Adjustment of Anticipatory Covariates in Retrospective Surveys: An Expected Likelihood Approach

IF 0.9 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Stats Pub Date : 2023-11-01 DOI:10.3390/stats6040074
Gebrenegus Ghilagaber, Rolf Larsson
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Abstract

We address an inference issue where the value of a covariate is measured at the date of the survey but is used to explain behavior that has occurred long before the survey. This causes bias because the value of the covariate does not follow the temporal order of events. We propose an expected likelihood approach to adjust for such bias and illustrate it with data on the effects of educational level achieved by the time of marriage on risks of divorce. For individuals with anticipatory educational level (whose reported educational level was completed after marriage), conditional probabilities of having attained the reported level before marriage are computed. These are then used as weights in the expected likelihood to obtain adjusted estimates of relative risks. For our illustrative data set, the adjusted estimates of relative risks of divorce did not differ significantly from those obtained from anticipatory analysis that ignores the temporal order of events. Our results are slightly different from those in two other studies that analyzed the same data set in a Bayesian framework, though the studies are not fully comparable to each other.
回顾性调查中预期协变量的调整:一种预期似然方法
我们解决了一个推理问题,其中协变量的值是在调查日期测量的,但用于解释早在调查之前就发生的行为。这会导致偏差,因为协变量的值不遵循事件的时间顺序。我们提出了一种预期的可能性方法来调整这种偏差,并用结婚时的教育水平对离婚风险的影响数据来说明它。对于具有预期教育水平(其报告的教育水平是在结婚后完成的)的个人,计算其在结婚前达到报告的教育水平的条件概率。然后将这些用作期望可能性中的权重,以获得相对风险的调整估计。对于我们的说明性数据集,调整后的离婚相对风险估计值与忽略事件时间顺序的预期分析所得估计值没有显著差异。我们的结果与另外两项在贝叶斯框架中分析相同数据集的研究略有不同,尽管这两项研究之间并不完全具有可比性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.60
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0.00%
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审稿时长
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