Invariant Causal Prediction for Nonlinear Models

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Invariant Causal Prediction for Nonlinear Models. / Heinze-Deml, Christina; Peters, Jonas; Meinshausen, Nicolai.

I: Journal of Causal Inference, Bind 6, Nr. 2, 20170016, 2018.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Heinze-Deml, C, Peters, J & Meinshausen, N 2018, 'Invariant Causal Prediction for Nonlinear Models', Journal of Causal Inference, bind 6, nr. 2, 20170016. https://doi.org/10.1515/jci-2017-0016

APA

Heinze-Deml, C., Peters, J., & Meinshausen, N. (2018). Invariant Causal Prediction for Nonlinear Models. Journal of Causal Inference, 6(2), [20170016]. https://doi.org/10.1515/jci-2017-0016

Vancouver

Heinze-Deml C, Peters J, Meinshausen N. Invariant Causal Prediction for Nonlinear Models. Journal of Causal Inference. 2018;6(2). 20170016. https://doi.org/10.1515/jci-2017-0016

Author

Heinze-Deml, Christina ; Peters, Jonas ; Meinshausen, Nicolai. / Invariant Causal Prediction for Nonlinear Models. I: Journal of Causal Inference. 2018 ; Bind 6, Nr. 2.

Bibtex

@article{e695ca85e2f14ad3b4dd1c58f27d5ada,
title = "Invariant Causal Prediction for Nonlinear Models",
abstract = "An important problem in many domains is to predict how a system will respond to interventions. This task is inherently linked to estimating the system{\textquoteright}s underlying causal structure. To this end, Invariant Causal Prediction (ICP) [1] has been proposed which learns a causal model exploiting the invariance of causal relations using data from different environments. When considering linear models, the implementation of ICP is relatively straightforward. However, the nonlinear case is more challenging due to the difficulty of performing nonparametric tests for conditional independence.In this work, we present and evaluate an array of methods for nonlinear and nonparametric versions of ICP for learning the causal parents of given target variables. We find that an approach which first fits a nonlinear model with data pooled over all environments and then tests for differences between the residual distributions across environments is quite robust across a large variety of simulation settings. We call this procedure “invariant residual distribution test”. In general, we observe that the performance of all approaches is critically dependent on the true (unknown) causal structure and it becomes challenging to achieve high power if the parental set includes more than two variables.As a real-world example, we consider fertility rate modeling which is central to world population projections. We explore predicting the effect of hypothetical interventions using the accepted models from nonlinear ICP. The results reaffirm the previously observed central causal role of child mortality rates.",
keywords = "causal structure learning, structural equation models, invariance",
author = "Christina Heinze-Deml and Jonas Peters and Nicolai Meinshausen",
year = "2018",
doi = "10.1515/jci-2017-0016",
language = "English",
volume = "6",
journal = "Journal of Causal Inference",
issn = "2193-3677",
publisher = "Walterde Gruyter GmbH",
number = "2",

}

RIS

TY - JOUR

T1 - Invariant Causal Prediction for Nonlinear Models

AU - Heinze-Deml, Christina

AU - Peters, Jonas

AU - Meinshausen, Nicolai

PY - 2018

Y1 - 2018

N2 - An important problem in many domains is to predict how a system will respond to interventions. This task is inherently linked to estimating the system’s underlying causal structure. To this end, Invariant Causal Prediction (ICP) [1] has been proposed which learns a causal model exploiting the invariance of causal relations using data from different environments. When considering linear models, the implementation of ICP is relatively straightforward. However, the nonlinear case is more challenging due to the difficulty of performing nonparametric tests for conditional independence.In this work, we present and evaluate an array of methods for nonlinear and nonparametric versions of ICP for learning the causal parents of given target variables. We find that an approach which first fits a nonlinear model with data pooled over all environments and then tests for differences between the residual distributions across environments is quite robust across a large variety of simulation settings. We call this procedure “invariant residual distribution test”. In general, we observe that the performance of all approaches is critically dependent on the true (unknown) causal structure and it becomes challenging to achieve high power if the parental set includes more than two variables.As a real-world example, we consider fertility rate modeling which is central to world population projections. We explore predicting the effect of hypothetical interventions using the accepted models from nonlinear ICP. The results reaffirm the previously observed central causal role of child mortality rates.

AB - An important problem in many domains is to predict how a system will respond to interventions. This task is inherently linked to estimating the system’s underlying causal structure. To this end, Invariant Causal Prediction (ICP) [1] has been proposed which learns a causal model exploiting the invariance of causal relations using data from different environments. When considering linear models, the implementation of ICP is relatively straightforward. However, the nonlinear case is more challenging due to the difficulty of performing nonparametric tests for conditional independence.In this work, we present and evaluate an array of methods for nonlinear and nonparametric versions of ICP for learning the causal parents of given target variables. We find that an approach which first fits a nonlinear model with data pooled over all environments and then tests for differences between the residual distributions across environments is quite robust across a large variety of simulation settings. We call this procedure “invariant residual distribution test”. In general, we observe that the performance of all approaches is critically dependent on the true (unknown) causal structure and it becomes challenging to achieve high power if the parental set includes more than two variables.As a real-world example, we consider fertility rate modeling which is central to world population projections. We explore predicting the effect of hypothetical interventions using the accepted models from nonlinear ICP. The results reaffirm the previously observed central causal role of child mortality rates.

KW - causal structure learning

KW - structural equation models

KW - invariance

U2 - 10.1515/jci-2017-0016

DO - 10.1515/jci-2017-0016

M3 - Journal article

VL - 6

JO - Journal of Causal Inference

JF - Journal of Causal Inference

SN - 2193-3677

IS - 2

M1 - 20170016

ER -

ID: 215037472