Toward Causal Representation Learning

Bernhard Schölkopf(Max Planck Institute for Intelligent Systems), Francesco Locatello(ETH Zurich), Stefan Bauer(Max Planck Institute for Intelligent Systems), Nan Rosemary Ke(Mila - Quebec Artificial Intelligence Institute), Nal Kalchbrenner, Anirudh Goyal(Mila - Quebec Artificial Intelligence Institute), Yoshua Bengio(Canadian Institute for Advanced Research)
Proceedings of the IEEE
February 26, 2021
Cited by 1,001Open Access
Full Text

Abstract

The two fields of machine learning and graphical causality arose and are developed separately. However, there is, now, cross-pollination and increasing interest in both fields to benefit from the advances of the other. In this article, we review fundamental concepts of causal inference and relate them to crucial open problems of machine learning, including transfer and generalization, thereby assaying how causality can contribute to modern machine learning research. This also applies in the opposite direction: we note that most work in causality starts from the premise that the causal variables are given. A central problem for AI and causality is, thus, causal representation learning, that is, the discovery of high-level causal variables from low-level observations. Finally, we delineate some implications of causality for machine learning and propose key research areas at the intersection of both communities.


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