Causality from Probability

Abstract

Data analysis that merely fits an empirical covariance matrix or that finds the best least squares linear estimator of a variable is not of itself a reliable guide to judgements about policy, which inevitably involve causal conclusions. The policy implications of empirical data can be completely reversed by alternative hypotheses about the causal relations of variables, and the estimates of a particular causal influence can be radically altered by changes in the assumptions made about other dependencies.2 For these reasons, one of the common aims of empirical research in the..

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2010-12-22

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Peter Spirtes
Carnegie Mellon University

Citations of this work

Causal inference.C. Glymour, P. Spirtes & R. Scheines - 1991 - Erkenntnis 35 (1-3):151 - 189.
From probability to causality.Peter Spirtes, Clark Glymour & Richard Scheines - 1991 - Philosophical Studies 64 (1):1 - 36.

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