Capturing Momentum: Tennis Match Analysis Using Machine Learning and Time Series Theory
- URL: http://arxiv.org/abs/2404.13300v1
- Date: Sat, 20 Apr 2024 07:11:06 GMT
- Title: Capturing Momentum: Tennis Match Analysis Using Machine Learning and Time Series Theory
- Authors: Jingdi Lei, Tianqi Kang, Yuluan Cao, Shiwei Ren,
- Abstract summary: This paper represents an analysis on the momentum of tennis match.
We First use hidden markov models to predict the momentum which is defined as the performance of players.
Then we use Xgboost to prove the significance of momentum.
- Score: 0.9449650062296823
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper represents an analysis on the momentum of tennis match. And due to Generalization performance of it, it can be helpful in constructing a system to predict the result of sports game and analyze the performance of player based on the Technical statistics. We First use hidden markov models to predict the momentum which is defined as the performance of players. Then we use Xgboost to prove the significance of momentum. Finally we use LightGBM to evaluate the performance of our model and use SHAP feature importance ranking and weight analysis to find the key points that affect the performance of players.
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