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Main Authors: Zhu, Junhao, Kong, Dehan, Zhang, Zhaolei, Lin, Zhenhua
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.17706
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author Zhu, Junhao
Kong, Dehan
Zhang, Zhaolei
Lin, Zhenhua
author_facet Zhu, Junhao
Kong, Dehan
Zhang, Zhaolei
Lin, Zhenhua
contents In modern interdisciplinary research, manifold time series data have been garnering more attention. A critical question in analyzing such data is ``stationarity'', which reflects the underlying dynamic behavior and is crucial across various fields like cell biology, neuroscience and empirical finance. Yet, there has been an absence of a formal definition of stationarity that is tailored to manifold time series. This work bridges this gap by proposing the first definitions of first-order and second-order stationarity for manifold time series. Additionally, we develop novel statistical procedures to test the stationarity of manifold time series and study their asymptotic properties. Our methods account for the curved nature of manifolds, leading to a more intricate analysis than that in Euclidean space. The effectiveness of our methods is evaluated through numerical simulations and their practical merits are demonstrated through analyzing a cell-type proportion time series dataset from a paper recently published in Cell. The first-order stationarity test result aligns with the biological findings of this paper, while the second-order stationarity test provides numerical support for a critical assumption made therein.
format Preprint
id arxiv_https___arxiv_org_abs_2409_17706
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Stationarity of Manifold Time Series
Zhu, Junhao
Kong, Dehan
Zhang, Zhaolei
Lin, Zhenhua
Methodology
In modern interdisciplinary research, manifold time series data have been garnering more attention. A critical question in analyzing such data is ``stationarity'', which reflects the underlying dynamic behavior and is crucial across various fields like cell biology, neuroscience and empirical finance. Yet, there has been an absence of a formal definition of stationarity that is tailored to manifold time series. This work bridges this gap by proposing the first definitions of first-order and second-order stationarity for manifold time series. Additionally, we develop novel statistical procedures to test the stationarity of manifold time series and study their asymptotic properties. Our methods account for the curved nature of manifolds, leading to a more intricate analysis than that in Euclidean space. The effectiveness of our methods is evaluated through numerical simulations and their practical merits are demonstrated through analyzing a cell-type proportion time series dataset from a paper recently published in Cell. The first-order stationarity test result aligns with the biological findings of this paper, while the second-order stationarity test provides numerical support for a critical assumption made therein.
title Stationarity of Manifold Time Series
topic Methodology
url https://arxiv.org/abs/2409.17706