The role of causal reasoning in understanding Simpson's paradox, Lord's paradox, and the suppression effect: covariate selection in the analysis of observational studies

Abstract Tu et al present an analysis of the equivalence of three paradoxes, namely, Simpson's, Lord's, and the suppression phenomena. They conclude that all three simply reiterate the occurrence of a change in the association of any two variables when a third variable is statistically con...

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Main Author: Arah, Onyebuchi A
Format: Other/Unknown Material
Language:English
Published: BioMed Central Ltd. 2008
Subjects:
Online Access:http://www.ete-online.com/content/5/1/5
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spelling ftbiomed:oai:biomedcentral.com:1742-7622-5-5 2023-05-15T18:32:42+02:00 The role of causal reasoning in understanding Simpson's paradox, Lord's paradox, and the suppression effect: covariate selection in the analysis of observational studies Arah, Onyebuchi A 2008-02-26 http://www.ete-online.com/content/5/1/5 en eng BioMed Central Ltd. http://www.ete-online.com/content/5/1/5 Copyright 2008 Arah; licensee BioMed Central Ltd. Commentary 2008 ftbiomed 2008-03-22T00:11:04Z Abstract Tu et al present an analysis of the equivalence of three paradoxes, namely, Simpson's, Lord's, and the suppression phenomena. They conclude that all three simply reiterate the occurrence of a change in the association of any two variables when a third variable is statistically controlled for. This is not surprising because reversal or change in magnitude is common in conditional analysis. At the heart of the phenomenon of change in magnitude, with or without reversal of effect estimate, is the question of which to use: the unadjusted (combined table) or adjusted (sub-table) estimate. Hence, Simpson's paradox and related phenomena are a problem of covariate selection and adjustment (when to adjust or not) in the causal analysis of non-experimental data. It cannot be overemphasized that although these paradoxes reveal the perils of using statistical criteria to guide causal analysis, they hold neither the explanations of the phenomenon they depict nor the pointers on how to avoid them. The explanations and solutions lie in causal reasoning which relies on background knowledge, not statistical criteria. Other/Unknown Material The Pointers BioMed Central
institution Open Polar
collection BioMed Central
op_collection_id ftbiomed
language English
description Abstract Tu et al present an analysis of the equivalence of three paradoxes, namely, Simpson's, Lord's, and the suppression phenomena. They conclude that all three simply reiterate the occurrence of a change in the association of any two variables when a third variable is statistically controlled for. This is not surprising because reversal or change in magnitude is common in conditional analysis. At the heart of the phenomenon of change in magnitude, with or without reversal of effect estimate, is the question of which to use: the unadjusted (combined table) or adjusted (sub-table) estimate. Hence, Simpson's paradox and related phenomena are a problem of covariate selection and adjustment (when to adjust or not) in the causal analysis of non-experimental data. It cannot be overemphasized that although these paradoxes reveal the perils of using statistical criteria to guide causal analysis, they hold neither the explanations of the phenomenon they depict nor the pointers on how to avoid them. The explanations and solutions lie in causal reasoning which relies on background knowledge, not statistical criteria.
format Other/Unknown Material
author Arah, Onyebuchi A
spellingShingle Arah, Onyebuchi A
The role of causal reasoning in understanding Simpson's paradox, Lord's paradox, and the suppression effect: covariate selection in the analysis of observational studies
author_facet Arah, Onyebuchi A
author_sort Arah, Onyebuchi A
title The role of causal reasoning in understanding Simpson's paradox, Lord's paradox, and the suppression effect: covariate selection in the analysis of observational studies
title_short The role of causal reasoning in understanding Simpson's paradox, Lord's paradox, and the suppression effect: covariate selection in the analysis of observational studies
title_full The role of causal reasoning in understanding Simpson's paradox, Lord's paradox, and the suppression effect: covariate selection in the analysis of observational studies
title_fullStr The role of causal reasoning in understanding Simpson's paradox, Lord's paradox, and the suppression effect: covariate selection in the analysis of observational studies
title_full_unstemmed The role of causal reasoning in understanding Simpson's paradox, Lord's paradox, and the suppression effect: covariate selection in the analysis of observational studies
title_sort role of causal reasoning in understanding simpson's paradox, lord's paradox, and the suppression effect: covariate selection in the analysis of observational studies
publisher BioMed Central Ltd.
publishDate 2008
url http://www.ete-online.com/content/5/1/5
genre The Pointers
genre_facet The Pointers
op_relation http://www.ete-online.com/content/5/1/5
op_rights Copyright 2008 Arah; licensee BioMed Central Ltd.
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