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Abstract Problems involving causal inference have dogged at the heels of statistics since its earliest days. Correlation does not imply causation, and yet causal conclusions drawn from a carefully designed experiment are often valid. What can a statistical model say about causation? This question is addressed by using a particular model for causal inference (Holland and Rubin 1983; Rubin 1974) to critique the discussions of other writers on causation and causal inference. These include selected philosophers, medical researchers, statisticians, econometricians, and proponents of causal modeling. Key Words: Causal modelPhilosophyAssociationExperimentsMill's methodsCausal effectKoch's postulatesHill's nine factorsGranger causalityPath diagramsProbabilistic causality This article is part of the following collections: Teaching Simpson’s Paradox, Confounding, and Causal Inference
Paul W. Holland (Mon,) studied this question.