Complementing subjective with objective data in analysing expertise: A machine-learning approach applied to badminton

This study aimed to assess which combination of subjective and empirical data might help to identify the expertise level. A group of 10 expert coaches classified 40 participants in 5 different expertise groups based on the video footage of the rallies. The expertise levels were determined using a typology based on a continuum of 5 conative stages: (1) structural, (2) functional, (3) technical, (4) contextual, and (5) expertise. The video allowed empirical measurement of the duration of the rallies, and tri-axial accelerometers measured the intensity of the player`s involvement. A principal component analysis showed that two dimensions explained 54.9% of the total variance in the data and that conative stage and empirical parameters during rallies (duration, intensity of the game) were correlated with axis 1, whereas duration and acceleration data between rallies were correlated with axis 2. A random forest algorithm showed that among the parameters considered, acceleration, duration of the rallies, and time between rallies could predict conative stages with a prediction accuracy above possibility.
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Bibliographic Details
Subjects:
Notations:sport games technical and natural sciences
Tagging:maschinelles Lernen data mining
Published in:Journal of Sports Sciences
Language:English
Published: 2020
Online Access:https://doi.org/10.1080/02640414.2020.1764812
Volume:38
Issue:17
Pages:1943-1952
Document types:article
Level:advanced