Iterative Identification Closure: Amplifying Causal Identifiability in Linear SEMs
Ziyi Ding, Xiao-Ping Zhang

TL;DR
The paper introduces Iterative Identification Closure (IIC), a novel framework that enhances causal effect identification in linear SEMs by iteratively propagating known coefficients, surpassing existing criteria like HTC.
Contribution
IIC decouples causal identification into seed-based initial detection and iterative propagation, enabling resolution of previously inconclusive causal effects in linear SEMs.
Findings
IIC is sound, monotone, and converges rapidly in practice.
It reduces the HTC gap by over 80% with combined seeds.
Empirical tests show 100% precision on small graphs.
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…
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