Match analysis in Rugby is often used to evaluate and monitor team and individual performances. The game of Rugby is complex and chaotic, with circumstances changing from game to game, even from phase to phase, due to many varying conditions, including the weather, the strategies and tactics, the available personnel or the standing in the competition. This exposure to match volatility must be considered when establishing an observational and analysis system. However, despite the range of detailed analysis there is no obvious structure or progressive evolution to the development of analysis methods and there are still large gaps in the literature especially in the area of Rugby. In fact, empirical research investigating performance in Rugby union has generally been limited to studies exploring teams´ patterns of play or physiological estimates of positional work rates of individual players (Deutsch et al., 2007; Duthie et al., 2005; Hughes and White, 1996). The current trend in video analysis is the development of performance profiles to describe individual or team patterns created from combinations of key performance indicators. This area is of great interest for research and training purposes (Hughes and Bartlett, 2002). In Basketball research, for example, the most discriminant game-related statistics between winning and losing teams have been identified allowing for a better understanding of game determinants (Sampaio and Janeira, 2003; Gómez et al., 2009; Sampaio et al., 2010a; Sampaio et al., 2010b). It was especially interesting to note that the differences between winning and losing teams could be detected even during close scoring matches. This shows that there are distinguishing features of Basketball play that can be identified when teams are evenly matched and are placed in high stress situations. Although the current research and several previous studies have suggested that certain factors contribute to Rugby successful performances (Hughes & White, 1996; O’Donoghue & Williams, 2005) there has been scarce research into the creation of a model of Rugby union performance incorporating all aspects of this team sport. James et al., 2005 developed position specific key performance indicators and performance profiles for ten different Rugby positions. They found intra-positional variability and concluded that there is a need for more than one profile per playing position. Their conclusion was that there are many different playing styles within given positions, all of which can be equally effective for the team. Bracewell, 2003 has quantified the performance of individual Rugby players using multivariate analysis and modified control chart methodology. The results showed that individual Rugby player performance could be explained by contextual ratings on a game-by-game basis from match data using a combination of dimension reduction techniques and an adaptation of multivariate control methodology. In fact, the performance indicators do not necessarily relate directly to individual or team performance outcomes, but they may be related to various game strategies and structures. Van Rooyen et al., 2005 performed a retrospective analysis of IRB statistics and used video analysis of match play to explain the performance of four teams in the 2003 Rugby World Cup. Differences were observed between the four teams in three performance variables: number of penalty kicks and drop goals scored, and percentage possession. Another study has contrasted specifically winning and losing teams in Rugby Union games (Jones et al., 2004a), using twenty league matches from the domestic season of a professional male Rugby union team. Through a computerized behavioural analysis system, twenty-two performance indicators were recorded but only the lineouts won on the oppositions throw and tries scored were able to statistically distinguish winning from losing performances. Other performance indicators were deemed to have practical relevance when distinguishing between winning and losing, these include turnovers won from opposition possession. It was obvious to see winning teams having a greater number of tries than losing teams however, it was interesting to note that winning won a significant amount of possession through stealing the ball from an opposition lineout and at the breakdown situation. Turnovers and stolen lineouts are forms of possession where the opposition’s defense can be caught by surprise. These data suggest that coaches should optimize their training sessions by teaching players how to compete on the opposition’s lineout throw and how to compete effectively in contact situations when the opposition has the ball. No study has contrasted winners and losers using a large sample of high-level games, neither have they controlled for differences in final game score. Therefore, the aim of this study was to analyze a large sample of Rugby matches from northern and southern hemisphere competitions, apply a measure to control for the differences in match scores and to determine if there are any game-related statistics that can discriminate between winning and losing teams. |