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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Bibliographic Details
Subjects:
Notations:sport games technical and natural sciences
Tagging:NHL maschinelles Lernen KPI
Published in:International Journal of Computer Science in Sport
Language:English
Published: 2024
Online Access:https://doi.org/10.2478/ijcss-2024-0001
Volume:23
Issue:1
Pages:1-21
Document types:article
Level:advanced