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On the use of passing network indicators to predict football outcomes

机译:关于通过网络指标预测足球结果

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摘要

A Summary statistics for football matches, such as ball possession and percentage of completed passes, are not always satisfyingly informative about team strategies seen on the pitch. Passing networks and their structural features can be used to evaluate the style of play in terms of passing behavior, analyzing and quantifying interactions among players. The aim of the present paper is to show how information retrieved from passing networks can have a significant impact on the match outcome. At a descriptive level, we provide useful graphic visualizations to compare teams and their individual level of connection. Therefore, we directly compute and discuss network properties, such as centralization, clustering and cliques, from a football perspective. Then, we model the probability of winning the game through four competitive machine learning models including network-based indicators as explanatory variables with a set of in-field variables. The real dataset for application includes 96 matches in the Group Stage of the 2016-2017 UEFA Champions League, involving the 32 best European teams. This approach shows that some network-based variables, such as diameter and betweenness centralization, can be related to the level of offensive actions and finalizations for a team. Furthermore, we show that such variables help improve all considered models in terms of explanatory power, compared to those presenting only in-field regressors. Among the presented models, binomial logistic regression shows the best results according to a set of performance indicators. (C) 2021 Elsevier B.V. All rights reserved.
机译:足球比赛的概要统计数据,如滚珠占有和完成的通行证百分比,并不总是满足音高上所看到的团队策略的信息。传递网络及其结构特征可用于评估通过行为,分析和量化玩家之间的交互的娱乐方式。本文的目的是展示从传递网络检索的信息如何对匹配结果产生重大影响。在描述性级别,我们提供了有用的图形可视化来比较团队及其个人连接级别。因此,我们直接计算并讨论网络属性,例如集中化,聚类和派系,从足球角度来看。然后,我们通过四个竞争机器学习模型赢得游戏的可能性,包括基于网络的指标作为具有一组现场变量的解释变量。申请的真实数据集包括2016-2017欧洲冠军联赛的集团阶段中的96场比赛,涉及32名最佳欧洲队伍。这种方法表明,一些基于网络的变量,例如直径和之间的集中,可以与团队的冒犯行动和最终确定的水平有关。此外,我们表明这种变量有助于改善所有考虑的模型,而不是呈现出现场回归的那些。在呈现的模型中,二项式逻辑回归显示了根据一组性能指标的最佳结果。 (c)2021 elestvier b.v.保留所有权利。

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