Analysis of contextualized intensity in Men's elite handball using graph-based deep learning

被引:6
作者
Bassek, Manuel [1 ,2 ]
Raabe, Dominik [1 ]
Banning, Alexander [1 ]
Memmert, Daniel [1 ]
Rein, Robert [1 ]
机构
[1] German Sport Univ Cologne, Inst Exercise Training & Sport Informat, Cologne, Germany
[2] German Sport Univ Cologne, Inst Exercise Training & Sport Informat, Sportpk Mungersdorf 6, D-50933 Cologne, Germany
关键词
Position data; neural networks; intensity; counter and position attacks; match phases; COLLECTIVE ATTACK TACTICS; PERFORMANCE INDICATORS; METABOLIC POWER; TEAM HANDBALL; SOCCER; SPORTS; GAME; DEMANDS; MATCHES;
D O I
10.1080/02640414.2023.2268366
中图分类号
G8 [体育];
学科分类号
04 ; 0403 ;
摘要
Manual annotation of data in invasion games is a costly task which poses a natural limit on sample sizes and the level of granularity used in match and performance analyses. To overcome this challenge, this work introduces FAUPA-ML, a Framework for Automatic Upscaled Performance Analysis with Machine Learning, which leverages graph neural networks to scale domain-specific expert knowledge to large data sets. Networks were trained using position data of match phases (counter/position attacks), annotated manually by domain experts in 10 matches. The best network was applied to contextualize N = 539 matches of elite handball (2019/20-2021/22 German Men's Handball Bundesliga) with 86% balanced accuracy. Distance covered, speed, metabolic power, and metabolic work were calculated for attackers and defenders and differences between counters and position attacks across seasons analyzed with an ANOVA. Results showed that counter attacks are shorter, less frequent and more intense than position attacks and that attacking is more intense than defending. Findings show that FAUPA-ML generates accurate replications of expert knowledge that can be used to gain insights in performance analysis previously deemed infeasible. Future studies can use FAUPA-ML for large-scale, contextualized analyses that investigate influences of team strength, score-line, or team tactics on performance.
引用
收藏
页码:1299 / 1308
页数:10
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