A multi-season machine learning approach to examine the training load and injury relationship in professional soccer (Unknown)
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- New search for: Bakirov, Rashid
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- New search for: Majumdar, Aritra
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In:
Journal of Sports Analytics
;
10
, 1
;
47-65
;
2024
- Article (Journal) / Electronic Resource
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Title:A multi-season machine learning approach to examine the training load and injury relationship in professional soccer
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Additional title:Machine learning and soccer injury
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Contributors:Majumdar, Aritra ( author ) / Bakirov, Rashid ( author ) / Hodges, Dan ( author ) / McCullagh, Sean ( author ) / Rees, Tim ( author )
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Published in:Journal of Sports Analytics ; 10, 1 ; 47-65
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Publisher:
- New search for: IOS Press
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Place of publication:Nieuwe Hemweg 6B, 1013 BG Amsterdam, The Netherlands
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Publication date:2024-04-22
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ISSN:
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DOI:
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Type of media:Article (Journal)
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Type of material:Electronic Resource
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Language:Unknown
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Keywords:
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Licence:
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Source:
Table of contents – Volume 10, Issue 1
The tables of contents are generated automatically and are based on the data records of the individual contributions available in the index of the TIB portal. The display of the Tables of Contents may therefore be incomplete.
- 1
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Factors associated with match outcomes in elite European football – insights from machine learning modelsSettembre, Maxime / Buchheit, Martin / Hader, Karim / Hamill, Ray / Tarascon, Adrien / Verheijen, Raymond / McHugh, Derek et al. | 2024
- 17
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Modeling and prediction of tennis matches at Grand Slam tournamentsBuhamra, N. / Groll, A. / Brunner, S. et al. | 2024
- 35
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Performance analysis in top handball matches in the seasons before, during, and after the COVID-19 pandemicKrawczyk, Paweł / Szczerba, Mateusz / Labiński, Jan / Smoliński, Maksymilian et al. | 2024
- 47
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A multi-season machine learning approach to examine the training load and injury relationship in professional soccerMajumdar, Aritra / Bakirov, Rashid / Hodges, Dan / McCullagh, Sean / Rees, Tim et al. | 2024
- 67
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Sabermetrics by the sea: Evaluating college players with the Cape Cod Baseball LeagueKilanowski, Humbert / Moloney, Thomas et al. | 2024
- 77
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Filling the gaps: A multiple imputation approach to estimating aging curves in baseballNguyen, Quang / Matthews, Gregory J. et al. | 2024