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Multi-View Causal Representation Learning with Partial Observability

Authors :
Yao, Dingling
Xu, Danru
Lachapelle, Sébastien
Magliacane, Sara
Taslakian, Perouz
Martius, Georg
von Kügelgen, Julius
Locatello, Francesco
Publication Year :
2023

Abstract

We present a unified framework for studying the identifiability of representations learned from simultaneously observed views, such as different data modalities. We allow a partially observed setting in which each view constitutes a nonlinear mixture of a subset of underlying latent variables, which can be causally related. We prove that the information shared across all subsets of any number of views can be learned up to a smooth bijection using contrastive learning and a single encoder per view. We also provide graphical criteria indicating which latent variables can be identified through a simple set of rules, which we refer to as identifiability algebra. Our general framework and theoretical results unify and extend several previous works on multi-view nonlinear ICA, disentanglement, and causal representation learning. We experimentally validate our claims on numerical, image, and multi-modal data sets. Further, we demonstrate that the performance of prior methods is recovered in different special cases of our setup. Overall, we find that access to multiple partial views enables us to identify a more fine-grained representation, under the generally milder assumption of partial observability.<br />Comment: 28 pages, 10 figures, 11 tables

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2311.04056
Document Type :
Working Paper