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Leisure Time-Use Sequence Analysis×Accelerometer Cut-Point Calibration×
AlanSport Leisure StudiesSport Leisure Studies
AileProcess / pipelineRegression model
Köken yılı20001998
KökenAndrew Abbott & Angela Tsay (optimal matching in sociology); applied to time-use leisure sequencesPatty S. Freedson, Edward Melanson & John Sirard; Kelly R. Evenson et al.
TürOrder-aware pipeline for clustering daily leisure activity sequencesCalibration regression / ROC model mapping accelerometer counts to activity intensity
Seminal kaynakAbbott, A., & Tsay, A. (2000). Sequence Analysis and Optimal Matching Methods in Sociology: Review and Prospect. Sociological Methods & Research, 29(1), 3-33. DOI ↗Freedson, P. S., Melanson, E., & Sirard, J. (1998). Calibration of the Computer Science and Applications, Inc. accelerometer. Medicine and Science in Sports and Exercise, 30(5), 777-781. DOI ↗
Diğer adlarLeisure Day Sequence Analysis, Optimal Matching of Leisure Episodes, Activity Sequence Analysis, Time-Use Optimal MatchingActivity Count Calibration, Intensity Threshold Derivation, Accelerometer MET Calibration, Cut-Point Derivation
İlişkili33
ÖzetLeisure time-use sequence analysis treats a person's day not as a bundle of activity totals but as an ordered sequence of states, and asks which whole-day patterns of leisure recur across a population. It imports optimal matching -- the alignment technique Andrew Abbott and Angela Tsay reviewed for sociology -- into the study of time-use diaries: each day becomes a string of categorical states (sport, active leisure, passive leisure, work, sleep, and so on) sampled at regular intervals, and the dissimilarity between any two days is the minimum cost of editing one sequence into the other. Clustering the resulting dissimilarity matrix yields a typology of leisure days -- the active morning, the evening screen-leisure pattern, the fragmented weekend -- that preserves the timing and ordering of activity that simple duration tallies discard.Accelerometer cut-point calibration solves the central translation problem of objective physical-activity measurement: a wearable accelerometer outputs dimensionless 'counts,' but researchers and health guidelines speak in intensities — sedentary, light, moderate, vigorous. Calibration establishes the count thresholds that map the device's output onto those intensity categories. Patty Freedson, Edward Melanson, and John Sirard's 1998 study of the CSA (later ActiGraph) accelerometer set the template, regressing measured energy expenditure in METs on accelerometer counts during treadmill walking and running and solving the regression for the counts corresponding to moderate (3 METs) and vigorous (6 METs) activity. Later work, exemplified by Evenson and colleagues' 2008 calibration for children, increasingly used receiver-operating-characteristic (ROC) analysis to find the cut-point that best discriminates intensity categories. The result in both cases is a small set of count thresholds that turn raw accelerometer data into minutes of activity at each intensity.
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ScholarGateYöntem Karşılaştırma: Leisure Time-Use Sequence Analysis · Accelerometer Cut-Point Calibration. 2026-06-24 tarihinde şu adresten erişildi: https://scholargate.app/tr/compare