Multivariate regression modeling of Chinese artistic gymnastic handspring vaulting kinematic performance based on judges scores
Abstract
Introduction: Vault kinematic variables have been found to be strongly correlated with vault difficulty (DV) values
and judges’ scores. However, the Fédération Internationale de Gymnastique Code of Points (COP) was updated
after every Olympic Games rendering previous regression models inadequate. Therefore, the objective of this
study was to develop a prediction model for vault performance based on judges’ scores.
Methods: Handspring vaults (n = 70) were recorded during the Men’s Artistic Gymnastic qualifying round of the
2017 China National Artistic Gymnastics Championship using a video camera placed 50 m perpendicular to the
vault table. Kinematic data were coded and correlated with judges’ official competition final scores (FSs). The
vault samples were used to develop a mathematical model (n = 65) and to verify the scores against the predicted
model (n = 5). Partial least squares regression was established using the statistical software to calibrate and cross
validate the model.
Results: The goodness-of-fit of a 3-factor model was utilised (R2
cal = 90.13% and R2
val = 87.30%) and a significant
and strong relationship was observed between predicted Y (FS) and reference Y (FS) in both the calibration
and validation models (rcal = 0.949, rval = 0.932) with Y-calibration error (RMSEC = 0.1727) and Y-prediction error
(RMSEP = 0.1990). Maximum height, 2nd-flight-time and DV were the key variables against FS. Using JSPM, 40%
of new samples were within the acceptable range.
Conclusion: Kinematic variables and known DV seem adequate to form a JSPM that could offer coaches an
alternative scientific approach to monitor vault training.