This study presents a novel deep learning method, called GATv2-GCN, for predicting player performance in sports. To construct a dynamic player interaction graph, we leverage player statistics and their interactions during gameplay. We use a graph attention network to capture the attention that each player pays to each other, allowing for more accurate modeling of the dynamic player interactions. To handle the multivariate player statistics time series, we incorporate a temporal convolution layer, which provides the model with temporal predictive power. We evaluate the performance of our model using real-world sports data, demonstrating its effectiveness in predicting player performance. Furthermore, we explore the potential use of our model in a sports betting context, providing insights into profitable strategies that leverage our predictive power. The proposed method has the potential to advance the state-of-the-art in player performance prediction and to provide valuable insights for sports analytics and betting industries.
翻译:本研究提出了一种新颖的深度学习方法 GATv2-GCN,用于预测体育运动中的选手表现。为了构建动态的运动员交互图,我们利用选手的统计数据和比赛期间的相互作用。我们使用图注意力网络捕捉每个选手对其他选手的注意力,从而更准确地建模动态的运动员交互。为了处理多变量选手的时间序列统计数据,我们采用了一个时间卷积层,为模型提供了时间预测能力。我们使用真实的体育运动数据评估了我们的模型的性能,证明了它在预测选手表现方面的有效性。此外,我们探讨了在体育博彩中利用我们的预测能力获得盈利策略的潜力。该提议的方法有望推进选手表现预测的最新技术并为体育分析和博彩行业提供宝贵的见解。