Title of article :
A Bayesian approach for major European football league match prediction
Author/Authors :
Razali, Nazim Faculty of Computer Science and Information Technology - Universiti Tun Hussein Onn Malaysia, Malaysia , Mustapha, Aida Faculty of Applied Sciences and Technology - Universiti Tun Hussein Onn Malaysia, Malaysia , Mustapha, Norwati Faculty of Computer Science and Information Technology - Universiti Putra Malaysia, Malaysia , Clemente, Filipe M School of Sport and Leisure - Viana do Castelo Polytechnic Institute, Portugal
Abstract :
This paper presents a Bayesian Approach for Major European Football League match prediction. In
this study, four variants of Bayesian approaches are investigated to observe the impact of different
structural learning algorithms within the family of Bayesian Network which are Naive Bayes (NB),
Tree Augmented Naive Bayes (TAN) and two General Bayesian Networks (GBN); K2 algorithm with
BDeu scoring function (GBN-K2) and Hill Climbing algorithm with MDL scoring function (GBNHC).
The predictive performance of all Bayesian approaches is evaluated and compared based on
football match results from five major European Football League consisting of three complete seasons
of 1,140 matches. The results showed that GBN-HC gained 92.01% of accuracy while GBN-K2 and
TAN produced comparable results with 91.86% and 91.94% accuracy, respectively. The lowest result
was produced by NB, with only 72.78% accuracy. The results suggest that TAN requires further
exploration in football prediction with its ability to cater the minimal dependency among attributes
in a small-sized dataset.
Keywords :
Football , Bayesian networks , Naive bayes , Tree augmented naive bayes and General bayesian networks
Journal title :
International Journal of Nonlinear Analysis and Applications