Iterative Identification Closure: Amplifying Causal Identifiability in Linear SEMs
TLDR
IIC amplifies causal identifiability in linear SEMs by iteratively propagating identified coefficients, drastically reducing the 'inconclusive' gap of prior methods.
Key contributions
- Introduces Iterative Identification Closure (IIC), a general framework for causal identification in linear SEMs.
- Employs iterative propagation, where newly identified edges feed back to unlock further identification.
- Strictly subsumes existing graphical criteria like Half-Trek Criterion (HTC) and ancestor decomposition.
- Reduces HTC's 'inconclusive' gap by over 80% and achieves a ~4x identification gain.
Why it matters
This paper introduces a novel approach to a fundamental problem in causal inference: identifying causal effects in SEMs with latent confounders. IIC significantly improves upon existing methods by iteratively propagating identified coefficients, drastically reducing unresolved effects. This makes causal models more robust and applicable.
Original Abstract
The Half-Trek Criterion (HTC) is the primary graphical tool for determining generic identifiability of causal effect coefficients in linear structural equation models (SEMs) with latent confounders. However, HTC is inherently node-wise: it simultaneously resolves all incoming edges of a node, leaving a gap of "inconclusive" causal effects (15-23% in moderate graphs). We introduce Iterative Identification Closure (IIC), a general framework that decouples causal identification into two phases: (1) a seed function S_0 that identifies an initial set of edges from any external source of information (instrumental variables, interventions, non-Gaussianity, prior knowledge, etc.); and (2) Reduced HTC propagation that iteratively substitutes known coefficients to reduce system dimension, enabling identification of edges that standard HTC cannot resolve. The core novelty is iterative identification propagation: newly identified edges feed back to unlock further identification -- a mechanism absent from all existing graphical criteria, which treat each edge (or node) in isolation. This propagation is non-trivial: coefficient substitution alters the covariance structure, and soundness requires proving that the modified Jacobian retains generic full rank -- a new theoretical result (Reduced HTC Theorem). We prove that IIC is sound, monotone, converges in O(|E|) iterations (empirically <=2), and strictly subsumes both HTC and ancestor decomposition. Exhaustive verification on all graphs with n<=5 (134,144 edges) confirms 100% precision (zero false positives); with combined seeds, IIC reduces the HTC gap by over 80%. The propagation gain is gamma~4x (2 seeds identifying ~3% of edges to 97.5% total identification), far exceeding gamma<=1.2x of prior methods that incorporate side information without iterative feedback.
📬 Weekly AI Paper Digest
Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.