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Prediction of Attendance Demand in European Football Games: Comparison of ANFIS, Fuzzy Logic, and ANN

机译:欧洲足球比赛出勤需求预测:ANFIS,模糊逻辑和ANN的比较

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摘要

An artificial neural network (ANN), adaptive neurofuzzy inference system (ANFIS) models, and fuzzy rule-based system (FRBS) models are developed to predict the attendance demand in European football games, in this paper. To determine the most successful method, each of the methods is analyzed under different situations. The Elman backpropagation, feed-forward backpropagation, and cascade-forward backpropagation network types are developed to determine the outperforming ANN model. The backpropagation and hybrid optimization methods are used for training fuzzy inference system (FIS) to determine the outperforming ANFIS model. The fuzzy logic model is developed after experimenting different forms of membership functions. To this end, the data of 236 soccer games are used to train the ANN and ANFIS models, and 2017/2018 season's data of these clubs are used to test all of the models. The results of all models are compared with each other and real past data. To assess the performance of each model, two error measures that are Mean Absolute Percent Error (MAPE) and Mean Absolute Deviation (MAD) are implemented. These measures reveal that the ANN model that has Elman network type outperforms the other models. Finally, the results emphasize that the proposed ANN model can be effectively used for prediction purposes.
机译:人工神经网络(ANN),自适应神经可燃推理系统(ANFIS)模型和模糊规则的系统(FRBS)模型是开发的,以预测欧洲足球比赛的出勤需求。为了确定最成功的方法,在不同情况下分析了每种方法。开发了ELMAN BESTPROPAGAGAGAGE,馈通反向衰退和级联反向衰减网络类型以确定优于的ANN模型。 BackPropagation和混合优化方法用于训练模糊推理系统(FIS)以确定优于的ANFIS模型。模糊逻辑模型是在尝试不同形式的隶属函数之后开发的。为此,236个足球比赛的数据用于培训ANN和ANFIS模型,2017/2018赛季的这些俱乐部的数据用于测试所有模型。所有型号的结果都与彼此和真实的过去数据进行比较。为了评估每个模型的性能,实现了两个误差措施,即表示绝对百分比误差(MAPE)和平均绝对偏差(MAD)。这些措施揭示了ELMAN网络类型的ANN模型优于其他模型。最后,结果强调建议的ANN模型可以有效地用于预测目的。

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