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Title:

Structure Learning for Cyclic Linear Causal Models

Document type:
Zeitungsartikel
Author(s):
Amendola, C., Dettling, P., Drton, M., Onori,F.; Wu, J.
Abstract:
We consider the problem of structure learning for linear causal models based on observational data. We treat models given by possibly cyclic mixed graphs, which allow for feed-back loops and effects of latent confounders. Generalizing related work on bow-free acyclic graphs, we assume that the underlying graph is simple. This entails that any two observed variables can be related through at most one direct causal effect and that (confounding-induced) correlation between error terms in structural...     »
Dewey Decimal Classification:
510 Mathematik
Congress title:
36th Conference on Uncertainty in Artificial Intelligence (UAI)
Journal title:
Proceedings of Machine Learning Research (PMLR)
Year:
2020
Journal volume:
124
Year / month:
2020-08
Quarter:
3. Quartal
Month:
Aug
Pages contribution:
999-1008
Language:
en
WWW:
Structure Learning for Cyclic Linear Causal Models
Print-ISSN:
2640-3498
Date of publication:
03.08.2020
TUM Institution:
Lehrstuhl für Mathematische Statistik
Format:
Text
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