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Causality and forecasting in incomplete systems
Author(s) -
Caporale Guglielmo Maria,
Pittis Nikitas
Publication year - 1997
Publication title -
journal of forecasting
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.543
H-Index - 59
eISSN - 1099-131X
pISSN - 0277-6693
DOI - 10.1002/(sici)1099-131x(199711)16:6<425::aid-for657>3.0.co;2-9
Subject(s) - bivariate analysis , econometrics , causality (physics) , invariant (physics) , model selection , inference , variable (mathematics) , mathematics , computer science , statistics , artificial intelligence , physics , quantum mechanics , mathematical analysis , mathematical physics
In this paper we examine how causality inference and forecasting within a bivariate VAR, consisting of y ( t ) and x ( t ), are affected by the omission of a third variable, w ( t ), which causes (a) none, (b) one, and (c) both variables in the bivariate system. We also derive conditions under which causality inference and forecasting are invariant to the selection of a bivariate or a trivariate model. The most general condition for the invariance of both causality and forecasting to model selection is shown to require the omitted variable not to cause any of the variables in the bivariate system, although it allows the omitted variable to be caused by the other two. We also show that the conditions for one‐way causality inference to be invariant to model selection are not sufficient to ensure that forecasting will also be invariant to the model selected. Finally, we present a numerical illustration of the potential losses, in terms of the variance of the forecast, as a function of the forecast horizon and for alternative parameter values—they can be rather large, as the omission of a variable can make the incomplete model unstable. © 1997 John Wiley & Sons, Ltd.