优化体育运动中的分级:利用体能和技术-战术表现指标对橄榄球联赛中的竞技水平进行分级的重复研究。

Science & medicine in football Pub Date : 2024-02-01 Epub Date: 2022-11-14 DOI:10.1080/24733938.2022.2146177
Victor Elijah Adeyemo, Anna Palczewska, Ben Jones, Dan Weaving, Sarah Whitehead
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引用次数: 0

摘要

确定关键性能指标并在竞技水平之间对球员进行准确分类是体育分析中的分类挑战之一。最近的一项研究采用随机森林算法识别重要变量,将橄榄球联盟球员分为学院级和高级,后卫和前锋的准确率分别达到 82.0% 和 67.5%。然而,由于现有方法的局限性,分类准确率还有待提高。因此,本研究旨在引入和实施特征选择技术,以识别橄榄球联盟位置组的关键性能指标,并评估六种分类算法的性能。通过基于相关性的特征选择方法,后卫和前锋的 157 个表现指标中分别有 15 个和 14 个被确定为关键表现指标,位置组之间有 7 个共同指标。分类结果表明,与使用所有性能指标开发的模型相比,使用关键性能指标开发的模型在两个位置组中的性能都有所提高。5 近邻法对后卫和前锋的分类准确率最高(准确率分别为 85% 和 77%),高于前一种方法的准确率。在分析体育科学中的分类问题时,鼓励研究人员评估多种分类算法,并应考虑采用特征选择方法来确定关键变量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimising classification in sport: a replication study using physical and technical-tactical performance indicators to classify competitive levels in rugby league match-play.

  Determining key performance indicators and classifying players accurately between competitive levels is one of the classification challenges in sports analytics. A recent study applied Random Forest algorithm to identify important variables to classify rugby league players into academy and senior levels and achieved 82.0% and 67.5% accuracy for backs and forwards. However, the classification accuracy could be improved due to limitations in the existing method. Therefore, this study aimed to introduce and implement feature selection technique to identify key performance indicators in rugby league positional groups and assess the performances of six classification algorithms. Fifteen and fourteen of 157 performance indicators for backs and forwards were identified respectively as key performance indicators by the correlation-based feature selection method, with seven common indicators between the positional groups. Classification results show that models developed using the key performance indicators had improved performance for both positional groups than models developed using all performance indicators. 5-Nearest Neighbour produced the best classification accuracy for backs and forwards (accuracy = 85% and 77%) which is higher than the previous method's accuracies. When analysing classification questions in sport science, researchers are encouraged to evaluate multiple classification algorithms and a feature selection method should be considered for identifying key variables.

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