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Publication details
Year: 2016
Pages: 1029-1046
Series: Synthese
Full citation:
, "Green and grue causal variables", Synthese 193 (4), 2016, pp. 1029-1046.
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Green and grue causal variables
pp. 1029-1046
in: Alexander Gebharter, Gerhard Schurz (eds), Causation, probability, and truth, Synthese 193 (4), 2016.Abstract
The causal Bayes net framework specifies a set of axioms for causal discovery. This article explores the set of causal variables that function as relata in these axioms. Spirtes (2007) showed how a causal system can be equivalently described by two different sets of variables that stand in a non-trivial translation-relation to each other, suggesting that there is no “correct” set of causal variables. I extend Spirtes’ result to the general framework of linear structural equation models and then explore to what extent the possibility to intervene or a preference for simpler causal systems may help in selecting among sets of causal variables.
Publication details
Year: 2016
Pages: 1029-1046
Series: Synthese
Full citation:
, "Green and grue causal variables", Synthese 193 (4), 2016, pp. 1029-1046.