MLLGAug 15, 2022

The Causal Structure of Domain Invariant Supervised Representation Learning

arXiv:2208.06987v44 citationsh-index: 24
Originality Incremental advance
AI Analysis

This work addresses the reliability of machine learning under domain shift, providing theoretical insights for researchers, but it is incremental as it builds on existing invariance proposals without new empirical benchmarks.

The paper tackles the problem of inconsistent performance in domain shift mitigation methods by introducing a formal notion of invariant structure and analyzing causal data structures, finding that causal structure is critical for determining when invariant representations lead to robust models.

Machine learning methods can be unreliable when deployed in domains that differ from the domains on which they were trained. There are a wide range of proposals for mitigating this problem by learning representations that are ``invariant'' in some sense.However, these methods generally contradict each other, and none of them consistently improve performance on real-world domain shift benchmarks. There are two main questions that must be addressed to understand when, if ever, we should use each method. First, how does each ad hoc notion of ``invariance'' relate to the structure of real-world problems? And, second, when does learning invariant representations actually yield robust models? To address these issues, we introduce a broad formal notion of what it means for a real-world domain shift to admit invariant structure. Then, we characterize the causal structures that are compatible with this notion of invariance.With this in hand, we find conditions under which method-specific invariance notions correspond to real-world invariant structure, and we clarify the relationship between invariant structure and robustness to domain shifts. For both questions, we find that the true underlying causal structure of the data plays a critical role.

Foundations

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