IPL Prediction Using Machine Learning

Authors

  •   Abhineet Menon Student , Vidyavardhini's College of Engineering and Technology, K.T. Marg, Vartak College Campus Vasai Road, Vasai-Virar, Maharashtra - 401 202
  •   Dhruv Khator Student, Vidyavardhini's College of Engineering and Technology, K.T. Marg, Vartak College Campus Vasai Road, Vasai-Virar, Maharashtra - 401 202
  •   Dhru Prajapati Student, Vidyavardhini's College of Engineering and Technology, K.T. Marg, Vartak College Campus Vasai Road, Vasai-Virar, Maharashtra - 401 202
  •   Archana Ekbote Assistant Professor, Vidyavardhini's College of Engineering and Technology, K.T. Marg, Vartak College Campus Vasai Road, Vasai-Virar, Maharashtra - 401 202

DOI:

https://doi.org/10.17010/ijcs/2022/v7/i3/171267

Keywords:

AdaBoost

, Decision Tree, Indian Premier League, Machine Learning, Naïve Bayes, Logistic Regression, Random Forest Classifier, XGBoost

Publishing Chronology

, Manuscript Received, May 3, 2022, Revised, May 12, Accepted, May 15, 2022. Date of Publication, June 5, 2022.

Abstract

Cricket is amongst the most popular sports in the world. Indian Premier League, more commonly known as IPL is the biggest domestic cricket league in the world. It generates a lot of revenue along with excitement among fans. Many bookers, bettors, and fans like to predict the outcome of a particular match which changes with every ball. This project studies and compares different Machine Learning techniques that can be applied to predict the outcome of a match. Features like team strength and individual strength of a player are also included along with conventional features like toss, home ground, weather and pitch conditions that are taken into account for predicting the result. Machine Learning algorithms such as Naïve Bayes, Random Forest Classifier, Logistic Regression, XGBoost, AdaBoost, and Decision Tree are selected to determine the predictive model with highest accuracy.

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Published

2022-06-01

How to Cite

Menon, A., Khator, D., Prajapati, D., & Ekbote, A. (2022). IPL Prediction Using Machine Learning. Indian Journal of Computer Science, 7(3), 23–29. https://doi.org/10.17010/ijcs/2022/v7/i3/171267

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Section

Articles

References

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