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Functional clustering on a sphere via Riemannian functional principal components

Authors
Kim, HyunsungLim, Yae Ji
Issue Date
Jan-2023
Publisher
WILEY
Keywords
functional clustering; <mml; math altimg="urn; x-wiley; sta4; media; sta4557; sta4557-math-0001" display="inline"><mml; mi>k</mml; mi></mml; math>-centres functional clustering; Riemannian functional principal component analysis; sphere-valued functional data
Citation
STAT, v.12, no.1
Journal Title
STAT
Volume
12
Number
1
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/67852
DOI
10.1002/sta4.557
ISSN
2049-1573
Abstract
We propose the functional clustering algorithm applicable to the sphere-valued random curves, called k-centres Riemannian functional clustering (kCRFC). It is based on Riemannian functional principal component scores and k-centres functional clustering algorithm; thus, we can obtain accurate clustering results by reflecting the geometry of the sphere. Our method shows better clustering performances than existing multivariate functional clustering methods in various simulation settings. We apply the proposed method to the migration trajectories of Egyptian Vultures in the Middle East and East Africa and fruit fly behaviours, containing the curves lied on two-dimensional and three-dimensional sphere, respectively.
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대학원 (통계데이터사이언스학과)
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