The concept of spatial confounding is closely connected to spatial regression, although no general definition has been established. A generally accepted idea of spatial confounding in spatial regression models is the change in fixed effects estimates that may occur when spatially correlated random effects collinear with the covariate are included in the model. Different methods have been proposed to alleviate spatial confounding in spatial linear regression models, but it is not clear if they provide correct fixed effects estimates. In this article, we consider some of those proposals to alleviate spatial confounding such as restricted regression, the spatial+ model, and transformed Gaussian Markov random fields. The objective is to determine which one provides the best estimates of the fixed effects. Dowry death data in Uttar Pradesh in 2001, stomach cancer incidence data in Slovenia in the period 1995-2001 and lip cancer incidence data in Scotland between the years 1975-1980 are analyzed. Several simulation studies are conducted to evaluate the performance of the methods in different scenarios of spatial confounding. Results reflect that the spatial+ method seems to provide fixed effects estimates closest to the true value.
翻译:空间混乱的概念与空间倒退密切相关,尽管尚未确立一般定义。空间倒退模型中空间混乱的一个普遍接受的概念是,当空间相关随机效应与共变体相伴时,固定效应估计数可能会发生变化。提出了不同的方法来缓解空间线回归模型中的空间混乱,但不清楚这些方法是否提供了正确的固定效应估计。在本条中,我们认为其中一些建议是为了缓解空间混乱,如限制回归、空间+模型和Gaussian Markov随机字段的变化。目的是确定哪些是固定效应的最佳估计。目标是确定哪些是固定效应的最佳估计。2001年,北方邦的多夫里死亡数据,1995-2001年期间斯洛文尼亚的胃癌发病率数据,以及1975-1980年期间苏格兰的唇癌发病率数据。进行了一些模拟研究,以评价不同空间碰撞情景中方法的性能。结果表明,空间+方法似乎提供了最接近真实价值的固定效应估计。