An overview of relations among causal modelling methods

Type: Review

Publication Date: 2002-10-01

Citations: 380

DOI: https://doi.org/10.1093/ije/31.5.1030

Abstract

This paper provides a brief overview to four major types of causal models for health-sciences research: Graphical models (causal diagrams), potential-outcome (counterfactual) models, sufficient-component cause models, and structural-equations models. The paper focuses on the logical connections among the different types of models and on the different strengths of each approach. Graphical models can illustrate qualitative population assumptions and sources of bias not easily seen with other approaches; sufficient-component cause models can illustrate specific hypotheses about mechanisms of action; and potential-outcome and structural-equations models provide a basis for quantitative analysis of effects. The different approaches provide complementary perspectives, and can be employed together to improve causal interpretations of conventional statistical results.

Locations

  • International Journal of Epidemiology - View - PDF
  • PubMed - View

Similar Works

Action Title Year Authors
+ Causal Analysis in the Health Sciences 2000 Sander Greenland
+ Effects of Causes and Causes of Effects 2021 A. P. Dawid
Monica Musio
+ PDF Chat Effects of Causes and Causes of Effects 2021 A. P. Dawid
Monica Musio
+ PDF Chat An Introduction to Causal Inference 2010 Judea Pearl
+ Causal Diagrams 2017 Sander Greenland
Judea Pearl
+ Causal Diagrams 2008 Sander Greenland
Judea Pearl
+ Causal Diagrams 2014 Sander Greenland
Judea Pearl
+ Causal inference 2008 Judea Pearl
+ Causality/Causation 2014 Carl V. Phillips
Karen J. Goodman
+ Causality/Causation 2008 Carl V. Phillips
Karen J. Goodman
+ Causal Models 2009 Joseph W. Hogan
+ Causal Inference: A Statistical Paradigm for Inferring Causality 2016 Pan Wu
Wan Tang
Tian Chen
Hua He
Douglas D. Gunzler
Xin Tu
+ Causation and causal inference 2021 Katherine J. Hoggatt
Tyler J. VanderWeele
Sander Greenland
+ PDF Chat An Introduction to Causal Inference 2020 Fabian Dablander
+ Causal Inference, Causal Effect Estimation, and Systematic Error 2019 Daniel Westreich
+ Data-Driven Causal Effect Estimation Based on Graphical Causal Modelling: A Survey 2022 Debo Cheng
Jiuyong Li
Lin Liu
Jixue Liu
Thuc Duy Le
+ Data-Driven Causal Effect Estimation Based on Graphical Causal Modelling: A Survey 2023 Debo Cheng
Jiuyong Li
Lin Liu
Jixue Liu
Thuc Duy Le
+ Perspectives on Causality 2024 Gianluca Manzo
Lucas Sage
+ Graphical Causal Models 2013 Felix Elwert
+ Population Health and Causal Inference 2016 Benjamin Smart