Identifiability Analysis of Linear ODE Systems with Hidden Confounders
–Neural Information Processing Systems
The identifiability analysis of linear Ordinary Differential Equation (ODE) systems is a necessary prerequisite for making reliable causal inferences about these systems. While identifiability has been well studied in scenarios where the system is fully observable, the conditions for identifiability remain unexplored when latent variables interact with the system. This paper aims to address this gap by presenting a systematic analysis of identifiability in linear ODE systems incorporating hidden confounders. Specifically, we investigate two cases of such systems.
Neural Information Processing Systems
Mar-22-2025, 01:26:27 GMT
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