The relationship between statistical dependency and causality lies
at the heart of all statistical approaches to causal inference. The D2C
package implements a supervised machine learning approach to infer the
existence of a directed causal link between two variables in multivariate
settings with n>2 variables. The approach relies on the asymmetry of some
conditional (in)dependence relations between the members of the Markov
blankets of two variables causally connected. The D2C algorithm predicts
the existence of a direct causal link between two variables in a
multivariate setting by (i) creating a set of of features of the
relationship based on asymmetric descriptors of the multivariate dependency
and (ii) using a classifier to learn a mapping between the features and the
presence of a causal link
Version: |
1.2.1 |
Depends: |
R (≥ 2.10.0), randomForest |
Imports: |
gRbase, lazy, RBGL, MASS, corpcor, methods, Rgraphviz, foreach |
Suggests: |
knitr |
Published: |
2015-01-21 |
Author: |
Gianluca Bontempi, Catharina Olsen, Maxime Flauder |
Maintainer: |
Catharina Olsen <colsen at ulb.ac.be> |
BugReports: |
NA |
License: |
Artistic-2.0 |
URL: |
NA |
NeedsCompilation: |
no |
CRAN checks: |
D2C results |