Team Recommendation has always been a challenging aspect in team sports. Such systems aim to recommend a player combination best suited against the opposition players, resulting in an optimal outcome. In this paper, we propose a semi-supervised statistical approach to build a team recommendation system for cricket by modelling players into embeddings. To build these embeddings, we design a qualitative and quantitative rating system which considers the strength of opposition also for evaluating player performance. The embeddings obtained, describes the strengths and weaknesses of the players based on past performances of the player. We also embark on a critical aspect of team composition, which includes the number of batsmen and bowlers in the team. The team composition changes over time, depending on different factors which are tough to predict, so we take this input from the user and use the player embeddings to decide the best possible team combination with the given team composition.
[1]
Vikram Pudi,et al.
Honest Mirror: Quantitative Assessment of Player Performance in an ODI Cricket Match
,
2017,
MLSA@PKDD/ECML.
[2]
Alan Kimber,et al.
A Graphical Display for Comparing Bowlers in Cricket
,
1993
.
[3]
Yehuda Koren,et al.
Advances in Collaborative Filtering
,
2011,
Recommender Systems Handbook.
[4]
Kalyanmoy Deb,et al.
Cricket Team Selection Using Evolutionary Multi-objective Optimization
,
2011,
SEMCCO.
[5]
Gowri Srinivasa,et al.
A team recommendation system and outcome prediction for the game of cricket
,
2018,
Journal of Sports Analytics.
[6]
Sohail Akhtar,et al.
Rating players in test match cricket
,
2015,
J. Oper. Res. Soc..
[7]
Stephen R. Clarke,et al.
Assessing player performance in one-day cricket using dynamic programming
,
1993
.
[8]
Oznur Alkan,et al.
Opportunity Team Builder for Sales Teams
,
2018,
IUI.
[9]
Anand Ramalingam.
Bernoulli runs using ‘book cricket’ to evaluate cricketers
,
2011
.