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Main Authors: Shankar, Rajan, Wilms, Ines, Raymaekers, Jakob, Tarr, Garth
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.15155
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author Shankar, Rajan
Wilms, Ines
Raymaekers, Jakob
Tarr, Garth
author_facet Shankar, Rajan
Wilms, Ines
Raymaekers, Jakob
Tarr, Garth
contents State-space models (SSMs) provide a flexible framework for modelling time series data, but their reliance on Gaussian error assumptions makes them highly sensitive to outliers. We propose a robust estimation method, ROAMS, that mitigates the influence of additive outliers by introducing shift parameters at each timepoint in the observation equation of the SSM. These parameters allow the model to attribute non-zero shifts to outliers while leaving clean observations unaffected. ROAMS then enables automatic outlier detection, through the addition of a penalty term on the number of flagged outlying timepoints in the objective function, and simultaneous estimation of model parameters. We apply the method to robustly estimate SSMs on both simulated data and real-world animal location-tracking data, demonstrating its ability to produce more reliable parameter estimates than classical methods and other benchmark methods. In addition to improved robustness, ROAMS offers practical diagnostic tools, including BIC curves for selecting tuning parameters and visualising outlier structure. These features make our approach broadly useful for researchers and practitioners working with contaminated time series data.
format Preprint
id arxiv_https___arxiv_org_abs_2511_15155
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Robust outlier-adjusted mean-shift estimation of state-space models
Shankar, Rajan
Wilms, Ines
Raymaekers, Jakob
Tarr, Garth
Methodology
State-space models (SSMs) provide a flexible framework for modelling time series data, but their reliance on Gaussian error assumptions makes them highly sensitive to outliers. We propose a robust estimation method, ROAMS, that mitigates the influence of additive outliers by introducing shift parameters at each timepoint in the observation equation of the SSM. These parameters allow the model to attribute non-zero shifts to outliers while leaving clean observations unaffected. ROAMS then enables automatic outlier detection, through the addition of a penalty term on the number of flagged outlying timepoints in the objective function, and simultaneous estimation of model parameters. We apply the method to robustly estimate SSMs on both simulated data and real-world animal location-tracking data, demonstrating its ability to produce more reliable parameter estimates than classical methods and other benchmark methods. In addition to improved robustness, ROAMS offers practical diagnostic tools, including BIC curves for selecting tuning parameters and visualising outlier structure. These features make our approach broadly useful for researchers and practitioners working with contaminated time series data.
title Robust outlier-adjusted mean-shift estimation of state-space models
topic Methodology
url https://arxiv.org/abs/2511.15155