On the effect of confounding in linear regression models: an approach based on the theory of quadratic forms

IF 3 4区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES Environmental and Ecological Statistics Pub Date : 2024-03-22 DOI:10.1007/s10651-024-00604-y
Martina Narcisi, Fedele Greco, Carlo Trivisano
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Abstract

In the last two decades, significant research efforts have been dedicated to addressing the issue of spatial confounding in linear regression models. Confounding occurs when the relationship between the covariate and the response variable is influenced by an unmeasured confounder associated with both. This results in biased estimators for the regression coefficients reduced efficiency, and misleading interpretations. This article aims to understand how confounding relates to the parameters of the data generating process. The sampling properties of the regression coefficient estimator are derived as ratios of dependent quadratic forms in Gaussian random variables: this allows us to obtain exact expressions for the marginal bias and variance of the estimator, that were not obtained in previous studies. Moreover, we provide an approximate measure of the marginal bias that gives insights of the main determinants of bias. Applications in the framework of geostatistical and areal data modeling are presented. Particular attention is devoted to the difference between smoothness and variability of random vectors involved in the data generating process. Results indicate that marginal covariance between the covariate and the confounder, along with marginal variability of the covariate, play the most relevant role in determining the magnitude of confounding, as measured by the bias.

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关于线性回归模型中混杂因素的影响:基于二次形式理论的方法
在过去二十年里,大量研究工作致力于解决线性回归模型中的空间混杂问题。当协变量和响应变量之间的关系受到与两者相关的未测量混杂因素的影响时,就会产生混杂。这会导致回归系数的估计值有偏差,降低效率,并产生误导性解释。本文旨在了解混杂因素与数据生成过程参数的关系。回归系数估计器的抽样特性是作为高斯随机变量中的二次函数依赖形式的比率推导出来的:这使我们能够获得估计器边际偏差和方差的精确表达式,而这是以前的研究无法获得的。此外,我们还提供了边际偏差的近似度量,让人们深入了解偏差的主要决定因素。我们还介绍了在地质统计和地形数据建模框架中的应用。特别关注了数据生成过程中所涉及的随机向量的平滑性和可变性之间的差异。结果表明,协变量与混杂因素之间的边际协方差以及协变量的边际变异性在决定混杂因素的大小(以偏差衡量)方面发挥着最重要的作用。
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来源期刊
Environmental and Ecological Statistics
Environmental and Ecological Statistics 环境科学-环境科学
CiteScore
5.90
自引率
2.60%
发文量
27
审稿时长
>36 weeks
期刊介绍: Environmental and Ecological Statistics publishes papers on practical applications of statistics and related quantitative methods to environmental science addressing contemporary issues. Emphasis is on applied mathematical statistics, statistical methodology, and data interpretation and improvement for future use, with a view to advance statistics for environment, ecology and environmental health, and to advance environmental theory and practice using valid statistics. Besides clarity of exposition, a single most important criterion for publication is the appropriateness of the statistical method to the particular environmental problem. The Journal covers all aspects of the collection, analysis, presentation and interpretation of environmental data for research, policy and regulation. The Journal is cross-disciplinary within the context of contemporary environmental issues and the associated statistical tools, concepts and methods. The Journal broadly covers theory and methods, case studies and applications, environmental change and statistical ecology, environmental health statistics and stochastics, and related areas. Special features include invited discussion papers; research communications; technical notes and consultation corner; mini-reviews; letters to the Editor; news, views and announcements; hardware and software reviews; data management etc.
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