4.1 High-dimensional interventions and causality : some results and many unsolved problems

2 janvier 2017
Durée : 01:00:37
Nombre de vues 2

Understanding cause-effect relationships between variables is of interest in many fields of science. To effectively address such questions, we need to look beyond the framework of variable selection or importance from models describing associations only. We will show how graphical modeling and intervention calculus can be used for quantifying intervention and causal effects, particularly for high-dimensional, sparse settings where the number of variables can greatly exceed sample size.

Mots clés :

Infos

DJDT

Historique

Versions

Temps

Paramètres de 'pod.settings'

En-têtes

Requête

requêtes SQL venant de 1 connexion

Fichiers statiques (0 trouvé(s), 40 utilisé(s))

Gabarits (23 affichés)

Alerts

Appels au cache depuis 2 moteurs

Signaux

Community