LGMEOct 21, 2025

Towards Identifiability of Hierarchical Temporal Causal Representation Learning

arXiv:2510.18310v15 citationsh-index: 20
Originality Incremental advance
AI Analysis

This addresses a limitation in temporal causal representation learning for capturing multi-level dependencies, though it appears incremental by building on existing identification methods.

The paper tackles the problem of modeling hierarchical latent dynamics in time series data by proposing a framework that uniquely identifies the joint distribution of hierarchical latent variables using three conditionally independent observations, achieving validation on synthetic and real-world datasets.

Modeling hierarchical latent dynamics behind time series data is critical for capturing temporal dependencies across multiple levels of abstraction in real-world tasks. However, existing temporal causal representation learning methods fail to capture such dynamics, as they fail to recover the joint distribution of hierarchical latent variables from \textit{single-timestep observed variables}. Interestingly, we find that the joint distribution of hierarchical latent variables can be uniquely determined using three conditionally independent observations. Building on this insight, we propose a Causally Hierarchical Latent Dynamic (CHiLD) identification framework. Our approach first employs temporal contextual observed variables to identify the joint distribution of multi-layer latent variables. Sequentially, we exploit the natural sparsity of the hierarchical structure among latent variables to identify latent variables within each layer. Guided by the theoretical results, we develop a time series generative model grounded in variational inference. This model incorporates a contextual encoder to reconstruct multi-layer latent variables and normalize flow-based hierarchical prior networks to impose the independent noise condition of hierarchical latent dynamics. Empirical evaluations on both synthetic and real-world datasets validate our theoretical claims and demonstrate the effectiveness of CHiLD in modeling hierarchical latent dynamics.

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