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A Critical Comparison of Machine Learning Classifiers to Predict Match Outcomes in the NFL

Ryan Beal,T. Norman,S. Ramchurn

2020 · DOI: 10.2478/ijcss-2020-0009
International Journal of Computer Science in Sport · 9 Citations

TLDR

This paper critically evaluate the performance of nine machine learning classification techniques when applied to the match outcome prediction problem presented by American Football and finds that the best performing algorithms are able to improve one previous published works.

Abstract

Abstract In this paper, we critically evaluate the performance of nine machine learning classification techniques when applied to the match outcome prediction problem presented by American Football. Specifically, we implement and test nine techniques using real-world datasets of 1280 games over 5 seasons from the National Football League (NFL). We test the nine different classifier techniques using a total of 42 features for each team and we find that the best performing algorithms are able to improve one previous published works. The algoriothms achieve an accuracy of between 44.64% for a Guassian Process classifier to 67.53% with a Naïve Bayes classifer. We also test each classifier on a year by year basis and compare our results to those of the bookmakers and other leading academic papers.