Machine learning (ML) activity classification models trained on laboratory-based activity trials exhibit low accuracy under free-living conditions. Training new models on free-living accelerometer data, reducing the number of prediction windows comprised of multiple activity types by using shorter windows, including temporal features such as standard deviation in lag and lead windows, and using multiple sensors may improve the classification accuracy under free-living conditions. The objective of this study was to evaluate the accuracy of Random Forest (RF) activity classification models for preschool-aged children trained on free-living accelerometer data. Thirty-one children (mean age = 4.0 ± 0.9 years) completed a 20 min free-play sessio...
Early childhood development is arguably the most significant period in the course of life. It is wid...
Regular Physical activity (PA) provides children a range of important health benefits, including hea...
The growing trend of obesity and overweight worldwide has reached epidemic proportions with one thir...
Machine learning (ML) activity classification models trained on laboratory-based activity trials exh...
Machine learning classification models for accelerometer data are potentially more accurate methods ...
Objectives\ud \ud Recent research has shown that machine learning techniques can accurately predict ...
Introduction Machine learning (ML) accelerometer data processing methods have potential to improve t...
This study developed and evaluated machine learning algorithms to predict children’s physical activi...
PURPOSE:To evaluate the accuracy of LAB EE prediction models in preschool children completing a free...
PURPOSE: Pattern recognition approaches to accelerometer data processing have emerged as viable alte...
Problem addressed Wrist-worn accelerometers are associated with greater compliance. However, validat...
Numerous studies have identified the importance of regular physical activity, limited sitting time a...
Pattern recognition methodologies, such as those utilizing machine learning (ML) approaches, have th...
Objectives Wrist-worn accelerometers are convenient to wear and associated with greater wear-time co...
Early childhood is an important development period for establishing healthy physical activity (PA) h...
Early childhood development is arguably the most significant period in the course of life. It is wid...
Regular Physical activity (PA) provides children a range of important health benefits, including hea...
The growing trend of obesity and overweight worldwide has reached epidemic proportions with one thir...
Machine learning (ML) activity classification models trained on laboratory-based activity trials exh...
Machine learning classification models for accelerometer data are potentially more accurate methods ...
Objectives\ud \ud Recent research has shown that machine learning techniques can accurately predict ...
Introduction Machine learning (ML) accelerometer data processing methods have potential to improve t...
This study developed and evaluated machine learning algorithms to predict children’s physical activi...
PURPOSE:To evaluate the accuracy of LAB EE prediction models in preschool children completing a free...
PURPOSE: Pattern recognition approaches to accelerometer data processing have emerged as viable alte...
Problem addressed Wrist-worn accelerometers are associated with greater compliance. However, validat...
Numerous studies have identified the importance of regular physical activity, limited sitting time a...
Pattern recognition methodologies, such as those utilizing machine learning (ML) approaches, have th...
Objectives Wrist-worn accelerometers are convenient to wear and associated with greater wear-time co...
Early childhood is an important development period for establishing healthy physical activity (PA) h...
Early childhood development is arguably the most significant period in the course of life. It is wid...
Regular Physical activity (PA) provides children a range of important health benefits, including hea...
The growing trend of obesity and overweight worldwide has reached epidemic proportions with one thir...