| Authors | Seyed-Hamid Zahiri,Trasarti Roberto |
| Journal | Big Data |
| Page number | 35-56 |
| Serial number | 7 |
| Volume number | 1 |
| IF | 1.489 |
| Paper Type | Full Paper |
| Published At | 2019 |
| Journal Grade | ISI |
| Journal Type | Typographic |
| Journal Country | Iran, Islamic Republic Of |
| Journal Index | JCR،Scopus |
Abstract
Recently, professional team sport organizations have invested their resources to analyze their own and opponents’ performance. So, developing methods and algorithms for analyzing team sports has become one of
the most popular topics among data scientists. Analyzing football is hard because of its complexity, number
of events in each match, and constant flow of circulation of the ball. Finding roles of players with the purpose
of analyzing the performance of a team or making a meaningful comparison between players is crucial. In this
article, an automatic big data clustering method, based on a swarm intelligence algorithm, is proposed to automatically cluster the data set of players’ performance centers in different matches and extract different
kinds of roles in football. The proposed method created using particle swarm optimization algorithm has two
phases. In the first phase, the algorithm searches the solution space to find the number of clusters and, in
the second phase, it finds the positions of the centroids. To show the effectiveness of the algorithm, it is tested
on six synthetic data sets and its performance is compared with two other conventional clustering methods.
After that, the algorithm is used to find clusters of a data set containing 93,000 objects, which are the centers
of players’ performance in about 4900 matches in different European leagues.
Paper URL