Cricket data analytics: Forecasting T20 match winners through machine learning

IF 0.6 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE International Journal of Knowledge-Based and Intelligent Engineering Systems Pub Date : 2023-12-21 DOI:10.3233/kes-230060
Sanjay Chakraborty, Arnab Mondal, Aritra Bhattacharjee, Ankush Mallick, Riju Santra, Saikat Maity, Lopamudra Dey
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Abstract

In the ever-evolving world of cricket, the T20 format has captured the imaginations of fans worldwide, intensifying the anticipation for match outcomes with each passing delivery. This study explores the realm of predictive analytics, leveraging the power of machine learning to alleviate the suspense by forecasting T20 cricket match winners before the first ball is bowled. Drawing on a rich dataset encompassing factors such as past team performance and rankings, a diverse ensemble of predictive models, including logistic regression, support vector machine (SVM), random forest, decision tree, and XGBoost, is meticulously employed. Among these, the random forest Classifier emerges as the standout performer, boasting an impressive prediction accuracy rate of 84.06%. To assess the real-world applicability of our predictive framework, a post-case study is conducted, focusing on the high-stakes World Cup T20 matches of 2022, where England emerges as the triumphant team. The dataset underpinning this study is meticulously curated from ESPN CricInfo, ensuring the robustness of our analysis. Moreover, this paper extends its contribution by offering a comprehensive comparative analysis, scrutinizing performance metrics such as accuracy, precision, recall, and the F1-score across benchmark machine learning models for cricket match prediction. This in-depth evaluation not only validates the efficacy of our models but also sheds light on their superior execution time and statistical robustness, further bolstering their utility in the realm of cricket outcome forecasting.
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板球数据分析:通过机器学习预测 T20 比赛的获胜者
在不断发展的板球世界中,T20 赛制俘获了全世界球迷的心,每一次击球都让人们对比赛结果更加期待。本研究探索了预测分析领域,利用机器学习的力量,在第一球投出前预测 T20 板球比赛的胜负,从而缓解悬念。本研究利用丰富的数据集(包括球队过往表现和排名等因素),精心设计了一系列预测模型,包括逻辑回归、支持向量机(SVM)、随机森林、决策树和 XGBoost。其中,随机森林分类器表现突出,预测准确率高达 84.06%,令人印象深刻。为了评估我们的预测框架在现实世界中的适用性,我们进行了一项事后案例研究,重点关注 2022 年世界杯 T20 高风险比赛,英格兰队在比赛中取得了胜利。本研究的数据集由 ESPN CricInfo 精心整理而成,确保了我们分析的稳健性。此外,本文还提供了全面的比较分析,仔细研究了板球比赛预测基准机器学习模型的准确率、精确度、召回率和 F1 分数等性能指标,从而扩大了本文的贡献。这一深入评估不仅验证了我们模型的功效,还揭示了其卓越的执行时间和统计稳健性,进一步增强了其在板球比赛结果预测领域的实用性。
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CiteScore
2.10
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0.00%
发文量
22
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