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サッカーにおけるオフボール守備パフォーマンスの測定:非難は称賛より容易
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ポイント
- サッカー選手のオフボール守備パフォーマンスを、タックルやインターセプトだけでなく、位置的行動による継続的な影響を評価するフレームワークを提案した。
- この研究は、選手個々の正確なラベルなしで、多人数・時空間軌跡上の貢献度を推定する新しいアプローチであり、特に失点時の責任を定量化する。
- 提案手法は、広範なデータセットで検証され、既存の指標よりも高い有効性を示し、特に失点時の「非難」スコアが外部評価や市場価値と強く相関した。
Abstract
The defensive performance of football players is commonly measured through a limited number of actions like tackles and interceptions while their continuous impact through positional behaviour has hardly been studied before. We formulate this problem as an attribution over multi-agent spatiotemporal trajectories without player-level ground truth labels, where event-level changes of expected threat are distributed among individuals. We propose a framework that performs this attribution using player involvement scores calculated from defensive pressure areas (DPAs). By computing role-conditioned baselines within automatically detected team structures, we can determine each defender's expected responsibility for threat created through arbitrary passes. The validity and robustness of this approach are evaluated on a uniquely extensive cross-gender and cross-competition data set, including positional and event data from 64 matches of the men's World Cup, 116 matches of the women's German Bundesliga and 336 matches of the men's German 3. Liga. In the absence of a ground truth, we propose an evaluation protocol that combines multiple relatively weak proxies into robust summary scores. We find a validity score that is improved by around 1 standard deviation compared to the best action-based metric and demonstrate that many popular measures show limited validity. The "blame" for conceding high-value actions shows especially strong correlations with external ratings and market values, making it the first published metric in football to reliably measure positioning errors. All code underlying this work is publicly available to support reproducibility and further research.
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