Research Article

Categorization of Qualifying Football Clubs for European Cups with Backpropagating Artificial Neural Networks

Volume: 1 Number: 2 December 29, 2020
EN

Categorization of Qualifying Football Clubs for European Cups with Backpropagating Artificial Neural Networks

Abstract

European cups are the most popular and most profitable football organization in the world. The participation of football clubs in the Champions League and the Europa League is, therefore, a matter of interest to all parts of society. In this respect, this paper uses backpropagating ANNs to understand the capability of categorizing football clubs from Italy, England, and Spain. The sample consists of 10 years of data from Seri A, English Premier League, and La Liga — and teams categorized as qualified and unqualified. As a result of the test, backpropagating ANN classifies the clubs with 92.7 percent accuracy. Our model correctly categorized 40 of 51 qualified teams in our test dataset—that is approximately 78 percent accuracy. However, our backpropagating ANN provides more significant accuracy while predicting unqualified teams, that is approximately 98.5 percent. The probable reason for lower accuracy in the categorization of qualified teams might be underrepresentation in the dataset and lack of variable diversity. The success of ANNs implies that it could be interesting to integrate ANNs into an online betting platform to develop solutions for more complex events by introducing more data. The application of other machine learning approaches will contribute to the literature and provide an opportunity to compare methods.

Keywords

Machine Learning , Backpropagated Artificial Neural Networks , Football

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APA
Yıldız, B. F. (2020). Categorization of Qualifying Football Clubs for European Cups with Backpropagating Artificial Neural Networks. Journal of Soft Computing and Artificial Intelligence, 1(2), 92-99. https://izlik.org/JA57KF98JD
AMA
1.Yıldız BF. Categorization of Qualifying Football Clubs for European Cups with Backpropagating Artificial Neural Networks. JSCAI. 2020;1(2):92-99. https://izlik.org/JA57KF98JD
Chicago
Yıldız, Bünyamin Fuat. 2020. “Categorization of Qualifying Football Clubs for European Cups With Backpropagating Artificial Neural Networks”. Journal of Soft Computing and Artificial Intelligence 1 (2): 92-99. https://izlik.org/JA57KF98JD.
EndNote
Yıldız BF (December 1, 2020) Categorization of Qualifying Football Clubs for European Cups with Backpropagating Artificial Neural Networks. Journal of Soft Computing and Artificial Intelligence 1 2 92–99.
IEEE
[1]B. F. Yıldız, “Categorization of Qualifying Football Clubs for European Cups with Backpropagating Artificial Neural Networks”, JSCAI, vol. 1, no. 2, pp. 92–99, Dec. 2020, [Online]. Available: https://izlik.org/JA57KF98JD
ISNAD
Yıldız, Bünyamin Fuat. “Categorization of Qualifying Football Clubs for European Cups With Backpropagating Artificial Neural Networks”. Journal of Soft Computing and Artificial Intelligence 1/2 (December 1, 2020): 92-99. https://izlik.org/JA57KF98JD.
JAMA
1.Yıldız BF. Categorization of Qualifying Football Clubs for European Cups with Backpropagating Artificial Neural Networks. JSCAI. 2020;1:92–99.
MLA
Yıldız, Bünyamin Fuat. “Categorization of Qualifying Football Clubs for European Cups With Backpropagating Artificial Neural Networks”. Journal of Soft Computing and Artificial Intelligence, vol. 1, no. 2, Dec. 2020, pp. 92-99, https://izlik.org/JA57KF98JD.
Vancouver
1.Bünyamin Fuat Yıldız. Categorization of Qualifying Football Clubs for European Cups with Backpropagating Artificial Neural Networks. JSCAI [Internet]. 2020 Dec. 1;1(2):92-9. Available from: https://izlik.org/JA57KF98JD