Type-II Errors of Independence Tests Can Lead to Arbitrarily Large Errors in Estimated Causal Effects: An Illustrative Example

Open Access
Authors
Publication date 2014
Host editors
  • J.M. Mooij
  • D. Janzing
  • J. Peters
  • T. Claassen
  • A. Hyttinen
Book title Proceedings of the UAI 2014 Workshop Causal Inference: Learning and Prediction
Book subtitle co-located with 30th Conference on Uncertainty in Artificial Intelligence (UAI 2014) : Quebec City, Canada, July 27, 2014
Series CEUR Workshop Proceedings
Event UAI 2014 Workshop on Causal Inference: Learning and Prediction
Pages (from-to) 35-42
Publisher Aachen: CEUR-WS
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Estimating the strength of causal effects from observational data is a common problem in scientific research. A popular approach is based on exploiting observed conditional independences between variables. It is wellknown that this approach relies on the assumption of faithfulness. In our opinion, a more important practical limitation of this approach is that it relies on the ability to distinguish independences from (arbitrarily weak) dependences. We present a simple analysis, based on purely algebraic and geometrical arguments, of how the estimation of the causal effect strength, based on conditional independence tests and background knowledge, can have an arbitrarily large error due to the uncontrollable type II error of a single conditional independence test. The scenario we are studying here is related to the LCD algorithm by Cooper [1] and to the instrumental variable setting that is popular in epidemiology and econometry. It is one of the simplest settings in which causal discovery and prediction methods based on conditional independences arrive at non-trivial conclusions, yet for which the lack of uniform consistency can result in arbitrarily large prediction errors.
Document type Conference contribution
Language English
Published at http://ceur-ws.org/Vol-1274/uai2014ci_paper7.pdf
Other links http://ceur-ws.org/Vol-1274
Downloads
uai2014ci_paper7 (Final published version)
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