In this paper we examine the effectiveness of five mathematical models used to predict the outcomes of amateur darts games. These models not only predict the outcomes at the start of the game, but also update their estimations as the game score changes. The models were trained and tested on a dataset consisting of games played by amateur players involving students, faculty, and staff at Roanoke College. The five models are: the null model, which is based only on the live scores, a logistic regression model, a basic simulation model, a time-adjusted simulation model, and a new variation of the Massey model which updates based on the current score. We evaluate these models using two approaches. First, we compare their Brier scores. Second, we conduct head-to-head comparisons in a betting game in which one model sets the betting odds while the other places bets. In both cases, model performance is assessed not only at the start of the game but also at the start of each round. Across both evaluation methods, the score-dependent Massey model performs the best. We conclude by illustrating how this score-dependent Massey model framework can be adapted to other competitive settings beyond darts.
翻译:本文研究了五种用于预测业余飞镖比赛结果的数学模型的有效性。这些模型不仅在比赛开始时预测结果,还会随着比赛得分的变化更新其估计值。模型基于罗诺克学院学生、教职员工参与的业余选手比赛数据集进行训练和测试。五种模型包括:仅基于实时得分的零模型、逻辑回归模型、基础模拟模型、时间调整模拟模型,以及一种根据当前得分更新的新型马斯模型变体。我们采用两种方法评估这些模型:首先比较它们的布里尔分数,其次在投注游戏中开展一对一对比,即一个模型设定赔率而另一个模型进行投注。两种评估方法均同时考察比赛开始时及各回合开始时的模型表现。综合评估结果显示,依赖得分的马斯模型表现最佳。最后,我们阐述了该依赖得分的马斯模型框架如何适用于飞镖之外的其他竞技场景。