Spatial functional outlier detection in multivariate spatial functional data

Multivariate spatial functional data consists of multiple functions of time-dependent attributes observed at each spatial point. This study focuses on detecting spatial outliers in spatial functional data. Firstly, we develop a new method called Mahalanobis Distance Spatial Outlier (MDSO) to detect...

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Main Authors: Nur Fatihah Mohd Ali, Rossita Mohamad Yunus, Ibrahim Mohamed, Faridah Othman
Format: Article
Language:English
Published: Penerbit Universiti Kebangsaan Malaysia 2024
Online Access:http://journalarticle.ukm.my/24132/1/SME%2018.pdf
http://journalarticle.ukm.my/24132/
https://www.ukm.my/jsm/english_journals/vol53num6_2024/contentsVol53num6_2024.html
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Institution: Universiti Kebangsaan Malaysia
Language: English
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spelling my-ukm.journal.241322024-09-11T03:44:55Z http://journalarticle.ukm.my/24132/ Spatial functional outlier detection in multivariate spatial functional data Nur Fatihah Mohd Ali, Rossita Mohamad Yunus, Ibrahim Mohamed, Faridah Othman, Multivariate spatial functional data consists of multiple functions of time-dependent attributes observed at each spatial point. This study focuses on detecting spatial outliers in spatial functional data. Firstly, we develop a new method called Mahalanobis Distance Spatial Outlier (MDSO) to detect functional outliers in the data. The method introduces the multivariate functional Mahalanobis semi-distance and multivariate pairwise functional Mahalanobis semi-distance metrics based on the multivariate functional principal components analysis to calculate the dissimilarity between functions at each spatial point. Via simulation, we show that MDSO performs better than the other competing methods. Secondly, MDSO has been extended to detect spatial functional outliers as well. The functional outliers can now be categorized as global or/and local functional outliers. The appropriate number of neighbors and the cut-off point for the degree of isolation are determined via simulation. Finally, we demonstrate the application of the MDSO on a water quality data set obtained from Sungai Klang basin in Malaysia. The results can be used to support the authority in making better decisions on the management of the river basin or other spatial data with time-independent attributes. Penerbit Universiti Kebangsaan Malaysia 2024 Article PeerReviewed application/pdf en http://journalarticle.ukm.my/24132/1/SME%2018.pdf Nur Fatihah Mohd Ali, and Rossita Mohamad Yunus, and Ibrahim Mohamed, and Faridah Othman, (2024) Spatial functional outlier detection in multivariate spatial functional data. Sains Malaysiana, 53 (6). pp. 1463-1476. ISSN 0126-6039 https://www.ukm.my/jsm/english_journals/vol53num6_2024/contentsVol53num6_2024.html
institution Universiti Kebangsaan Malaysia
building Tun Sri Lanang Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Kebangsaan Malaysia
content_source UKM Journal Article Repository
url_provider http://journalarticle.ukm.my/
language English
description Multivariate spatial functional data consists of multiple functions of time-dependent attributes observed at each spatial point. This study focuses on detecting spatial outliers in spatial functional data. Firstly, we develop a new method called Mahalanobis Distance Spatial Outlier (MDSO) to detect functional outliers in the data. The method introduces the multivariate functional Mahalanobis semi-distance and multivariate pairwise functional Mahalanobis semi-distance metrics based on the multivariate functional principal components analysis to calculate the dissimilarity between functions at each spatial point. Via simulation, we show that MDSO performs better than the other competing methods. Secondly, MDSO has been extended to detect spatial functional outliers as well. The functional outliers can now be categorized as global or/and local functional outliers. The appropriate number of neighbors and the cut-off point for the degree of isolation are determined via simulation. Finally, we demonstrate the application of the MDSO on a water quality data set obtained from Sungai Klang basin in Malaysia. The results can be used to support the authority in making better decisions on the management of the river basin or other spatial data with time-independent attributes.
format Article
author Nur Fatihah Mohd Ali,
Rossita Mohamad Yunus,
Ibrahim Mohamed,
Faridah Othman,
spellingShingle Nur Fatihah Mohd Ali,
Rossita Mohamad Yunus,
Ibrahim Mohamed,
Faridah Othman,
Spatial functional outlier detection in multivariate spatial functional data
author_facet Nur Fatihah Mohd Ali,
Rossita Mohamad Yunus,
Ibrahim Mohamed,
Faridah Othman,
author_sort Nur Fatihah Mohd Ali,
title Spatial functional outlier detection in multivariate spatial functional data
title_short Spatial functional outlier detection in multivariate spatial functional data
title_full Spatial functional outlier detection in multivariate spatial functional data
title_fullStr Spatial functional outlier detection in multivariate spatial functional data
title_full_unstemmed Spatial functional outlier detection in multivariate spatial functional data
title_sort spatial functional outlier detection in multivariate spatial functional data
publisher Penerbit Universiti Kebangsaan Malaysia
publishDate 2024
url http://journalarticle.ukm.my/24132/1/SME%2018.pdf
http://journalarticle.ukm.my/24132/
https://www.ukm.my/jsm/english_journals/vol53num6_2024/contentsVol53num6_2024.html
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