用泊松分布模型预测2022年世界杯淘汰赛阶段

Stanislaus Jiwandana Pinasthika, D. Fudholi
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引用次数: 0

摘要

足球是世界上最受欢迎的运动之一。受欢迎程度使得每一个与足球相关的话题都变得有趣,例如,国际足联世界杯冠军的预测。这个话题不仅仅是随便讨论的话题,而且可以作为教练组评估球队准备情况的实际决策支持。大多数预测方法使用大型匹配数据集。由于每个国家队在每届世界杯上都有不同的阵容,而FIFA世界杯每四年举行一次,所以使用大型比赛数据集是无关紧要的。因此,需要一种基于相关数据的预测方法。我们应用泊松分布模型对2022年世界杯淘汰赛阶段的比赛结果进行预测。我们根据两队的平均进球数和失球数来计算输赢的概率,并使用德菲内蒂距离来评估实际结果的差异。15场比赛中有8场预测成功,16轮比赛中有6场预测成功。因此,新的数据属性需要重新表述泊松的lambda。进一步的研究需要加入之前3-4场世界杯比赛的数据,以提高预测的接受度。
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World Cup 2022 Knockout Stage Prediction Using Poisson Distribution Model
Football is one of the most popular sports in the world. The popularity makes every topic related to football interesting, for instance, the FIFA World Cup winner prediction. This topic is not only for casual discussion but could be a practical decision support for coaching staff to rate the team’s readiness. Most prediction methods use large match datasets. Since every national team has a different squad for every world cup and the FIFA World Cup is held every four years, the usage of a large match dataset is irrelevant. Therefore, there is a need for a prediction method based on the relevant data. We applied the Poisson distribution model for predicting the FIFA World Cup 2022 knockout stage match results. We calculate the probability of winning and losing based on their average goal scores and goal conceded and evaluate the difference by the actual result using de Finetti distance. The successful prediction is 8 out of 15 matches, with six inside the round of 16 games. Thus, the new data attributes need to reformulate Poisson’s lambda. Further studies need to add the 3-4 prior world cup matches data to increase the acceptance of prediction.
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发文量
20
审稿时长
12 weeks
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