Soft-assembled Multilevel Dynamics of Tactical Behaviors in Soccer

This study aimed to identify the tactical patterns and the timescales of variables during a soccer match, allowing understanding the multilevel organization of tactical behaviors, and to determine the similarity of patterns performed by different groups of teammates during the first and second halves. Positional data from 20 professional male soccer players from the same team were collected using high frequency global positioning systems (5 Hz). Twenty-nine categories of tactical behaviors were determined from eight positioning-derived variables creating multivariate binary (Boolean) time-series matrices. Hierarchical principal component analysis (PCA) was used to identify the multilevel structure of tactical behaviors. The sequential reduction of each set level of principal components revealed a sole principal component as the slowest collective variable, forming the global basin of attraction of tactical patterns during each half of the match. In addition, the mean dwell time of each positioning-derived variable helped to understand the multilevel organization of collective tactical behavior during a soccer match. This approach warrants further investigations to analyze the influence of task constraints on the emergence of tactical behavior. Furthermore, PCA can help coaches to design representative training tasks according to those tactical patterns captured during match competitions and to compare them depending on situational variables.

[1]  Peter H. Richter Information and Self-organization: A Macroscopic Approach to Complex Systems, Hermann Haken. Springer, New York (1988), $59.50 (cloth), 196 pp , 1991 .

[2]  T Frias,et al.  Man-to-man or zone defense? Measuring team dispersion behaviors in small-sided soccer games , 2014 .

[3]  Kevin Shockley,et al.  Interpersonal Synergies , 2010, Front. Psychology.

[4]  S. Marshall,et al.  Progressive statistics for studies in sports medicine and exercise science. , 2009, Medicine and science in sports and exercise.

[5]  R. Hristovski,et al.  Cardiorespiratory Coordination after Training and Detraining. A Principal Component Analysis Approach , 2016, Front. Physiol..

[6]  A. Dellal,et al.  Ball Possession Strategies in Elite Soccer According to the Evolution of the Match-Score: the Influence of Situational Variables , 2010 .

[7]  Ian M Franks,et al.  Sport competition as a dynamical self-organizing system , 2002, Journal of sports sciences.

[8]  Ricardo Machado Leite de Barros,et al.  Representation and analysis of soccer players' actions using principal components , 2006 .

[9]  Tamiki Komatsuzaki,et al.  Anomalous diffusion in folding dynamics of minimalist protein landscape. , 2007, Physical review letters.

[10]  Carl J. Huberty,et al.  Multivariate Analysis of Variance and Covariance , 2000 .

[11]  Tim McGarry,et al.  Space–time coordination dynamics in basketball: Part 2. The interaction between the two teams , 2010, Journal of sports sciences.

[12]  Keith Davids,et al.  Sport Performance as a Domain of Creative Problem Solving for Self- Organizing Performer-Environment Systems , 2012 .

[13]  D. Araújo,et al.  Interpersonal coordination and ball dynamics in futsal (indoor football). , 2011, Human movement science.

[14]  Robert Hristovski,et al.  Creativity and emergence of specific dance movements using instructional constraints. , 2015 .

[15]  Steven Hayward,et al.  Normal modes and essential dynamics. , 2008, Methods in molecular biology.

[16]  Kevin Shockley,et al.  Interpersonal and intrapersonal coordinative modes for joint and single task performance. , 2012, Human movement science.

[17]  Bruno Travassos,et al.  From Players to Teams: Towards a Multi-Level Approach of Game Constraints in Team Sports , 2014 .

[18]  J. Sampaio,et al.  Measuring Tactical Behaviour in Football , 2012, International Journal of Sports Medicine.

[19]  Viktor K. Jirsa,et al.  Spatiotemporal forward solution of the EEG and MEG using network modeling , 2002, IEEE Transactions on Medical Imaging.

[20]  I. Jolliffe Principal Component Analysis , 2002 .

[21]  Keith Davids,et al.  Numerical Relations and Skill Level Constrain Co-Adaptive Behaviors of Agents in Sports Teams , 2014, PloS one.

[22]  Wouter Frencken,et al.  Variability of inter-team distances associated with match events in elite-standard soccer , 2012, Journal of sports sciences.

[23]  Carlos Lago,et al.  The influence of match location, quality of opposition, and match status on possession strategies in professional association football , 2009, Journal of sports sciences.

[24]  Parimal Mukhopadhyay Multivariate Analysis of Variance and Covariance , 2008 .

[25]  M. Turvey,et al.  Phase transitions and critical fluctuations in the visual coordination of rhythmic movements between people. , 1990 .

[26]  James Shippen,et al.  Biomechanical metrics of aesthetic perception in dance , 2015, Experimental Brain Research.

[27]  Wouter Frencken,et al.  Oscillations of centroid position and surface area of soccer teams in small-sided games , 2011 .

