Causality in Cognitive Neuroscience: Concepts, Challenges, and Distributional Robustness

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Causality in Cognitive Neuroscience : Concepts, Challenges, and Distributional Robustness. / Weichwald, Sebastian; Peters, Jonas.

I: Journal of Cognitive Neuroscience, Bind 33, Nr. 2, 02.2021, s. 226-247.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Weichwald, S & Peters, J 2021, 'Causality in Cognitive Neuroscience: Concepts, Challenges, and Distributional Robustness', Journal of Cognitive Neuroscience, bind 33, nr. 2, s. 226-247. https://doi.org/10.1162/jocn_a_01623

APA

Weichwald, S., & Peters, J. (2021). Causality in Cognitive Neuroscience: Concepts, Challenges, and Distributional Robustness. Journal of Cognitive Neuroscience, 33(2), 226-247. https://doi.org/10.1162/jocn_a_01623

Vancouver

Weichwald S, Peters J. Causality in Cognitive Neuroscience: Concepts, Challenges, and Distributional Robustness. Journal of Cognitive Neuroscience. 2021 feb.;33(2):226-247. https://doi.org/10.1162/jocn_a_01623

Author

Weichwald, Sebastian ; Peters, Jonas. / Causality in Cognitive Neuroscience : Concepts, Challenges, and Distributional Robustness. I: Journal of Cognitive Neuroscience. 2021 ; Bind 33, Nr. 2. s. 226-247.

Bibtex

@article{7b466fffda4c44cd98b4bd9a0eaf4a99,
title = "Causality in Cognitive Neuroscience: Concepts, Challenges, and Distributional Robustness",
abstract = "Whereas probabilistic models describe the dependence structure between observed variables, causal models go one step further: They predict, for example, how cognitive functions are affected by external interventions that perturb neuronal activity. In this review and perspective article, we introduce the concept of causality in the context of cognitive neuroscience and review existing methods for inferring causal relationships from data. Causal inference is an ambitious task that is particularly challenging in cognitive neuroscience. We discuss two difficulties in more detail: the scarcity of interventional data and the challenge of finding the right variables. We argue for distributional robustness as a guiding principle to tackle these problems. Robustness (or invariance) is a fundamental principle underlying causal methodology. A (correctly specified) causal model of a target variable generalizes across environments or subjects as long as these environments leave the causal mechanisms of the target intact. Consequently, if a candidate model does not generalize, then either it does not consist of the target variable's causes or the underlying variables do not represent the correct granularity of the problem. In this sense, assessing generalizability may be useful when defining relevant variables and can be used to partially compensate for the lack of interventional data.",
author = "Sebastian Weichwald and Jonas Peters",
year = "2021",
month = feb,
doi = "10.1162/jocn_a_01623",
language = "English",
volume = "33",
pages = "226--247",
journal = "Journal of Cognitive Neuroscience",
issn = "0898-929X",
publisher = "MIT Press",
number = "2",

}

RIS

TY - JOUR

T1 - Causality in Cognitive Neuroscience

T2 - Concepts, Challenges, and Distributional Robustness

AU - Weichwald, Sebastian

AU - Peters, Jonas

PY - 2021/2

Y1 - 2021/2

N2 - Whereas probabilistic models describe the dependence structure between observed variables, causal models go one step further: They predict, for example, how cognitive functions are affected by external interventions that perturb neuronal activity. In this review and perspective article, we introduce the concept of causality in the context of cognitive neuroscience and review existing methods for inferring causal relationships from data. Causal inference is an ambitious task that is particularly challenging in cognitive neuroscience. We discuss two difficulties in more detail: the scarcity of interventional data and the challenge of finding the right variables. We argue for distributional robustness as a guiding principle to tackle these problems. Robustness (or invariance) is a fundamental principle underlying causal methodology. A (correctly specified) causal model of a target variable generalizes across environments or subjects as long as these environments leave the causal mechanisms of the target intact. Consequently, if a candidate model does not generalize, then either it does not consist of the target variable's causes or the underlying variables do not represent the correct granularity of the problem. In this sense, assessing generalizability may be useful when defining relevant variables and can be used to partially compensate for the lack of interventional data.

AB - Whereas probabilistic models describe the dependence structure between observed variables, causal models go one step further: They predict, for example, how cognitive functions are affected by external interventions that perturb neuronal activity. In this review and perspective article, we introduce the concept of causality in the context of cognitive neuroscience and review existing methods for inferring causal relationships from data. Causal inference is an ambitious task that is particularly challenging in cognitive neuroscience. We discuss two difficulties in more detail: the scarcity of interventional data and the challenge of finding the right variables. We argue for distributional robustness as a guiding principle to tackle these problems. Robustness (or invariance) is a fundamental principle underlying causal methodology. A (correctly specified) causal model of a target variable generalizes across environments or subjects as long as these environments leave the causal mechanisms of the target intact. Consequently, if a candidate model does not generalize, then either it does not consist of the target variable's causes or the underlying variables do not represent the correct granularity of the problem. In this sense, assessing generalizability may be useful when defining relevant variables and can be used to partially compensate for the lack of interventional data.

U2 - 10.1162/jocn_a_01623

DO - 10.1162/jocn_a_01623

M3 - Journal article

C2 - 32812827

VL - 33

SP - 226

EP - 247

JO - Journal of Cognitive Neuroscience

JF - Journal of Cognitive Neuroscience

SN - 0898-929X

IS - 2

ER -

ID: 258901390