Keywords and phrases: adaptive boosting, chi-square test, English premier league, football, gradient boosting, linear regression, machine learning, random forests.
Received: August 8, 2022; Accepted: September 15, 2022; Published: November 3, 2022
How to cite this article: Tomilayo P. Iyiola, Hilary I. Okagbue and Oluwole A. Odetunmibi, Use of the first and second halves results to classify the final outcome of English premier league matches, Advances and Applications in Statistics 82 (2022), 53-64. http://dx.doi.org/10.17654/0972361722080
This Open Access Article is Licensed under Creative Commons Attribution 4.0 International License
References:
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