A Bayesian framework for change-point detection with uncertainty quantification
Davis Berlind, Lorenzo Cappello, Oscar Hernan Madrid Padilla

TL;DR
This paper presents a Bayesian approach for detecting multiple change-points in time-series data, providing uncertainty quantification and achieving near-optimal localization rates, applicable to various data types and dimensions.
Contribution
It introduces a modular Bayesian framework that detects multiple change-points with credible sets, achieving near-minimax optimal localization rates and extending to high-dimensional mean change detection.
Findings
Method attains near-minimax optimal localization rates.
Credible sets are significantly smaller than competitors.
Demonstrated effectiveness on real-world data.
Abstract
We introduce a novel Bayesian method that can detect multiple structural breaks in the mean and variance of a length time-series. Our method quantifies uncertainty by returning -level credible sets around the estimated locations of the breaks. In the case of a single change in the mean and/or the variance of an independent sub-Gaussian sequence, we prove that our method attains a localization rate that is minimax optimal up to a factor. For an -mixing sequence with dependence, we prove this optimality holds up to factor. For -dimensional mean changes, we show that if and the mean signal is dense, then our method exactly recovers the location of the change. Our method detects multiple change-points by modularly ``stacking'' single change-point models and searching for a variational approximation to the posterior distribution. This…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Time Series Analysis and Forecasting · Target Tracking and Data Fusion in Sensor Networks
