在冰球运动赛前预测模型中使用动量启发特征

Q2 Computer Science
Jordan Truman Paul Noel, Vinicius Prado da Fonseca, Amilcar Soares
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引用次数: 0

摘要

我们为动量研究做出了独特的贡献,提出了一种用性能指标(即特征)量化动量的方法。我们认为,由于国家冰球联盟中存在可测量的随机性,连续结果的依赖性或独立性可能不是接近动量的最佳方式。相反,我们使用球队近期比赛的小样本和最佳拟合线来量化动量,以确定球队在即将到来的比赛前的表现趋势。我们的研究表明,在赛前预测模型中,使用 SVM 和逻辑回归,这些基于动量的特征比传统的基于频率的特征更有预测能力,后者只使用每支球队最近的三场比赛来评估球队质量。而随机森林则更倾向于同时使用这两种特征集。这些基于动量特征的预测能力表明,动量在国家冰球联盟中是一种真实存在的现象,对比赛结果的影响可能比之前的研究结果更大。此外,我们相信,我们设计基于动量的特征并将其与基于频率的特征进行比较的方法,可以形成一个框架,用于比较动量对任何单项运动或球队的短期影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Use of Momentum-Inspired Features in Pre-Game Prediction Models for the Sport of Ice Hockey
We make a unique contribution to momentum research by proposing a way to quantify momentum with performance indicators (i.e., features). We argue that due to measurable randomness in the NHL, sequential outcomes’ dependence or independence may not be the best way to approach momentum. Instead, we quantify momentum using a small sample of a team’s recent games and a linear line of best-fit to determine the trend of a team’s performances before an upcoming game. We show that with the use of SVM and logistic regression these momentum- based features have more predictive power than traditional frequency-based features in a pre-game prediction model which only uses each team’s three most recent games to assess team quality. While a random forest favors the use of both feature sets combined. The predictive power of these momentum-based features suggests that momentum is a real phenomenon in the NHL and may have more effect on the outcome of games than suggested by previous research. In addition, we believe that how our momentum-based features were designed and compared to frequency-based features could form a framework for comparing the short-term effects of momentum on any individual sport or team.
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来源期刊
International Journal of Computer Science in Sport
International Journal of Computer Science in Sport Computer Science-Computer Science (all)
CiteScore
2.20
自引率
0.00%
发文量
4
审稿时长
12 weeks
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