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Witte-et-al_2022_Multiple imputation and test-wise deletion for causal discovery with incomplete cohort data.pdf 3,20MB
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1000 Titel
  • Multiple imputation and test-wise deletion for causal discovery with incomplete cohort data
1000 Autor/in
  1. Witte, Janine |
  2. Foraita, Ronja |
  3. Didelez, Vanessa |
1000 Erscheinungsjahr 2022
1000 LeibnizOpen
1000 Publikationstyp
  1. Artikel |
1000 Online veröffentlicht
  • 2022-07-31
1000 Erschienen in
1000 Quellenangabe
  • 41(23):4716-4743
1000 FRL-Sammlung
1000 Copyrightjahr
  • 2022
1000 Lizenz
1000 Verlagsversion
  • https://doi.org/10.1002/sim.9535 |
1000 Ergänzendes Material
  • https://onlinelibrary.wiley.com/doi/10.1002/sim.9535#support-information-section |
1000 Publikationsstatus
1000 Begutachtungsstatus
1000 Sprache der Publikation
1000 Abstract/Summary
  • Causal discovery algorithms estimate causal graphs from observational data. This can provide a valuable complement to analyses focusing on the causal relation between individual treatment-outcome pairs. Constraint-based causal discovery algorithms rely on conditional independence testing when building the graph. Until recently, these algorithms have been unable to handle missing values. In this article, we investigate two alternative solutions: test-wise deletion and multiple imputation. We establish necessary and sufficient conditions for the recoverability of causal structures under test-wise deletion, and argue that multiple imputation is more challenging in the context of causal discovery than for estimation. We conduct an extensive comparison by simulating from benchmark causal graphs: as one might expect, we find that test-wise deletion and multiple imputation both clearly outperform list-wise deletion and single imputation. Crucially, our results further suggest that multiple imputation is especially useful in settings with a small number of either Gaussian or discrete variables, but when the dataset contains a mix of both neither method is uniformly best. The methods we compare include random forest imputation and a hybrid procedure combining test-wise deletion and multiple imputation. An application to data from the IDEFICS cohort study on diet- and lifestyle-related diseases in European children serves as an illustrating example.
1000 Sacherschließung
lokal causal search
lokal missing values
lokal MICE
lokal structure learning
lokal causal inference
lokal PC-algorithm
1000 Fächerklassifikation (DDC)
1000 Liste der Beteiligten
  1. https://frl.publisso.de/adhoc/uri/V2l0dGUsIEphbmluZQ==|https://orcid.org/0000-0003-2216-6653|https://orcid.org/0000-0001-8587-7706
1000 Label
1000 Förderer
  1. Deutsche Forschungsgemeinschaft |
  2. Projekt DEAL |
1000 Fördernummer
  1. DI 2372/1-1
  2. -
1000 Förderprogramm
  1. -
  2. Open access funding
1000 Dateien
  1. Multiple imputation and test-wise deletion for causal discovery with incomplete cohort data
1000 Förderung
  1. 1000 joinedFunding-child
    1000 Förderer Deutsche Forschungsgemeinschaft |
    1000 Förderprogramm -
    1000 Fördernummer DI 2372/1-1
  2. 1000 joinedFunding-child
    1000 Förderer Projekt DEAL |
    1000 Förderprogramm Open access funding
    1000 Fördernummer -
1000 Objektart article
1000 Beschrieben durch
1000 @id frl:6436421.rdf
1000 Erstellt am 2022-10-21T11:34:49.606+0200
1000 Erstellt von 266
1000 beschreibt frl:6436421
1000 Bearbeitet von 317
1000 Zuletzt bearbeitet 2022-10-24T08:17:20.600+0200
1000 Objekt bearb. Mon Oct 24 08:17:01 CEST 2022
1000 Vgl. frl:6436421
1000 Oai Id
  1. oai:frl.publisso.de:frl:6436421 |
1000 Sichtbarkeit Metadaten public
1000 Sichtbarkeit Daten public
1000 Gegenstand von

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