TY - GEN
T1 - Predicting Volleyball Season Performance Using Pre-Season Wearable Data and Machine Learning
AU - Ozolcer, Melik
AU - Zhang, Tongze
AU - Bae, Sang Won
N1 - Publisher Copyright:
©2025 IEEE.
PY - 2025
Y1 - 2025
N2 - Predicting performance outcomes has the potential to transform training approaches, inform coaching strategies, and deepen our understanding of the factors that contribute to athletic success. Traditional non-automated data analysis in sports are often difficult to scale. To address this gap, this study analyzes factors influencing athletic performance by leveraging passively collected sensor data from smartwatches and ecological momentary assessments (EMA). The study aims to differentiate between 14 collegiate volleyball players who go on to perform well or poorly, using data collected prior to the beginning of the season. This is achieved through an integrated feature set creation approach. The model, validated using leave-one-subject-out cross-validation, achieved promising predictive performance (F1 score = 0.75). Importantly, by utilizing data collected before the season starts, our approach offers an opportunity for players predicted to perform poorly to improve their projected outcomes through targeted interventions by virtue of daily model predictions. The findings from this study not only demonstrate the potential of machine learning in sports performance prediction but also shed light on key features along with subjective psycho-physiological states that are predictive of, or associated with, athletic success.
AB - Predicting performance outcomes has the potential to transform training approaches, inform coaching strategies, and deepen our understanding of the factors that contribute to athletic success. Traditional non-automated data analysis in sports are often difficult to scale. To address this gap, this study analyzes factors influencing athletic performance by leveraging passively collected sensor data from smartwatches and ecological momentary assessments (EMA). The study aims to differentiate between 14 collegiate volleyball players who go on to perform well or poorly, using data collected prior to the beginning of the season. This is achieved through an integrated feature set creation approach. The model, validated using leave-one-subject-out cross-validation, achieved promising predictive performance (F1 score = 0.75). Importantly, by utilizing data collected before the season starts, our approach offers an opportunity for players predicted to perform poorly to improve their projected outcomes through targeted interventions by virtue of daily model predictions. The findings from this study not only demonstrate the potential of machine learning in sports performance prediction but also shed light on key features along with subjective psycho-physiological states that are predictive of, or associated with, athletic success.
KW - Athletic performance prediction
KW - ecological momentary assessments (EMA)
KW - feature extraction
KW - machine learning
KW - predictive modeling
KW - wearables
UR - https://www.scopus.com/pages/publications/105015513514
UR - https://www.scopus.com/pages/publications/105015513514#tab=citedBy
U2 - 10.1109/ABC64332.2025.11118608
DO - 10.1109/ABC64332.2025.11118608
M3 - Conference contribution
AN - SCOPUS:105015513514
T3 - 2025 International Conference on Activity and Behavior Computing, ABC 2025
BT - 2025 International Conference on Activity and Behavior Computing, ABC 2025
T2 - 2025 International Conference on Activity and Behavior Computing, ABC 2025
Y2 - 21 April 2025 through 25 April 2025
ER -