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Maximum entropy and Bayesian approaches to the ratio problem

机译:比率问题的最大熵和贝叶斯方法

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摘要

Maximum entropy and Bayesian approaches provide superior estimates of a ratio of parameters, as this paper illustrates using the classic Nerlove model of agricultural supply. Providing extra information in the supports for the underlying parameters for generalized maximum entropy (GME) estimators or as an analytically derived prior distribution in Zellner's minimum expected loss (MELO) estimators and Bayesian. method of moments (BMOM) estimators helps substantially. Simulations illustrate that GME,MELO, and BMOM estimators with "conservative" priors have much smaller mean square errors and average biases than do standard ordinary least squares or MELO and BMOM estimators with uninformative priors. In addition, a new estimator of the structural agricultural supply model provides estimates of parameters that cannot be obtained directly using traditional, reduced-form approaches.
机译:如本文所示,使用经典的Nerlove农业供给模型可以说明,最大熵和贝叶斯方法可以很好地估计参数比率。在支持中为广义最大熵(GME)估计器的基本参数提供额外的信息,或者在Zellner的最小预期损失(MELO)估计器和贝叶斯估计中以分析方式得出的先验分布。矩量法(BMOM)估计器有很大帮助。仿真表明,具有“保守”先验的GME,MELO和BMOM估计器的均方误差和平均偏差要比标准普通最小二乘法或具有非先验先验的MELO和BMOM估计器小。另外,结构性农业供给模型的新估计器提供了使用传统的简化形式方法无法直接获得的参数估计。

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