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  Regression by dependence minimization and its application to causal inference in additive noise models

Mooij, J., Janzing, D., Peters, J., & Schölkopf, B. (2009). Regression by dependence minimization and its application to causal inference in additive noise models. Proceedings of the 26th International Conference on Machine Learning (ICML 2009), 745-752.

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Mooij, JM1, Autor           
Janzing, D2, Autor           
Peters, J1, Autor           
Schölkopf, B1, Autor           
Danyluk, Herausgeber
A., Herausgeber
Bottou, L., Herausgeber
Littman, M., Herausgeber
Affiliations:
1Department Empirical Inference, Max Planck Institute for Biological Cybernetics, Max Planck Society, ou_1497795              
2Department Empirical Inference, Max Planck Institute for Biological Cybernetics, Max Planck Society, ou_1497795              

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 Zusammenfassung: Motivated by causal inference problems, we propose a novel method for regression that minimizes the statistical dependence between regressors and residuals. The key advantage of this approach to regression is that it does not assume a particular distribution of the noise, i.e., it is non-parametric with respect to the noise distribution. We argue that the proposed regression method is well suited to the task of causal inference in additive noise models. A practical disadvantage is that the resulting optimization problem is generally non-convex and can be difficult to solve. Nevertheless, we report good results on one of the tasks of the NIPS 2008 Causality Challenge, where the goal is to distinguish causes from effects in pairs of statistically dependent variables. In addition, we propose an algorithm for efficiently inferring causal models from observational data for more than two variables. The required number of regressions and independence tests is quadratic in the number of variables, which is a significant improvement over the simple method that tests all possible DAGs.

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Sprache(n):
 Datum: 2009-06
 Publikationsstatus: Erschienen
 Seiten: -
 Ort, Verlag, Ausgabe: -
 Inhaltsverzeichnis: -
 Art der Begutachtung: -
 Identifikatoren: URI: http://www.cs.mcgill.ca/~icml2009/
DOI: 10.1145/1553374.1553470
BibTex Citekey: 5869
 Art des Abschluß: -

Veranstaltung

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Titel: 26th International Conference on Machine Learning
Veranstaltungsort: Montreal, Canada
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Titel: Proceedings of the 26th International Conference on Machine Learning (ICML 2009)
Genre der Quelle: Zeitschrift
 Urheber:
Affiliations:
Ort, Verlag, Ausgabe: New York, NY, USA : ACM Press
Seiten: - Band / Heft: - Artikelnummer: - Start- / Endseite: 745 - 752 Identifikator: -