Causal Consistency of Structural Equation Models

Open Access
Authors
  • D. Janzing
  • M. Grosse-Wentrup
  • B. Schölkopf
Publication date 2017
Host editors
  • G. Elidan
  • K. Kersting
Book title Uncertainty in Artificial Intelligence
Book subtitle proceedings of the Thirty-Third Conference (2017) : 11-15 August 2017, Sydney, Australia
Event 33rd Conference on Uncertainty in Artificial Intelligence
Article number 11
Number of pages 10
Publisher Corvallis, OR: AUAI Press
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Complex systems can be modelled at various levels of detail. Ideally, causal models of the same system should be consistent with one another in the sense that they agree in their predictions of the effects of interventions. We formalise this notion of consistency in the case of Structural Equation Models (SEMs) by introducing exact transformations between SEMs. This provides a general language to consider, for instance, the different levels of description in the following three scenarios: (a) models with large numbers of variables versus models in which the `irrelevant' or unobservable variables have been marginalised out; (b) micro-level models versus macro-level models in which the macro-variables are aggregate features of the micro-variables; (c) dynamical time series models versus models of their stationary behaviour. Our analysis stresses the importance of well specified interventions in the causal modelling process and sheds light on the interpretation of cyclic SEMs.
Document type Conference contribution
Note With supplementary data
Language English
Published at http://auai.org/uai2017/proceedings/papers/11.pdf
Other links http://auai.org/uai2017/proceedings/supplements/11.pdf https://dblp.org/db/conf/uai/uai2017.html
Downloads
camera_ready_uai2017 (Accepted author manuscript)
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