Graduate School of Information Science and Technology, Hokkaido University, N-14, W-9, Kita-ku, Sapporo 060-0814, Hokkaido, Japan.
Faculty of Information Science and Technology, Hokkaido University, N-14, W-9, Kita-ku, Sapporo 060-0814, Hokkaido, Japan.
Sensors (Basel). 2023 May 5;23(9):4506. doi: 10.3390/s23094506.
In soccer, quantitatively evaluating the performance of players and teams is essential to improve tactical coaching and players' decision-making abilities. To achieve this, some methods use predicted probabilities of shoot event occurrences to quantify player performances, but conventional shoot prediction models have not performed well and have failed to consider the reliability of the event probability. This paper proposes a novel method that effectively utilizes players' spatio-temporal relations and prediction uncertainty to predict shoot event occurrences with greater accuracy and robustness. Specifically, we represent players' relations as a complete bipartite graph, which effectively incorporates soccer domain knowledge, and capture latent features by applying a graph convolutional recurrent neural network (GCRNN) to the constructed graph. Our model utilizes a Bayesian neural network to predict the probability of shoot event occurrence, considering spatio-temporal relations between players and prediction uncertainty. In our experiments, we confirmed that the proposed method outperformed several other methods in terms of prediction performance, and we found that considering players' distances significantly affects the prediction accuracy.
在足球中,定量评估球员和球队的表现对于提高战术指导和球员决策能力至关重要。为此,一些方法使用预测的射门事件发生概率来量化球员表现,但传统的射门预测模型表现不佳,未能考虑事件概率的可靠性。本文提出了一种新方法,可有效利用球员的时空关系和预测不确定性,更准确、更稳健地预测射门事件的发生。具体来说,我们将球员的关系表示为一个完整的二部图,有效地结合了足球领域的知识,并通过应用图卷积递归神经网络(GCRNN)对构建的图进行特征提取。我们的模型利用贝叶斯神经网络来预测射门事件发生的概率,同时考虑球员之间的时空关系和预测不确定性。在实验中,我们证实了所提出的方法在预测性能方面优于其他几种方法,并且发现考虑球员之间的距离会显著影响预测精度。