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Which indicators matter? Using performance indicators to predict in-game success-related events in association football Cover

Which indicators matter? Using performance indicators to predict in-game success-related events in association football

Open Access
|Jul 2025

References

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Language: English
Page range: 16 - 44
Published on: Jul 31, 2025
In partnership with: Paradigm Publishing Services
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© 2025 Steffen Lang, Thomas Wimmer, Alexander Erben, Daniel Link, published by International Association of Computer Science in Sport
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