Identifying General Mechanism Shifts in Linear Causal Representations
Tianyu Chen, Kevin Bello, Francesco Locatello, Bryon Aragam, Pradeep, Ravikumar

TL;DR
This paper demonstrates that it is possible to identify which latent causal factors have shifted across environments even with fewer than the number of factors and under coarse interventions, by providing a constructive identifiability method.
Contribution
It introduces a novel approach to detect shifted causal nodes with fewer environments and coarse interventions, relaxing previous perfect intervention assumptions.
Findings
Identifiability of shifted nodes under relaxed conditions.
Constructive algorithm for detecting shifted nodes.
Validated on synthetic and psychometric datasets.
Abstract
We consider the linear causal representation learning setting where we observe a linear mixing of unknown latent factors, which follow a linear structural causal model. Recent work has shown that it is possible to recover the latent factors as well as the underlying structural causal model over them, up to permutation and scaling, provided that we have at least environments, each of which corresponds to perfect interventions on a single latent node (factor). After this powerful result, a key open problem faced by the community has been to relax these conditions: allow for coarser than perfect single-node interventions, and allow for fewer than of them, since the number of latent factors could be very large. In this work, we consider precisely such a setting, where we allow a smaller than number of environments, and also allow for very coarse interventions that can…
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Taxonomy
TopicsPhilosophy and History of Science · Bayesian Modeling and Causal Inference
MethodsFLIP · Sparse Evolutionary Training
