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机器学习教育综述:足球领域应用机器学习技术的SWOT分析

An Educational Review on Machine Learning: A SWOT Analysis for Implementing Machine Learning Techniques in Football.

作者信息

Beato Marco, Jaward Mohamed Hisham, Nassis George P, Figueiredo Pedro, Clemente Filipe Manuel, Krustrup Peter

机构信息

School of Allied Health Sciences, University of Suffolk, Ipswich, United Kingdom.

School of School of Technology, Business and Arts, University of Suffolk, Ipswich, United Kingdom.

出版信息

Int J Sports Physiol Perform. 2024 Dec 11;20(2):183-191. doi: 10.1123/ijspp.2024-0247. Print 2025 Feb 1.

Abstract

PURPOSE

The abundance of data in football presents both opportunities and challenges for decision making. Consequently, this review has 2 primary objectives: first, to provide practitioners with a concise overview of the characteristics of machine-learning (ML) analysis, and, second, to conduct a strengths, weaknesses, opportunities, and threats (SWOT) analysis regarding the implementation of ML techniques in professional football clubs. This review explains the difference between artificial intelligence and ML and the difference between ML and statistical analysis. Moreover, we summarize and explain the characteristics of ML learning approaches, such as supervised learning, unsupervised learning, and reinforcement learning. Finally, we present an example of a SWOT analysis that suggests some actions to be considered in applying ML techniques by medical and sport science staff working in football. Specifically, 4 dimensions are presented: the use of strengths to create opportunities and make the most of them, the use of strengths to avoid threats, working on weaknesses to take advantage of opportunities, and upgrading weaknesses to avoid threats.

CONCLUSION

ML analysis can be an invaluable tool for football clubs and sport-science and medical departments due to its ability to analyze vast amounts of data and extract meaningful insights. Moreover, ML can enhance performance by assessing the risk of injury, physiological parameters, and physical fitness, as well as optimizing training, recommending strategies based on opponent analysis, and identifying talent and assessing player suitability.

摘要

目的

足球领域丰富的数据为决策带来了机遇和挑战。因此,本综述有两个主要目标:第一,为从业者提供机器学习(ML)分析特征的简要概述;第二,对职业足球俱乐部中ML技术的实施进行优势、劣势、机遇和威胁(SWOT)分析。本综述解释了人工智能与ML之间的差异以及ML与统计分析之间的差异。此外,我们总结并解释了ML学习方法的特征,如监督学习、无监督学习和强化学习。最后,我们给出一个SWOT分析的示例,为足球领域的医学和运动科学工作人员在应用ML技术时提供一些可考虑的行动建议。具体而言,提出了四个维度:利用优势创造并充分利用机遇;利用优势规避威胁;改善劣势以把握机遇;弥补劣势以避免威胁。

结论

ML分析对于足球俱乐部以及运动科学和医学部门而言可能是一项非常宝贵的工具,因为它有能力分析大量数据并提取有意义的见解。此外,ML可以通过评估受伤风险、生理参数和体能来提高表现,还能优化训练、根据对手分析推荐策略以及识别人才和评估球员适配性。

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