利用随机加权神经网络进行小区域估算的非线性费-赫里奥特模型

Pub Date : 2024-05-15 DOI:10.1177/0282423x241244671
Paul A. Parker
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引用次数: 0

摘要

小区域估算模型对于传播和了解往往样本量有限的子区域内的重要人口特征至关重要。经典的 Fay-Herriot 模型可能是生成此类估计值最广泛使用的方法。然而,这种方法的一个限制性假设是,潜在的真实人口数量与给定的协变量具有线性关系。通过使用随机加权神经网络,我们开发出了这一框架的贝叶斯分层扩展方法,允许对真实人口数量与协变量之间的非线性关系进行估计。我们通过实证模拟研究以及对加利福尼亚州人口普查区家庭收入中位数的分析来说明我们的方法。
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Nonlinear Fay-Herriot Models for Small Area Estimation Using Random Weight Neural Networks
Small area estimation models are critical for dissemination and understanding of important population characteristics within sub-domains that often have limited sample size. The classic Fay-Herriot model is perhaps the most widely used approach to generate such estimates. However, a limiting assumption of this approach is that the latent true population quantity has a linear relationship with the given covariates. Through the use of random weight neural networks, we develop a Bayesian hierarchical extension of this framework that allows for estimation of nonlinear relationships between the true population quantity and the covariates. We illustrate our approach through an empirical simulation study as well as an analysis of median household income for census tracts in the state of California.
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