Multi-feature clustering of step data using multivariate functional principal component analysis
  • Song, Wookyeong
  • Oh, Hee-Seok
  • Cheung, Ying Kuen
  • Lim, Yaeji
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초록

This study presents a new statistical method for clustering step data, a popular form of health recording data easily obtained from wearable devices. As step data are high-dimensional and zero-inflated, classical methods such as K-means and partitioning around medoid (PAM) cannot be applied directly. The proposed method is a novel combination of newly constructed variables that reflect the inherent features of step data, such as quantity, strength, and pattern, and a multivariate functional principal component analysis that can integrate all the features of the step data for clustering. The proposed method is implemented by applying a conventional clustering method, such as K-means and PAM, to the multivariate functional principal component scores obtained from these variables. Simulation studies and real data analysis demonstrate significant improvement in clustering quality. © 2023, The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.

키워드

Functional dataK-meansMultivariate functional principal component analysisPAMStep dataDENSITY-FUNCTIONSMODELCLASSIFICATION
제목
Multi-feature clustering of step data using multivariate functional principal component analysis
저자
Song, WookyeongOh, Hee-SeokCheung, Ying KuenLim, Yaeji
DOI
10.1007/s00362-023-01467-4
발행일
2024-06
유형
Article
저널명
Statistical Papers
65
4
페이지
2109 ~ 2134