Quantifying Tennis Player Performance: A Linear Regression Approach

Yuxi Zeng, Siwei Zhong
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引用次数: 0

Abstract

This paper uses linear regression to quantitatively analyse the performance of players in the men's singles competition at Wimbledon 2023. Firstly, the data is processed by observationally analysing the match data to ensure compliance with the tournament standards and regulations. Next, key metrics were extracted, including short-term and long-term metrics, as well as the introduction of Serve Indicator to consider the impact of serve advantage on player performance. Then, the most important independent variables were identified through Random Forest feature analysis and parameters were calculated using least squares to construct performance indicators for use in linear regression. Finally, through data visualisation and analysis, it was found that player 1 usually performs better at critical moments, showing greater stability and consistency, while player 2 shows greater variability and unpredictability. Overall, the linear regression method in this paper is valuable and practical for quantifying tennis players' performance, and can provide a reference for players and coaches to help them better analyse and improve their performance.
量化网球运动员的表现:线性回归方法
本文采用线性回归方法对 2023 年温布尔登网球公开赛男子单打比赛中选手的表现进行定量分析。首先,通过观察分析比赛数据进行数据处理,确保符合赛事标准和规定。接着,提取关键指标,包括短期指标和长期指标,以及引入发球指标,以考虑发球优势对球员表现的影响。然后,通过随机森林特征分析确定最重要的自变量,并使用最小二乘法计算参数,以构建用于线性回归的性能指标。最后,通过数据可视化和分析发现,选手 1 通常在关键时刻表现更好,表现出更强的稳定性和连贯性,而选手 2 则表现出更大的可变性和不可预测性。总之,本文中的线性回归方法对于量化网球运动员的表现具有重要价值和实用性,可为运动员和教练员提供参考,帮助他们更好地分析和提高自己的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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