[28]  K. Davids,et al.  The ecological dynamics of decision making in sport , 2006 .

[29]  K. Davids,et al.  Constraints-induced emergence of functional novelty in complex neurobiological systems: a basis for creativity in sport. , 2011, Nonlinear dynamics, psychology, and life sciences.

[30]  Erik Rietveld,et al.  Self-organization, free energy minimization, and optimal grip on a field of affordances , 2014, Front. Hum. Neurosci..

[31]  Heng Tao Shen,et al.  Principal Component Analysis , 2009, Encyclopedia of Biometrics.

[32]  P. Krustrup,et al.  Fatigue in soccer: A brief review , 2005, Journal of sports sciences.

[33]  Tang,et al.  Self-Organized Criticality: An Explanation of 1/f Noise , 2011 .

[34]  Júlio Garganta,et al.  Ball recovery patterns as a performance indicator in elite soccer , 2014 .

[35]  Keith Davids,et al.  Capturing complex, non-linear team behaviours during competitive football performance , 2013, Journal of Systems Science and Complexity.

[36]  A. Bovier Metastability: A Potential-Theoretic Approach , 2016 .

[37]  F. Moura,et al.  Analysis of Soccer Players’ Positional Variability During the 2012 UEFA European Championship: A Case Study , 2015, Journal of human kinetics.

[38]  Hugo Folgado,et al.  Competing with Lower Level Opponents Decreases Intra-Team Movement Synchronization and Time-Motion Demands during Pre-Season Soccer Matches , 2014, PloS one.

[39]  G. Ermentrout Dynamic patterns: The self-organization of brain and behavior , 1997 .

[40]  Andreas Daffertshofer,et al.  PCA in studying coordination and variability: a tutorial. , 2004, Clinical biomechanics.

[41]  Jaime Sampaio,et al.  Timescales for exploratory tactical behaviour in football small-sided games , 2016, Journal of sports sciences.

[42]  J. Berge,et al.  Tucker's congruence coefficient as a meaningful index of factor similarity. , 2006 .

[43]  H. Eyring The Activated Complex in Chemical Reactions , 1935 .

[44]  Jaime Sampaio,et al.  Effect of player position on movement behaviour, physical and physiological performances during an 11-a-side football game , 2014, Journal of sports sciences.

[45]  A. Figueiredo,et al.  Measuring Collective Behaviour in Football Teams: Inspecting the impact of each half of the match on ball possession , 2013 .

[46]  Henry Niedzielski Classroom techniques: Foreign languages and English as a second language , 1979 .

[47]  Duane T. Wegener,et al.  Evaluating the use of exploratory factor analysis in psychological research. , 1999 .

[48]  Ramón Huerta,et al.  Transient Cognitive Dynamics, Metastability, and Decision Making , 2008, PLoS Comput. Biol..

[49]  Robert Hristovski,et al.  Creativity in sport and dance: ecological dynamics on a hierarchically soft-assembled perception-action landscape , 2013 .

[50]  R. Badii,et al.  Complexity: Hierarchical Structures and Scaling in Physics , 1997 .

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

[52]  Christopher T. Kello,et al.  The Pervasiveness of 1/f Scaling in Speech Reflects the Metastable Basis of Cognition , 2008, Cogn. Sci..

[53]  Cugliandolo,et al.  Analytical solution of the off-equilibrium dynamics of a long-range spin-glass model. , 1993, Physical review letters.

[54]  Fernando A. Oliveira,et al.  Anomalous Diffusion , 2008, Thinking Probabilistically.

[55]  M. Turvey,et al.  Phase transitions and critical fluctuations in the visual coordination of rhythmic movements between people. , 1990, Journal of experimental psychology. Human perception and performance.

[56]  Ricardo Machado Leite de Barros,et al.  Coordination analysis of players’ distribution in football using cross-correlation and vector coding techniques , 2016, Journal of sports sciences.

[57]  R. S. Mendes,et al.  Statistics of football dynamics , 2007, 0706.1758.

[58]  J. Gibson The Ecological Approach to Visual Perception , 1979 .

[59]  J. Macgregor,et al.  Analysis of multiblock and hierarchical PCA and PLS models , 1998 .

[60]  Stephan P. Swinnen,et al.  Principal Component Analysis of Complex Multijoint Coordinative Movements , 2005, Biological Cybernetics.

[61]  Michael J. Richardson,et al.  Rocking together: dynamics of intentional and unintentional interpersonal coordination. , 2007, Human movement science.

[62]  A. Liwo,et al.  Principal component analysis for protein folding dynamics. , 2009, Journal of molecular biology.

[63]  Pablo Juan Greco,et al.  System of tactical assessment in Soccer (FUT-SAT): Development and preliminary validation , 2011 .

[64]  Keith Davids,et al.  Informational constraints shape emergent functional behaviours during performance of interceptive actions in team sports , 2012 .