Predicting the Winner of a Twenty20 International Cricket Match: Classification and Explainable Machine Learning Approach

Yash Agrawal, Kundan Kandhway
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Abstract

We present a supervised machine learning approach to predict the winner of a Twenty20 (T20) international match. The prediction dynamically changes as the match progresses. We also use explainable machine learning techniques (SHAP scores) to understand the importance of various features in making the decision at various stages of the T20 match. We present results on a dataset of 808 men's T20 international matches. The dynamic accuracy increases from about 55% in the initial stages of the T20 match to a maximum of about 85% in the final stages of the match (with an overall accuracy of about 63% in innings 1 and 74% in innings 2). SHAP scores reveal that team strength is an important feature in making the prediction in initial stages of the match; however, in the final stages, match situation plays the dominant role in the decision making process. Our work may help team coaches and captains to assess their chances of winning and/or chart a course towards winning in the ongoing T20 match, as well as be useful for sports analytics and gambling websites and apps.
预测 Twenty20 国际板球比赛的获胜者:分类和可解释机器学习方法
我们提出了一种有监督的机器学习方法,用于预测一场 20 人制(T20)国际比赛的胜负。随着比赛的进行,预测结果会发生动态变化。我们还使用可解释的机器学习技术(SHAP 分数)来了解各种特征在 T20 比赛不同阶段做出决定时的重要性。我们展示了 808 场男子 T20 国际比赛数据集的结果。动态准确率从 T20 比赛初始阶段的约 55% 增加到比赛最后阶段的最高约 85%(第 1 局和第 2 局的总体准确率分别约为 63% 和 74%)。SHAP 分数显示,在比赛的初始阶段,球队实力是预测的一个重要特征;但在最后阶段,比赛形势在决策过程中起着主导作用。我们的工作可能会帮助球队教练和队长评估他们在正在进行的 T20 比赛中获胜的机会和/或制定获胜的路线,同时对体育分析和赌博网站及应用程序也有帮助。
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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