Como tem a dinâmica do Futebol de elite evoluído ao longo das últimas três décadas? Aplicação da Teoria da Generabilidade

Soccer dynamics have evolved in response to environmental fac- tors such as match status, type of competition, and competition stage. Ob- servational analysis has shed light into the behavior of players, but few re- searchers have looked at the complexity of the interactions between players and their teams over time. Here we investigated the variables in;uencing the patterns of play and the evolution of tactical and technical behaviors through the last three decades. A retrospective inferential study was applied. SoccerEye observational instrument and recording software were used to observe and record 45 matches and 6791 attacks from European and World Cup semi-<nals and <nals between 1982 and 2010. Publicly available broadcast footage was used for the analysis. Generalizability theory was used as the basis of the statistical analysis. =e patterns of pl ay changed by 31.4% from 1982 to 2010. Team dynamics were in;uenced by match s tatus (28.0%), competition stage (26.5%), and game period (18.1%). During the last decade (2002-2010), teams tended to use less the dribble and running with the ball but to increase long passing rate. During 2002-2010 decade, the frequency of attacks down the wings was higher than in 1982-2000, probably a result of the numerical disadvantage of the attacking team in the area of play. Soccer dynamics have changed towards more teamwork and less individual work over the last 30 years. However, not only time, but also match status, competition stage, and game period have in; uenced the patterns of play.

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