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Evolution-Based Performance Prediction of Star Cricketers

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摘要 Cricket databases contain rich and useful information to examine and forecasting patterns and trends.This paper predicts Star Cricketers(SCs)from batting and bowling domains by employing supervised machine learning models.With this aim,each player’s performance evolution is retrieved by using effective features that incorporate the standard performance measures of each player and their peers.Prediction is performed by applying Bayesianrule,function and decision-tree-based models.Experimental evaluations are performed to validate the applicability of the proposed approach.In particular,the impact of the individual features on the prediction of SCs are analyzed.Moreover,the category and model-wise feature evaluations are also conducted.A cross-validation mechanism is applied to validate the performance of our proposed approach which further confirms that the incorporated features are statistically significant.Finally,leading SCs are extracted based on their performance evolution scores and their standings are cross-checked with those provided by the International Cricket Council.
出处 《Computers, Materials & Continua》 SCIE EI 2021年第10期1215-1232,共18页 计算机、材料和连续体(英文)
基金 This work is financially supported by Universiti Tunku Abdul Rahman,Kampar,Perak,Malaysia The authors also acknowledge Taif university for financial support for this research through the Taif University researchers supporting project(TURSP-2020/231),Taif University,Saudi Arabia.
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