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Main Authors: Chaves, Davi Oliveira, Chiann, Chang, Morettin, Pedro Alberto
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.15667
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author Chaves, Davi Oliveira
Chiann, Chang
Morettin, Pedro Alberto
author_facet Chaves, Davi Oliveira
Chiann, Chang
Morettin, Pedro Alberto
contents In many scientific fields, such as agriculture, temperature time series are of interest both as explanatory variables and as objects of study in their own right. However, at the state level, incorporating information from all possible locations in an analysis can be overwhelming, while using a summary measure, such as the state-wide average temperature, can result in significant information loss. In this context, using Dynamic Factor Models (DFMs) provides a compelling alternative for analyzing such multivariate time series, as they allow for the extraction of a small number of common factors that capture the majority of the variability in the data. Given that temperature series are typically seasonal, this study applies a nonstationary seasonal DFM to analyze a multivariate temperature time series from the state of Minas Gerais. The results show that the data can be effectively represented by two seasonal factors: the first captures the general seasonal pattern of the state, while the second contrasts the months of highest annual temperatures between two distinct regions.
format Preprint
id arxiv_https___arxiv_org_abs_2510_15667
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A nonstationary seasonal Dynamic Factor Model: an application to temperature time series from the state of Minas Gerais
Chaves, Davi Oliveira
Chiann, Chang
Morettin, Pedro Alberto
Applications
In many scientific fields, such as agriculture, temperature time series are of interest both as explanatory variables and as objects of study in their own right. However, at the state level, incorporating information from all possible locations in an analysis can be overwhelming, while using a summary measure, such as the state-wide average temperature, can result in significant information loss. In this context, using Dynamic Factor Models (DFMs) provides a compelling alternative for analyzing such multivariate time series, as they allow for the extraction of a small number of common factors that capture the majority of the variability in the data. Given that temperature series are typically seasonal, this study applies a nonstationary seasonal DFM to analyze a multivariate temperature time series from the state of Minas Gerais. The results show that the data can be effectively represented by two seasonal factors: the first captures the general seasonal pattern of the state, while the second contrasts the months of highest annual temperatures between two distinct regions.
title A nonstationary seasonal Dynamic Factor Model: an application to temperature time series from the state of Minas Gerais
topic Applications
url https://arxiv.org/abs/2510.15667