http://lattes.cnpq.br/2521697028293600; NASCIMENTO JUNIOR, Fernando Felix do.
Resumo:
Despite the increasing popularity of electronic sports (eSports), there is still a scarcity of
academic works exploring the playing behavior of teams. Understanding the features that
help to discriminate between successful and unsuccessful teams would help teams improving their strategies, such as determine performance metrics to reach. In this dissertation, we identify and characterize team behavior patterns based on historical matches data from League of Legends, a very popular eSport. By applying methods from data mining, such as machine learning and statistical analysis, we clustered teams’ performance and investigate for each cluster how and to what extent these features have an influence on teams’ success and failure. Some clusters are more likely to have winning teams than others, the results of our study helped to discover the characteristics that are associated with this predisposition and allowed us to define performance metrics of successful and unsuccessful team profiles. At all, we found 7 profiles in which were categorized into four big levels in terms of winning team proportion: Weak, So-So, Good and Top.