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Ensemble clustering for step data via binning

Authors
Jang J.-Y.Oh H.-S.Lim, YaejiCheung Y.K.
Issue Date
Mar-2021
Publisher
Blackwell Publishing Inc.
Keywords
binning; clustering; ensemble clustering; functional data; K-means; step data; wearable device
Citation
Biometrics, v.77, no.1, pp 293 - 304
Pages
12
Journal Title
Biometrics
Volume
77
Number
1
Start Page
293
End Page
304
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/39944
DOI
10.1111/biom.13258
ISSN
0006-341X
1541-0420
Abstract
This paper considers the clustering problem of physical step count data recorded on wearable devices. Clustering step data give an insight into an individual's activity status and further provide the groundwork for health-related policies. However, classical methods, such as K-means clustering and hierarchical clustering, are not suitable for step count data that are typically high-dimensional and zero-inflated. This paper presents a new clustering method for step data based on a novel combination of ensemble clustering and binning. We first construct multiple sets of binned data by changing the size and starting position of the bin, and then merge the clustering results from the binned data using a voting method. The advantage of binning, as a critical component, is that it substantially reduces the dimension of the original data while preserving the essential characteristics of the data. As a result, combining clustering results from multiple binned data can provide an improved clustering result that reflects both local and global structures of the data. Simulation studies and real data analysis were carried out to evaluate the empirical performance of the proposed method and demonstrate its general utility. © 2020 The International Biometric Society
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Lim, Yae Ji
대학원 (통계데이터사이언스학과)
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