Measurement Dependence Inducing Latent Causal Models

Alex Markham, Moritz Grosse-Wentrup

Publications: Contribution to conferencePaperPeer Reviewed

Abstract

We consider the task of causal structure learning over measurement dependence inducing latent (MeDIL) causal models. We show that thistask can be framed in terms of the graph theoretic problem of finding edge clique covers, resulting in an algorithm for returning minimalMeDIL causal models (minMCMs). This algorithm is non-parametric, requiring no assumptions about linearity or Gaussianity. Furthermore, despite rather weak assumptions aboutthe class of MeDIL causal models, we show that minimality in minMCMs implies some rather specific and interesting properties. By establishing MeDIL causal models as a semantics for edge clique covers, we also provide a starting point for future work further connecting causal structure learning to developments in graph theory and network science.
Original languageEnglish
Pages590-599
Number of pages10
DOIs
Publication statusPublished - 21 Sept 2020
EventConference on Uncertainty and Artificial Intelligence - online, Unknown
Duration: 3 Aug 20206 Aug 2020
Conference number: 36
http://www.auai.org/uai2020/index.php
https://www.auai.org/uai2020/

Conference

ConferenceConference on Uncertainty and Artificial Intelligence
Abbreviated titleUAI
Country/TerritoryUnknown
Period3/08/206/08/20
Internet address

Austrian Fields of Science 2012

  • 102019 Machine learning
  • 101011 Graph theory
  • 101018 Statistics

Keywords

  • causal inference
  • machine learning
  • graph theory
  • stat.ML
  • Network Science

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