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Auteurs principaux: Balsells-Rodas, Carles, Matsui, Toshiko, Mediano, Pedro A. M., Wang, Yixin, Li, Yingzhen
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2601.03325
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author Balsells-Rodas, Carles
Matsui, Toshiko
Mediano, Pedro A. M.
Wang, Yixin
Li, Yingzhen
author_facet Balsells-Rodas, Carles
Matsui, Toshiko
Mediano, Pedro A. M.
Wang, Yixin
Li, Yingzhen
contents Identifiability is central to the interpretability of deep latent variable models, ensuring parameterisations are uniquely determined by the data-generating distribution. However, it remains underexplored for deep regime-switching time series. We develop a general theoretical framework for multi-lag Regime-Switching Models (RSMs), encompassing Markov Switching Models (MSMs) and Switching Dynamical Systems (SDSs). For MSMs, we formulate the model as a temporally structured finite mixture and prove identifiability of both the number of regimes and the multi-lag transitions in a nonlinear-Gaussian setting. For SDSs, we establish identifiability of the latent variables up to permutation and scaling via temporal structure, which in turn yields conditions for identifiability of regime-dependent latent causal graphs (up to regime/node permutations). Our results hold in a fully unsupervised setting through architectural and noise assumptions that are directly enforceable via neural network design. We complement the theory with a flexible variational estimator that satisfies the assumptions and validate the results on synthetic benchmarks. Across real-world datasets from neuroscience, finance, and climate, identifiability leads to more trustworthy interpretability analysis, which is crucial for scientific discovery.
format Preprint
id arxiv_https___arxiv_org_abs_2601_03325
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle On the Identifiability of Regime-Switching Models with Multi-Lag Dependencies
Balsells-Rodas, Carles
Matsui, Toshiko
Mediano, Pedro A. M.
Wang, Yixin
Li, Yingzhen
Machine Learning
Identifiability is central to the interpretability of deep latent variable models, ensuring parameterisations are uniquely determined by the data-generating distribution. However, it remains underexplored for deep regime-switching time series. We develop a general theoretical framework for multi-lag Regime-Switching Models (RSMs), encompassing Markov Switching Models (MSMs) and Switching Dynamical Systems (SDSs). For MSMs, we formulate the model as a temporally structured finite mixture and prove identifiability of both the number of regimes and the multi-lag transitions in a nonlinear-Gaussian setting. For SDSs, we establish identifiability of the latent variables up to permutation and scaling via temporal structure, which in turn yields conditions for identifiability of regime-dependent latent causal graphs (up to regime/node permutations). Our results hold in a fully unsupervised setting through architectural and noise assumptions that are directly enforceable via neural network design. We complement the theory with a flexible variational estimator that satisfies the assumptions and validate the results on synthetic benchmarks. Across real-world datasets from neuroscience, finance, and climate, identifiability leads to more trustworthy interpretability analysis, which is crucial for scientific discovery.
title On the Identifiability of Regime-Switching Models with Multi-Lag Dependencies
topic Machine Learning
url https://arxiv.org/abs/2601.03325