2015
DOI: 10.7753/ijcatr0401.1008
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A Hybrid Prediction System for American NFL Results

Abstract: This research work investigates the use of machine learning algorithms (Linear Regression and K-Nearest Neighbour) for NFL games result prediction. Data mining techniques were employed on carefully created features with datasets from NFL games statistics using RapidMiner and Java programming language in the backend. High attribute weights of features were obtained from the Linear Regression Model (LR) which provides a basis for the K-Nearest Neighbour Model (KNN). The result is a hybridized model which shows t… Show more

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Cited by 2 publications
(1 citation statement)
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“…Given that the current study predicts the outcome of a match between any two teams during the March Madness tournament, multiple different learning algorithms are evaluated to find which would produce the best predictive model of college basketball. ANN (Candila & Palazzo, 2020; Thabtah et al, 2019), kNN (Uzoma & Nwachukwu, 2015), logistic regression (Lopez & Matthews, 2015; Wilkens, 2021), random forest (Shen et al, 2016; Wilkens, 2021), and SVM (Wilkens, 2021) were selected to form the base set of the models. All methods employed in this study were implemented using Orange, an open‐source machine learning software that uses common Python open‐source libraries (Demsar et al, 2013).…”
Section: Methodsmentioning
confidence: 99%
“…Given that the current study predicts the outcome of a match between any two teams during the March Madness tournament, multiple different learning algorithms are evaluated to find which would produce the best predictive model of college basketball. ANN (Candila & Palazzo, 2020; Thabtah et al, 2019), kNN (Uzoma & Nwachukwu, 2015), logistic regression (Lopez & Matthews, 2015; Wilkens, 2021), random forest (Shen et al, 2016; Wilkens, 2021), and SVM (Wilkens, 2021) were selected to form the base set of the models. All methods employed in this study were implemented using Orange, an open‐source machine learning software that uses common Python open‐source libraries (Demsar et al, 2013).…”
Section: Methodsmentioning
confidence: 99%