CoOL
Causes of Outcome Learning
Implementing the computational phase of the Causes of Outcome Learning approach as described in Rieckmann, Dworzynski, Arras, Lapuschkin, Samek, Arah, Rod, Ekstrom. 2022. Causes of outcome learning: A causal inference-inspired machine learning approach to disentangling common combinations of potential causes of a health outcome. International Journal of Epidemiology <doi:10.1093/ije/dyac078>. The optional 'ggtree' package can be obtained through Bioconductor.
- Version1.1.2
- R versionunknown
- LicenseGPL-2
- Needs compilation?Yes
- Last release05/24/2022
Documentation
Team
Andreas Rieckmann
Piotr Dworzynski
Show author detailsRolesAuthorLeila Arras
Show author detailsRolesContributorClaus Thorn Ekstrom
Show author detailsRolesAuthor
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- Imports8 packages
- Suggests1 package
- Linking To2 packages