OAK

Efficient curve fitting with penalized B-splines for oceanographic and ecological applications

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Abstract
This study introduces a penalized B-spline approach for estimating smooth curves, incorporating a total variation penalty to balance flexibility and interpretability. By leveraging group penalties and the Alternating Direction Method of Multipliers (ADMM) algorithm, the method ensures consistency across response variables and computational efficiency. We applied this approach to two real-world datasets: oceanographic drifter data in the Nino 4 region and Demoiselle Crane migration data. The fitted trajectories closely captured both large-scale trends and localized variations, demonstrating robustness against noise and irregularly sampled data. This framework is particularly advantageous for analyzing spatiotemporal data, as it effectively removes unnecessary knots and adapts to the complexity of underlying patterns. The total variation penalty controls curve smoothness by penalizing abrupt changes in the estimated function, while the group penalty ensures that all response variables share a consistent set of knots, enhancing interpretability. Although this study focused on two-dimensional spatial trajectories, the methodology is designed for general p-dimensional data and can be extended to three-dimensional datasets, such as avian flight paths or marine animal diving behaviors. Future research could refine the
Author(s)
박관영Dong-Young LeeJu-Seong LeeHee-Jung JeeR. Jisung ParkJa-Yong KooJae-Hwan Jhong
Issued Date
2025-07-01
Type
Article
Keyword
통계학
DOI
10.1038/s41598-025-05779-3
URI
http://repository.sungshin.ac.kr/handle/2025.oak/8849
Publisher
NATURE PORTFOLIO
ISSN
2045-2322
Appears in Collections:
수리통계데이터사이언스학부 > 학술논문
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