OpenSTARLab: Open Approach for Spatio-Temporal Agent Data Analysis in Soccer
Calvin Yeung, Kenjiro Ide, Taiga Someya, Keisuke Fujii

TL;DR
OpenSTARLab is an open-source framework that standardizes and enhances spatio-temporal soccer data analysis, enabling advanced predictive and reinforcement learning applications despite data scarcity challenges.
Contribution
It introduces a comprehensive open-source platform with data standardization, deep learning event prediction, and reinforcement learning tools for soccer analytics.
Findings
Superior event prediction accuracy demonstrated
Robust event simulation performance achieved
Reinforcement learning experiments show effective visualization and trade-offs
Abstract
Sports analytics has become both more professional and sophisticated, driven by the growing availability of detailed performance data. This progress enables applications such as match outcome prediction, player scouting, and tactical analysis. In soccer, the effective utilization of event and tracking data is fundamental for capturing and analyzing the dynamics of the game. However, there are two primary challenges: the limited availability of event data, primarily restricted to top-tier teams and leagues, and the scarcity and high cost of tracking data, which complicates its integration with event data for comprehensive analysis. Here we propose OpenSTARLab, an open-source framework designed to democratize spatio-temporal agent data analysis in sports by addressing these key challenges. OpenSTARLab includes the Pre-processing Package that standardizes event and tracking data through…
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Taxonomy
TopicsSports Analytics and Performance · Data Mining Algorithms and Applications
