Paper Title : Implementation Of Data Mining Association Methods With Apriori Algorithm For Determining The Key Players Of Football Club
ISSN : 2394-2231
Year of Publication : 2020
MLA Style: Ari Zakaria, Arief Wibowo, "Implementation Of Data Mining Association Methods With Apriori Algorithm For Determining The Key Players Of Football Club" Volume 7 - Issue 2 March - April,2020 International Journal of Computer Techniques (IJCT) ,ISSN:2394-2231 , www.ijctjournal.org
APA Style: Ari Zakaria, Arief Wibowo, "Implementation Of Data Mining Association Methods With Apriori Algorithm For Determining The Key Players Of Football Club" Volume 7 - Issue 2 March - April,2020 International Journal of Computer Techniques (IJCT) ,ISSN:2394-2231 , www.ijctjournal.org
Persija (Persatuan Sepak Bola Indonesia Jakarta) is a professional football team that has been legendary in the history of football in Indonesia. The team, which is under the management of PT Persija Jaya Jakarta, has won eleven titles from the main divisions of the Indonesian league. The Persija Football Club has always evolved towards a modern team, although it is often not easy to defend a championship title. In fact, the composition of players and strategy is the primary key of each match that must be won. This study aims to find the rules of association between Persija FC players from matches that have been played. This research was completed using one data mining technique, namely the Apriori Algorithm. The results of the study have shown that there are 26 strong association rules in determining the composition of players to be revealed. Modeling results also show that using apriori algorithm at a minimum support value of 80% and a minimum confidence value of 95%, founded five-six key players. They have the most reliable association rules from the result of a match that ends in a draw or win. The association rules obtained can change according to the learning model of the new data changes that occur. Thus, the learning machine model that has been built always finds new rules in determining the key players for the next match
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Data Mining, Association Rules, Apriori Algorithm, Indonesian Football League, Football Player, Persija Football Club