Logo image
Best strategy to win a match: An analytical approach using hybrid machine learning-clustering-association rule framework
Journal article   Peer reviewed

Best strategy to win a match: An analytical approach using hybrid machine learning-clustering-association rule framework

Praveen Ranjan Srivastava, Prajwal Eachempati, Ajay Kumar, Ashish Kumar Jha and Lalitha Dhamotharan
Annals of Operations Research, Vol.325(1), pp.319-361
01/06/2023

Abstract

Machine learning Sports analytics Neural network Random forest Ensemble gradient boost predictive model Match result prediction clustering Apriori algorithm
One of the significant challenges in the sports industry is identifying the factors influencing match results and their respective weightage. For appropriate recommendations to the team management and the team players, there is a need to predict the match and quantify the important factors for which prediction models need to be developed. The second thing required is identifying talented and emerging players and performing an associative analysis of the important factors to the match-winning outcome. This paper formulates a hybrid machine learning-clustering-associative rules model. This paper also implements the framework for cricket matches, one of the most popular sports globally watched by billions around the world. We predict the match outcome for One day Internationals (ODIs) and Twenty 20 s (T20s) (two formats of Cricket representing fifty over and twenty over versions respectively) adopting state-of-the-art machine learning algorithms, Random Forest, Gradient Boosting, and Deep neural networks. The variable importance is computed using machine-learning techniques and further statistically validated through the regression model. The emerging talented players are identified by clustering. Association rules are generated for determining the best possible winning outcome. The results show that environmental conditions are equally crucial for determining a match result, as are internal quantitative factors. The model is thus helpful for both team management and for players to improve their winning strategy and also for discovering emerging players to form an unbeatable team.
pdf
ANOR_Sport_Analytics
Restricted Access

Metrics

42 Record Views

Details

InCites Highlights

These are selected metrics from InCites Benchmarking & Analytics tool, related to this contribution

Collaboration types
Domestic collaboration
International collaboration
Citation topics
6 Social Sciences
6.122 Economic Theory
6.122.1982 Sports Economics
Web of Science research areas
Operations Research & Management Science
Logo image