澳大利亚足球比赛结果建模:利用大型数据库提高准确性

Christopher M. Young, Wei Luo, P. Gastin, J. Tran, J. Tran, D. Dwyer
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引用次数: 8

摘要

摘要基于技术表现指标(PI)值解释比赛结果的数学模型可用于确定团队场地运动中技术表现的最重要方面。本研究的目的是评估几种方法学机会,以提高此类建模的准确性。具体而言,我们评估了以下方面的潜在好处:1)与以前的报告相比,使用更多的季节和PI对比赛结果进行建模;2)如何识别技术性能特征稳定的时代;3)应用新的特征选择方法。对澳大利亚足球(AF)联赛16个赛季的91个PIs进行了分析。使用变化点和分段回归分析来确定时代,它们产生了相似但不相同的结果。特征选择集成方法确定了用于建模的最有价值的45个PI。与之前的研究(88.8%对78.9%)相比,使用更多的季节进行模型开发可以提高模型的分类准确性。这项研究证明了大型数据库在创建匹配结果模型时的潜在好处,以及确定纵向数据库中是否存在时代的陷阱。
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Modelling Match Outcome in Australian Football: Improved accuracy with large databases
Abstract Mathematical models that explain match outcome, based on the value of technical performance indicators (PIs), can be used to identify the most important aspects of technical performance in team field-sports. The purpose of this study was to evaluate several methodological opportunities, to enhance the accuracy of this type of modelling. Specifically, we evaluated the potential benefits of 1) modelling match outcome using an increased number of seasons and PIs compared with previous reports, 2) how to identify eras where technical performance characteristics were stable and 3) the application of a novel feature selection method. Ninety-one PIs across sixteen Australian Football (AF) League seasons were analysed. Change-point and Segmented Regression analyses were used to identify eras and they produced similar but non-identical outcomes. A feature selection ensemble method identified the most valuable 45 PIs for modelling. The use of a larger number of seasons for model development lead to improvement in the classification accuracy of the models, compared with previous studies (88.8 vs 78.9%). This study demonstrates the potential benefits of large databases when creating models of match outcome and the pitfalls of determining whether there are eras in a longitudinal database.
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来源期刊
International Journal of Computer Science in Sport
International Journal of Computer Science in Sport Computer Science-Computer Science (all)
CiteScore
2.20
自引率
0.00%
发文量
4
审稿时长
12 weeks
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