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Alternative mean-squared error estimators for synthetic estimators of domain means

机译:领域均值的综合估计量的替代均方误差估计量

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摘要

In forest management surveys, the mean of a variable of interest (Y) in a population composed of N equal area spatial compact elements is increasingly estimated from a model linking Y to an auxiliary vector X known for all elements in the population. It is also desired to have synthetic estimates of the mean of Y in spatially compact domains (forest stands) with no or at most one sample-based observation of Y. We develop three alternative estimators of mean-squared errors (MSE) that reduce the risk of a serious underestimation of the uncertainty in a synthetic estimate of a domain mean in cases where the employed model does not accounts for domain effects nor spatial autocorrelation in unobserved residual errors. Expansions of the estimators including anticipated effects of a spatial autocorrelation in residual errors are also provided. Simulation results indicate that the conventional model-dependent (MD) population-level estimator of variance in a synthetic estimate of a domain mean underestimates uncertainty by a wide margin. Our alternative estimators mitigated, in settings with weak to moderate domain effects and relatively small sample sizes, to a large extent, the problem of underestimating uncertainty. We demonstrate applications with examples from two actual forest inventories.
机译:在森林管理调查中,越来越多地从将Y与链接到种群中所有元素已知的辅助向量X的模型中估算由N个等面积空间紧凑元素组成的种群中的关注变量(Y)的平均值。还希望在没有或只有一个基于样本的Y观测值的情况下,在空间紧凑域(林分)中对Y的平均值进行综合估计。我们开发了三种均方误差(MSE)替代估计量,这些估计值可减少在所用模型未考虑未观察到的残差中的域效应或空间自相关的情况下,域平均值的综合估计中存在不确定性严重低估的风险。还提供了估计量的扩展,包括在残差中的空间自相关的预期效果。仿真结果表明,在域平均值的综合估计中,传统的依赖于模型的(MD)总体水平方差估计器会大大低估不确定性。我们的替代估计量在弱到中等的域效应和相对较小的样本量的情况下,在很大程度上缓解了低估不确定性的问题。我们用来自两个实际森林清单的示例来演示应用程序。

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