MLLGMEMay 3

Stable Blanket with Hidden Variables and Cycles

arXiv:2605.018560.81 citations
Predicted impact top 99% in ML · last 90 daysOriginality Incremental advance
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For researchers in causal inference and robust prediction, this work generalizes stabilized regression to more realistic settings with latent confounders and feedback loops, though it remains theoretical without empirical validation.

This paper extends the graphical characterization of stable blankets to structural causal models with hidden variables and causal cycles, providing conditions for conditional independence of the response from interventions and describing minimal or unique stable predictor sets.

Stabilized regression aims to identify a set of predictors whose conditional relationship with a response variable remains invariant across different environments. Existing graphical characterizations of the stable blanket are mainly developed for structural causal models (SCMs) without hidden variables or causal cycles. However, latent variables and feedback relationships naturally arise in many applications, and they can change both the Markov blanket and the set of predictors that remain stable under interventions. This paper studies stable blankets in graphical causal models with hidden variables, causal cycles, and both features simultaneously. For models with hidden variables, we use acyclic directed mixed graphs (ADMGs) and $m$-separation to characterize the Markov blanket and to construct intervention-stable predictor sets. We introduce the notion of an intervened sub-district and use it to describe how interventions may affect districts connected to the response. For models with cycles, we work with directed graphs (DGs) and directed mixed graphs (DMGs) together with $σ$-separation, treating strongly connected components (SCCs) as the basic graphical units. We then combine these ideas to analyze models with both hidden variables and cycles. The main results give graphical characterizations of Markov blankets, stable frontiers, and stable blankets in these generalized settings. In particular, we identify conditions under which the response is conditionally independent of intervention variables given a suitable predictor set, and we describe when such sets are minimal or unique. These results extend the graphical interpretation of stabilized regression beyond acyclic fully observed models.

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