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Main Authors: Zhang, Zerui, Wang, Xin, Zhang, Xin, Zhang, Jing
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.06613
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author Zhang, Zerui
Wang, Xin
Zhang, Xin
Zhang, Jing
author_facet Zhang, Zerui
Wang, Xin
Zhang, Xin
Zhang, Jing
contents In the realm of large-scale spatiotemporal data, abrupt changes are commonly occurring across both spatial and temporal domains. This study aims to address the concurrent challenges of detecting change points and identifying spatial clusters within spatiotemporal count data. We introduce an innovative method based on the Poisson regression model, employing doubly fused penalization to unveil the underlying spatiotemporal change patterns. To efficiently estimate the model, we present an iterative shrinkage and threshold based algorithm to minimize the doubly penalized likelihood function. We establish the statistical consistency properties of the proposed estimator, confirming its reliability and accuracy. Furthermore, we conduct extensive numerical experiments to validate our theoretical findings, thereby highlighting the superior performance of our method when compared to existing competitive approaches.
format Preprint
id arxiv_https___arxiv_org_abs_2405_06613
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Simultaneously detecting spatiotemporal changes with penalized Poisson regression models
Zhang, Zerui
Wang, Xin
Zhang, Xin
Zhang, Jing
Methodology
In the realm of large-scale spatiotemporal data, abrupt changes are commonly occurring across both spatial and temporal domains. This study aims to address the concurrent challenges of detecting change points and identifying spatial clusters within spatiotemporal count data. We introduce an innovative method based on the Poisson regression model, employing doubly fused penalization to unveil the underlying spatiotemporal change patterns. To efficiently estimate the model, we present an iterative shrinkage and threshold based algorithm to minimize the doubly penalized likelihood function. We establish the statistical consistency properties of the proposed estimator, confirming its reliability and accuracy. Furthermore, we conduct extensive numerical experiments to validate our theoretical findings, thereby highlighting the superior performance of our method when compared to existing competitive approaches.
title Simultaneously detecting spatiotemporal changes with penalized Poisson regression models
topic Methodology
url https://arxiv.org/abs/2405.06613