使用机器学习算法预测ODI板球运动员的表现

Aminul Islam Anik, Sakif Yeaser, A. Hossain, Amitabha Chakrabarty
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引用次数: 23

摘要

本文提出了一种通过实现机器学习算法来预测板球运动员即将到来的比赛表现的方法。所提出的模型包括从可信体育网站收集的孟加拉国国家板球队球员的统计数据,递归特征消除和单变量选择等特征选择算法以及线性回归,线性和多项式核支持向量机等机器学习算法。为了实现所提出的模型,将累积的统计数据处理成数值,以实现算法中的统计数据。此外,应用上述特征选择算法提取与输出特征更相关的属性。此外,机器学习算法还用于预测击球手的得分和投球手在即将到来的比赛中的得分。实验表明,该模型对击球手Tamim的预测准确率高达91.5%,对投球手Mahmudullah的预测准确率高达75.3%,对其他球员的预测准确率也达到了要求。因此,这将有助于计算球员未来的表现,从而确保在即将到来的板球比赛中更好地选择球队。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Player’s Performance Prediction in ODI Cricket Using Machine Learning Algorithms
This paper presents a method that is aimed towards predicting a cricket player’s upcoming match performance by implementing machine learning algorithms. The proposed model consists of statistical data of players of Bangladesh national cricket team which has been collected from trusted sports websites, feature selection algorithms such as recursive feature elimination and univariate selection and machine learning algorithms such as linear regression, support vector machine with linear and polynomial kernel. To implement the proposed model, the accumulated statistical data is processed into numerical value in order to implement those in the algorithms. Furthermore, aforementioned feature selection algorithms are applied for extracting the attributes that are more related to the output feature. Additionally, the machine learning algorithms are used to predict runs scored by a batsman and runs considered by a bowler in the upcoming match. The experimental setup demonstrates that the model gives up to 91.5% accuracy for batsman Tamim and up to 75.3% accuracy for bowler Mahmudullah whereas prediction accuracy for other players are also up to the mark. Therefore, this will help in calculating player’s future performance and thus will ensure better team selection for forthcoming cricket matches.
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