We present a case study illustrating the challenges of analyzing accelerometer data taken from a sample of children participating in an intervention study designed to increase physical activity. An accelerometer is a small device worn on the hip that records the minute-by-minute activity levels throughout the day for each day it is worn. The resulting data are irregular functions characterized by many peaks representing short bursts of intense activity. We model these data using the wavelet-based functional mixed model. This approach incorporates multiple fixed-effects and random-effects functions of arbitrary form, the estimates of which are adaptively regularized using wavelet shrinkage. The method yields posterior samples for all functio...
This thesis consists of work done on three projects which extend and employ wavelet-based functional...
Copyright © 2017 John Wiley & Sons, Ltd. A mixed effect model is proposed to jointly analyze multiva...
International audienceThe problem of estimating the baseline signal from multisample noisy curves is...
We present a case study illustrating the challenges of analyzing accelernmetcr data taken from a sam...
Summary: Increasingly, scientific studies yield functional data, in which the ideal units of observa...
Accelerometry data collected by high-capacity sensors present a primary data type in smart mobile he...
The paper is motivated by an accelerometer-based study of physical activity (PA) behaviours in a la...
Objective: Optimize a C++ implementation of the wavelet-based functional mixed model methodology of ...
In recent years, the data being collected in human movement biomechanics have increased in size and ...
Functional mixed-effects models are very useful in analyzing functional data. A general functional m...
Various methods exist to measure physical activity. Subjective methods, such as diaries and surveys,...
This thesis develops a method to model the variability in functional data and illustrates it through...
Monitoring daily physical activity plays an important role in disease prevention and intervention. T...
Activity recognition is the problem of predicting the current action of a person through the motion ...
International audienceFunctional mixed-effects models are very useful in analyzing functional data. ...
This thesis consists of work done on three projects which extend and employ wavelet-based functional...
Copyright © 2017 John Wiley & Sons, Ltd. A mixed effect model is proposed to jointly analyze multiva...
International audienceThe problem of estimating the baseline signal from multisample noisy curves is...
We present a case study illustrating the challenges of analyzing accelernmetcr data taken from a sam...
Summary: Increasingly, scientific studies yield functional data, in which the ideal units of observa...
Accelerometry data collected by high-capacity sensors present a primary data type in smart mobile he...
The paper is motivated by an accelerometer-based study of physical activity (PA) behaviours in a la...
Objective: Optimize a C++ implementation of the wavelet-based functional mixed model methodology of ...
In recent years, the data being collected in human movement biomechanics have increased in size and ...
Functional mixed-effects models are very useful in analyzing functional data. A general functional m...
Various methods exist to measure physical activity. Subjective methods, such as diaries and surveys,...
This thesis develops a method to model the variability in functional data and illustrates it through...
Monitoring daily physical activity plays an important role in disease prevention and intervention. T...
Activity recognition is the problem of predicting the current action of a person through the motion ...
International audienceFunctional mixed-effects models are very useful in analyzing functional data. ...
This thesis consists of work done on three projects which extend and employ wavelet-based functional...
Copyright © 2017 John Wiley & Sons, Ltd. A mixed effect model is proposed to jointly analyze multiva...
International audienceThe problem of estimating the baseline signal from multisample noisy curves is...