A network approach to characterize the teammates interactions on football: a single match analysis

*e aim of this case study was to apply a set of network metrics inorder to characterize the teammates’ cooperation in a football team. *esemetrics were applied in three levels of analysis: i) micro (individual analysis);ii) meso (players’ contribution for the team); and iii) macro (global interactionof the team). One-single case study match was observed and fromsuch procedure were analysed 131 attacking plays. Results from the macroanalysis showed a moderate heterogeneity between teammates, thus suggestingthe emergence of clusters within the team. *e players with highestconnections with their teammates were the right defender, central defenderfrom the left side, defensive mid+elder, right mid+elder and the forwardplayer. Finally, in the micro analysis was observed that right defender, centraldefender, right mid+elder and the forward can be considered the centroidplayers during attacking plays, thus being the most prominent in theattacking building. In sum, the network metrics allowed to characterize theteammates’ interaction during the attacking plays, providing an importantand di

[1]  Gemma Robinson,et al.  A weighted kappa statistic for reliability testing in performance analysis of sport , 2007 .

[2]  E. Salas,et al.  Toward an understanding of team performance and training. , 1992 .

[3]  D. Araújo,et al.  Networks as a novel tool for studying team ball sports as complex social systems. , 2011, Journal of science and medicine in sport.

[4]  M. Turvey,et al.  Information, affordances, and the control of action in sport. , 2009 .

[5]  L. Edelstein-Keshet,et al.  Complexity, pattern, and evolutionary trade-offs in animal aggregation. , 1999, Science.

[6]  J F Gréhaigne,et al.  Dynamic-system analysis of opponent relationships in collective actions in soccer. , 1997, Journal of sports sciences.

[7]  Steve Horvath,et al.  Weighted Network Analysis , 2011 .

[8]  S. Horvath Weighted Network Analysis: Applications in Genomics and Systems Biology , 2011 .

[9]  supFilipe M. Clemente,et al.  An Online Tactical Metrics Applied to Football Game , 2013 .

[10]  Keith Davids,et al.  Science of winning soccer: Emergent pattern-forming dynamics in association football , 2013, Journal of Systems Science and Complexity.

[11]  Torsten Reimer,et al.  Shared and coordinated cognition in competitive and dynamic task environments: An information‐processing perspective for team sports , 2006 .

[12]  Keith Davids,et al.  Sports teams as superorganisms: implications of sociobiological models of behaviour for research and practice in team sports performance analysis. , 2012, Sports medicine.

[13]  C. Sève,et al.  Team Coordination in Basketball: Description of the Cognitive Connections Among Teammates , 2010 .

[14]  Thomas Reilly,et al.  Performance Assessment for Field Sports , 2008 .

[15]  Mike Hughes,et al.  Analysis of passing sequences, shots and goals in soccer , 2005, Journal of sports sciences.

[16]  Micael S. Couceiro,et al.  Measuring Tactical Behaviour Using Technological Metrics: Case Study of a Football Game , 2013 .