损失函数的假设下,使用两个非信息先验,即统一先验和杰弗里斯先验,以及一个共轭先验,获得估计量。使用仿真技术,可以得到使用不同先验和损失函数的估计量的相对效率。根据在LINEX损失函数下获得的模拟风险,对拟议估计量的性能进行了比较。

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