Graph Encoding and Neural Network Approaches for Volleyball Analytics: From Game Outcome to Individual Play Predictions
Rhys Tracy, Haotian Xia, Alex Rasla, Yuan-Fang Wang, Ambuj Singh

TL;DR
This paper introduces a graph encoding technique and applies graph neural networks to volleyball data, significantly improving the accuracy of predictions like rally outcomes, set locations, and hit types, providing deeper insights for coaches and players.
Contribution
The study presents a novel graph encoding method for volleyball data and demonstrates the effectiveness of graph neural networks in enhancing prediction accuracy over baseline models.
Findings
GNNs with graph encoding outperform baseline models in volleyball predictions.
Removing blocked hits improves prediction accuracy.
Model architecture choice impacts the extraction of important information.
Abstract
This research aims to improve the accuracy of complex volleyball predictions and provide more meaningful insights to coaches and players. We introduce a specialized graph encoding technique to add additional contact-by-contact volleyball context to an already available volleyball dataset without any additional data gathering. We demonstrate the potential benefits of using graph neural networks (GNNs) on this enriched dataset for three different volleyball prediction tasks: rally outcome prediction, set location prediction, and hit type prediction. We compare the performance of our graph-based models to baseline models and analyze the results to better understand the underlying relationships in a volleyball rally. Our results show that the use of GNNs with our graph encoding yields a much more advanced analysis of the data, which noticeably improves prediction results overall. We also…
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Taxonomy
TopicsSports Analytics and Performance · Sports Performance and Training
