Identifiable Causal Representation Learning: Unsupervised, Multi-View, and Multi-Environment
Julius von K\"ugelgen

TL;DR
This paper explores the theoretical foundations of causal representation learning, focusing on identifiability in unsupervised, multi-view, and multi-environment settings to enable AI systems to learn causal models from complex data.
Contribution
It provides new theoretical results on the conditions under which causal representations can be identified without supervision, advancing the understanding of CRL's feasibility.
Findings
Partial characterization of identifiability conditions
Insights into data collection for causal learning
Theoretical foundations for unsupervised CRL
Abstract
Causal models provide rich descriptions of complex systems as sets of mechanisms by which each variable is influenced by its direct causes. They support reasoning about manipulating parts of the system and thus hold promise for addressing some of the open challenges of artificial intelligence (AI), such as planning, transferring knowledge in changing environments, or robustness to distribution shifts. However, a key obstacle to more widespread use of causal models in AI is the requirement that the relevant variables be specified a priori, which is typically not the case for the high-dimensional, unstructured data processed by modern AI systems. At the same time, machine learning (ML) has proven quite successful at automatically extracting useful and compact representations of such complex data. Causal representation learning (CRL) aims to combine the core strengths of ML and causality…
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