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Bibliographic Details
Main Authors: Cho, Jason B., Matteson, David S.
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.18052
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author Cho, Jason B.
Matteson, David S.
author_facet Cho, Jason B.
Matteson, David S.
contents We introduce BASTION (Bayesian Adaptive Seasonality and Trend DecompositION), a flexible Bayesian framework for decomposing time series into trend and multiple seasonality components. We cast the decomposition as a penalized nonparametric regression and establish formal conditions under which the trend and seasonal components are uniquely identifiable, an issue only treated informally in the existing literature. BASTION offers three key advantages over existing decomposition methods: (1) accurate estimation of trend and seasonality amidst abrupt changes, (2) enhanced robustness against outliers and time-varying volatility, and (3) robust uncertainty quantification. We evaluate BASTION against established methods, including TBATS, STR, and MSTL, using both simulated and real-world datasets. By effectively capturing complex dynamics while accounting for irregular components such as outliers and heteroskedasticity, BASTION delivers a more nuanced and interpretable decomposition. To support further research and practical applications, BASTION is available as an R package at https://github.com/Jasoncho0914/BASTION
format Preprint
id arxiv_https___arxiv_org_abs_2601_18052
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle BASTION: A Bayesian Framework for Trend and Seasonality Decomposition
Cho, Jason B.
Matteson, David S.
Methodology
General Economics
Economics
We introduce BASTION (Bayesian Adaptive Seasonality and Trend DecompositION), a flexible Bayesian framework for decomposing time series into trend and multiple seasonality components. We cast the decomposition as a penalized nonparametric regression and establish formal conditions under which the trend and seasonal components are uniquely identifiable, an issue only treated informally in the existing literature. BASTION offers three key advantages over existing decomposition methods: (1) accurate estimation of trend and seasonality amidst abrupt changes, (2) enhanced robustness against outliers and time-varying volatility, and (3) robust uncertainty quantification. We evaluate BASTION against established methods, including TBATS, STR, and MSTL, using both simulated and real-world datasets. By effectively capturing complex dynamics while accounting for irregular components such as outliers and heteroskedasticity, BASTION delivers a more nuanced and interpretable decomposition. To support further research and practical applications, BASTION is available as an R package at https://github.com/Jasoncho0914/BASTION
title BASTION: A Bayesian Framework for Trend and Seasonality Decomposition
topic Methodology
General Economics
Economics
url https://arxiv.org/abs/2601.18052