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Bayesian Based Approach Learning for Outcome Prediction of Soccer Matches

机译:基于贝叶斯方法的足球比赛结果预测

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In the current world, sports produce considerable data such as players skills, game results, season matches, leagues management, etc. The big challenge in sports science is to analyze this data to gain a competitive advantage. The analysis can be done using several techniques and statistical methods in order to produce valuable information. The problem of modeling soccer data has become increasingly popular in the last few years, with the prediction of results being the most popular topic. In this paper, we propose a Bayesian Model based on rank position and shared history that predicts the outcome of future soccer matches. The model was tested using a data set containing the results of over 200,000 soccer matches from different soccer leagues around the world.
机译:在当今世界,体育运动会产生大量数据,例如运动员的技能,比赛结果,赛季比赛,联赛管理等。体育科学面临的最大挑战是分析这些数据以获得竞争优势。为了产生有价值的信息,可以使用多种技术和统计方法进行分析。足球数据建模的问题在最近几年变得越来越流行,结果的预测是最流行的话题。在本文中,我们提出了一种基于排名和共享历史的贝叶斯模型,该模型可以预测未来足球比赛的结果。使用包含来自世界各地不同足球联赛的200,000多次足球比赛结果的数据集对模型进行了测试。

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