菜单

关于 🐙 GitHub
arXiv 提交日期: 2026-01-29
📄 Abstract - VERSA: Verified Event Data Format for Reliable Soccer Analytics

Event stream data is a critical resource for fine-grained analysis across various domains, including financial transactions, system operations, and sports. In sports, it is actively used for fine-grained analyses such as quantifying player contributions and identifying tactical patterns. However, the reliability of these models is fundamentally limited by inherent data quality issues that cause logical inconsistencies (e.g., incorrect event ordering or missing events). To this end, this study proposes VERSA (Verified Event Data Format for Reliable Soccer Analytics), a systematic verification framework that ensures the integrity of event stream data within the soccer domain. VERSA is based on a state-transition model that defines valid event sequences, thereby enabling the automatic detection and correction of anomalous patterns within the event stream data. Notably, our examination of event data from the K League 1 (2024 season), provided by Bepro, detected that 18.81% of all recorded events exhibited logical inconsistencies. Addressing such integrity issues, our experiments demonstrate that VERSA significantly enhances cross-provider consistency, ensuring stable and unified data representation across heterogeneous sources. Furthermore, we demonstrate that data refined by VERSA significantly improves the robustness and performance of a downstream task called VAEP, which evaluates player contributions. These results highlight that the verification process is highly effective in increasing the reliability of data-driven analysis.

顶级标签: data systems model evaluation
详细标签: data verification sports analytics event stream data quality state-transition model 或 搜索:

VERSA:用于可靠足球分析的可验证事件数据格式 / VERSA: Verified Event Data Format for Reliable Soccer Analytics


1️⃣ 一句话总结

这篇论文提出了一个名为VERSA的系统化验证框架,它通过定义有效的事件序列规则,自动检测和修正足球比赛事件数据中的逻辑错误,从而显著提升了数据分析的可靠性和下游任务(如球员贡献评估)的性能。

源自 arXiv: 2601.21981