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Causal Reasoning in Graphical Time Series Models
Published 20 Jun 2012 in stat.ME and cs.AI | (1206.5246v1)
Abstract: We propose a definition of causality for time series in terms of the effect of an intervention in one component of a multivariate time series on another component at some later point in time. Conditions for identifiability, comparable to the back-door and front-door criteria, are presented and can also be verified graphically. Computation of the causal effect is derived and illustrated for the linear case.
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