Leveraging Task Structures for Improved Identifiability in Neural Network Representations

ICML 2023 Workshop SCIS Submission24 Authors

Published: 20 Jun 2023, Last Modified: 28 Jul 2023SCIS 2023 PosterEveryoneRevisions
Keywords: multi-task learning, meta-learning, identifiability, causality, representation learning, spurious correlations
TL;DR: An extension of the identifiability results in the multi-task setting in the presence of causal structures.
Abstract: This work extends the theory of identifiability in supervised learning by considering the consequences of having access to a distribution of tasks. In such cases, we show that identifiability is achievable even in the case of regression, extending prior work restricted to the single-task classification case. Furthermore, we show that the existence of a task distribution which defines a conditional prior over latent variables reduces the equivalence class for identifiability to permutations and scaling, a much stronger and more useful result. When we further assume a causal structure over these tasks, our approach enables simple maximum marginal likelihood optimization together with downstream applicability to causal representation learning. Empirically, we validate that our model outperforms more general unsupervised models in recovering canonical representations for synthetic and real-world data.
Submission Number: 24
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