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Comparing State-of-the-Art Neural Network Ensemble Methods in Soccer Predictions

机译:比较最先进的神经网络集合方法在足球预测中

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For many reasons, including sports being one of the main forms of entertainment in the world, online gambling is growing. And in growing markets, opportunities to explore it arise. In this paper, neural network ensemble approaches, such as bagging, random subspace sampling, negative correlation learning and the simple averaging of predictions, are compared. For each one of these methods, several combinations of input parameters are evaluated. We used only the expected goals metric as predictors since it is able to have good predictive power while keeping the computational demands low. These models are compared in the soccer (also known as association football) betting context where we have access to metrics, such as rentability, to analyze the results in multiple perspectives. The results show that the optimal solution is goal-dependent, with the ensemble methods being able to increase the accuracy up to +3 % over the best single model. The biggest improvement over the single model was obtained by averaging dropout networks.
机译:由于许多原因,包括体育是世界上主要娱乐的主要形式之一,在线赌博正在增长。在不断增长的市场中,探索它的机会。在本文中,比较了神经网络集合方法,例如袋装,随机子空间采样,负相关学习和预测的简单平均。对于这些方法中的每种方法,评估了几种输入参数的组合。我们仅使用预期的目标度量作为预测因子,因为它能够具有良好的预测力,同时保持计算需求低。这些模型在足球(也称为关联足球)投注上下文中比较,在那里我们可以访问诸如租赁的度量,以分析多种视角的结果。结果表明,最佳解决方案依赖于目标,该集合方法能够在最佳单一模型中提高高达+3%的准确性。通过平均丢弃网络获得对单一模型的最大改进。

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