We have investigated the five-year performance progression of three academy soccer-team cohorts using a novel application of generalised linear mixed modelling. The analysis revealed substantial effects on performance for an age difference between teams, for game location, and for differences in progression of the Aspire and Opposition teams. There were no clear outcomes for within-season performance progressions. An age difference of one year between opposing teams resulted in a small advantage for the older team. This advantage is obviously due to differences in physical maturity, which is highly correlated with physical performance during puberty (Mujika et al., 2009). Even an age difference of less than a year produces the well-known relative age-effect in performance, which has been demonstrated in soccer (Helsen et al., 2005) amongst many other sports. The same authors suggest that advantage experienced by older players may also reflect psychological maturity and longer exposure to practise and matches, resulting on the development of technical and game intelligence skills. Our estimate of the age effect is likely to be biased low, because games between teams differing in age are more likely to have been set up when the perceived abilities of opposing teams were similar. The estimated small advantage for the team playing at home is consistent with previous studies, in which the home-ground factor represented approximately 40% higher number of goals for the hosting team (Koning et al., 2003; Lee, 1997). The estimated home-ground effect in our study was a little lower, but differences between the two values may be due to the different nature of players (professional vs. youth). The difference between home advantage experienced by the Aspire and Opposition teams was unclear; however, there was an indication of a greater home-ground effect for the opposition. If the true difference between the home advantages is substantial, possible reasons include different climate conditions and different fan support that players experienced in the Qatar venue vs the opposition venues. Although the analysis for progression for each cohort involved ~100 games, the effects on progression were not clear until all three cohorts were included in the analysis-a sample size of ~300 games. The average performance of Aspire cohorts was fairly constant over the five-year period, while the opposition gradually scored less goals. The most obvious explanation for this outcome is an improvement of Aspire performance through development of their defensive ability. A reduction in the opposition’s attacking ability seems a less likely explanation, but this issue could be resolved only by an analysis of scores from games where opposition teams play each other. The assessment of the magnitude of effects in this study depends on the chosen thresholds. The threshold for small was the default 10% change in the score. However to be consistent with previous research on solo athletes, the threshold should be the smallest change that would increase by 10% the chance of winning against an equally match opponent. Further research is needed to establish this change. The large uncertainty on the estimates for the within-season progression prevented any investigation of teams’ abilities. Indeed, the only useful finding here is that there are insufficient games in a season to quantify anything less than large or very large effects. The removal of predictors from a model normally increases the uncertainty in the estimates of effects, but in the present case collinearity among the predictors and limited sample size resulted in better precision with the simpler model. The resulting uncertainty was still unacceptable for any practical application. The unclear effects on progression arise from the fundamentally noisy nature of scores with low counts. Evidently, chance is such a major contributor to soccer outcomes that even an entire season of games is insufficient to explore performance progression. Estimates with better precision would be produced using performance indicators with higher numbers of counts as measures of team performance or effectiveness. Scoring opportunities or score box possessions as defined in Tenga et al., 2010 are two examples of such measures for soccer. Modelled progressions could also be extended to other performance indicators describing the different technical aspects of performance, such as defence, passing, crossing and goal attempts (Oberstone, 2009). Progressions of such performance indicators would then provide evidence and help to explain the progression of game scores. A more detailed match analysis using such performance indicators was beyond of the scope of this study. |