N − 1 Experiments Suffice to Determine the Causal Relations Among N Variables

Abstract

By combining experimental interventions with search procedures for graphical causal models we show that under familiar assumptions, with perfect data, N - 1 experiments suffice to determine the causal relations among N > 2 variables when each experiment randomizes at most one variable. We show the same bound holds for adaptive learners, but does not hold for N > 4 when each experiment can simultaneously randomize more than one variable. This bound provides a type of ideal for the measure of success of heuristic approached in active learning methods of casual discovery, which currently use less informative measures

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2010-09-14

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Author Profiles

Clark Glymour
Carnegie Mellon University
Frederick Eberhardt
California Institute of Technology
Richard Scheines
Carnegie Mellon University

Citations of this work

Identifying intervention variables.Michael Baumgartner & Isabelle Drouet - 2013 - European Journal for Philosophy of Science 3 (2):183-205.

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