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Predictive analysis and modelling football results using machine learning approach for English Premier League

机译:使用机器学习方法对英超联赛的足球结果进行预测分析和建模

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The introduction of artificial intelligence has given us the ability to build predictive systems with unprecedented accuracy. Machine learning is being used in virtually all areas in one way or another, due to its extreme effectiveness. One such area where predictive systems have gained a lot of popularity is the prediction of football match results. This paper demonstrates our work on the building of a generalized predictive model for predicting the results of the English Premier League. Using feature engineering and exploratory data analysis, we create a feature set for determining the most important factors for predicting the results of a football match, and consequently create a highly accurate predictive system using machine learning. We demonstrate the strong dependence of our models' performances on important features. Our best model using gradient boosting achieved a performance of 0.2156 on the ranked probability score (RPS) metric for game weeks 6 to 38 for the English Premier League aggregated over two seasons (2014-2015 and 2015-2016), whereas the betting organizations that we consider (Bet365 and Pinnacle Sports) obtained an RPS value of 0.2012 for the same period. Since a lower RPS value represents a higher predictive accuracy, our model was not able to outperform the bookmaker's predictions, despite obtaining promising results. (C) 2018 International Institute of Forecasters. Published by Elsevier B.V. All rights reserved.
机译:人工智能的引入使我们能够构建前所未有的准确性的预测系统。机器学习由于其极高的有效性,因此几乎以一种或另一种方式用于所有领域。预测系统获得广泛欢迎的此类领域之一是足球比赛结果的预测。本文演示了我们在构建用于预测英超联赛结果的广义预测模型方面的工作。通过使用特征工程和探索性数据分析,我们创建了一个特征集,用于确定预测足球比赛结果的最重要因素,从而使用机器学习创建了一个高度准确的预测系统。我们证明了模型性能对重要特征的强烈依赖性。我们使用梯度增强的最佳模型在两个赛季(2014-2015年和2015-2016年)的英超联赛第6到38周的排名概率得分(RPS)指标上实现了0.2156的表现,而投注组织认为我们认为(Bet365和Pinnacle Sports)在同一时期获得的RPS值为0.2012。由于较低的RPS值表示较高的预测准确性,因此尽管获得了可喜的结果,我们的模型仍无法超越博彩公司的预测。 (C)2018国际预报员学会。由Elsevier B.V.发布。保留所有权利。

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