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From Observations to Parameters: Detecting Changepoint in Nonlinear Dynamics with Simulation-based Inference

Machine Learning 2025-12-09 v2 Artificial Intelligence

Abstract

Detecting regime shifts in chaotic time series is hard because observation-space signals are entangled with intrinsic variability. We propose Parameter--Space Changepoint Detection (Param--CPD), a two--stage framework that first amortizes Bayesian inference of governing parameters with a neural posterior estimator trained by simulation-based inference, and then applies a standard CPD algorithm to the resulting parameter trajectory. On Lorenz--63 with piecewise-constant parameters, Param--CPD improves F1, reduces localization error, and lowers false positives compared to observation--space baselines. We further verify identifiability and calibration of the inferred posteriors on stationary trajectories, explaining why parameter space offers a cleaner detection signal. Robustness analyses over tolerance, window length, and noise indicate consistent gains. Our results show that operating in a physically interpretable parameter space enables accurate and interpretable changepoint detection in nonlinear dynamical systems.

Keywords

Cite

@article{arxiv.2510.17933,
  title  = {From Observations to Parameters: Detecting Changepoint in Nonlinear Dynamics with Simulation-based Inference},
  author = {Xiangbo Deng and Cheng Chen and Peng Yang},
  journal= {arXiv preprint arXiv:2510.17933},
  year   = {2025}
}

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15 pages