PDF] Football Match Statistics Prediction using Artificial Neural Networks
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The proposed prediction technique uses a neural network approach to predict the results of football matches using patterns from a number of factors affecting the outcome of a match making use of historical cases of training. The predictions of the outcomes of football (American soccer) matches are widely done using the if-else case based Football Result Expert System (FRES). The proposed prediction technique uses a neural network approach to predict the results of football matches. The neural network detects patterns from a number of factors affecting the outcome of a match making use of historical cases of training. This paper describes the inputs, outputs and compares the results of this kind of a system
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