LGAIJul 4, 2022

Invariant and Transportable Representations for Anti-Causal Domain Shifts

arXiv:2207.01603v148 citationsh-index: 24Has Code
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AI Analysis

This addresses domain adaptation challenges in machine learning for real-world applications, offering a novel approach for anti-causal scenarios, though it is incremental in building on causal invariance principles.

The paper tackles the problem of domain shift in classification, particularly for anti-causal structures where the label causes covariates, by proposing a representation learning method that leverages shared causal structure to learn invariant and transportable features, with experiments on synthetic and real-world data showing effectiveness.

Real-world classification problems must contend with domain shift, the (potential) mismatch between the domain where a model is deployed and the domain(s) where the training data was gathered. Methods to handle such problems must specify what structure is common between the domains and what varies. A natural assumption is that causal (structural) relationships are invariant in all domains. Then, it is tempting to learn a predictor for label $Y$ that depends only on its causal parents. However, many real-world problems are "anti-causal" in the sense that $Y$ is a cause of the covariates $X$ -- in this case, $Y$ has no causal parents and the naive causal invariance is useless. In this paper, we study representation learning under a particular notion of domain shift that both respects causal invariance and that naturally handles the "anti-causal" structure. We show how to leverage the shared causal structure of the domains to learn a representation that both admits an invariant predictor and that also allows fast adaptation in new domains. The key is to translate causal assumptions into learning principles that disentangle "invariant" and "non-stable" features. Experiments on both synthetic and real-world data demonstrate the effectiveness of the proposed learning algorithm. Code is available at https://github.com/ybjiaang/ACTIR.

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