Using Support Vector Regression Kernel Models for Cricket Performance Prediction in the Womens Premier League 2024

Ponnusamy Yoga Lakshmi, Swamynathan Sanjaykumar, Maniazhagu Dharuman, Aarthi Elangovan
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Abstract

Background. The interest in women’s premier league cricket has caused the need for advanced analytics to understand the multifaceted dynamics of the sport. Study Purpose. This study aimed to contribute to sports analytics by assessing the efficacy of Support Vector Regression (SVR) kernel models in predicting the most valuable player. Such research methods as ANOVA, Bessel function, and Inverse MultiQuadratic kernel application have been deliberately chosen for their diverse mathematical approaches, aligning with the nuanced intricacies of women's premier league cricket. Materials and methods. Player performance was analyzed by using the following study methods: ANOVA, Bessel function and Inverse MultiQuadratic kernel application. The data, sourced from espncricinfo.com and the International Cricket Council, includes essential metrics for five teams. Rigorous preprocessing techniques, such as imputation and outlier removal, enhance data reliability, ensuring robust predictive models. Results. The application of the Inverse MultiQuadratic kernel exhibits exceptional predictive performance, surpassing ANOVA and Bessel function models. The kernels radial basis function proves effective in capturing the intricate dynamics of women’s premier league cricket. The findings underscore the suitability of kernel method for predicting standout performers in the Womenʼs Premier League 2024 season. Conclusions. The study revealed the dynamic interplay between sports analytics and machine learning in women's premier league cricket. The application of the Inverse MultiQuadratic kernel stands out as the most effective model, providing key insights into player predictions. This emphasizes the continual integration of advanced analytical techniques to enhance our understanding of the evolving landscape of women’s premier league cricket. As the sport gains prominence on the global stage, such analytical endeavors become imperative for strategic decision-making and sustained growth.
使用支持向量回归核模型预测 2024 年女子板球超级联赛的成绩
背景。人们对女子板球超级联赛的兴趣促使人们需要先进的分析方法来了解这项运动的多方面动态。本研究旨在通过评估支持向量回归(SVR)核模型在预测最有价值球员方面的功效,为体育分析做出贡献。本研究特意选择了方差分析、贝塞尔函数和反多二次核应用等研究方法,因为它们采用了不同的数学方法,符合女子板球超级联赛的细微复杂性。使用以下研究方法对球员表现进行分析:方差分析、贝塞尔函数和反多二次核应用。数据来源于 espncricinfo.com 和国际板球理事会,包括五支球队的基本指标。严格的预处理技术,如估算和离群值去除,提高了数据的可靠性,确保了预测模型的稳健性。逆多二次方核的应用显示出卓越的预测性能,超过了方差分析和贝塞尔函数模型。事实证明,核径向基函数能有效捕捉女子板球超级联赛的复杂动态。研究结果表明,核方法适用于预测 2024 赛季女子板球超级联赛中表现突出的球员。这项研究揭示了板球女子超级联赛中体育分析与机器学习之间的动态相互作用。逆多二次元内核的应用是最有效的模型,为球员预测提供了关键见解。这强调了要不断整合先进的分析技术,以增强我们对女子板球超级联赛不断发展的理解。随着板球运动在世界舞台上日益崭露头角,此类分析工作对于战略决策和持续发展势在必行。
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