References
- Barkell, J. F., O’Connor, D., & Cotton, W. G. (2016). Characteristics of winning men’s and women’s sevens rugby teams throughout the knockout cup stages of international tournaments. International Journal of Performance Analysis in Sport, 16, 633–651.
- Barkell, J. F., O’Connor, D., & Cotton, W. G. (2017a). Effective strategies at the ruck hontest in men’s and women’s World Rugby Sevens Series. International Journal of Sports Science and Coaching. doi:10.1177/1747954117718457.
- Barkell, J. F., O’Connor, D., & Cotton, W. G. (2017b). Perturbation effects in men’s and women’s international sevens. International Journal of Performance Analysis in Sport, 17, 17–33.10.1080/24748668.2017.1303964
- Garganta, J. (2009). Trends of tactical performance analysis in team sports: Bridging the gap between research, training and competition. Revista Portuguesa de Ciências do Desporto, 9, 81–89.10.5628/rpcd
- Higham, D. G., Hopkins, W. G., Pyne, D. B., & Anson, J. M. (2014a). Patterns of play associated with success in international rugby sevens. International Journal of Performance Analysis in Sport, 14, 111–122.
- Higham, D. G., Hopkins, W. G., Pyne, D. B., & Anson, J. M. (2014b). Performance indicators related to points scoring and winning in international rugby sevens. Journal of sports science & medicine, 13, 358–364.
- Hughes, M. (2008). An overview of the development of notational analysis. In M. Hughes & I. M. Franks (Eds.), The essentials of performance analysis an introduction (pp. 51–84). Abingdon: Routeledge.
- Hughes, M., Cooper, S. M., & Nevill, A. (2004). Analysis of notation data: Reliability. In M. Hughes & I. M. Franks (Eds.), Notational Analysis of Sport: Systems for better coaching and performance in sport (2nd ed.). (pp. 189–204). New York, NY: Routledge.
- Hughes, M., & Jones, R. (2005). Patterns of play of successful and unsuccessful teams in men’s 7-a-side rugby union. Paper presented at The Science and Football V: The Proceedings of the Fifth World Congress on Sports Science and Football, Lisbon.
- Kraak, W. J., & Welman, K. E. (2014). Ruck-play as performance indicator during the 2010 Six Nations Championship. International Journal of Sports Science & Coaching, 9, 525–537.10.1260/1747-9541.9.3.525
- Kullback, S., Kupperman, M., & Ku, H. H. (1962). Tests for contingency tables and Markov chains. Technometrics, 4, 573–608.
- McGarry, T. (2008). Probability analysis of notated events in sport contexts. In M. Hughes & I. M. Franks (Eds.), The essentials of performance analyssis: An introduction (pp. 206–225). Abingdon: Routledge.
- McGarry, T., & Franks, I. M. (1994). A stochastic approach to predicting competition squash match-play. Journal of Sports Sciences, 12, 573–584.10.1080/02640419408732208
- McGarry, T., & Franks, I. M. (1995). Modeling competitive squash performance from quantitative analysis. Human Performance, 8, 113–129.10.1080/08959289509539860
- McGarry, T., & Franks, I. M. (1996a). Development, application, and limitation of a stochastic Markov model in explaining championship squash performance. Research Quarterly for Exercise and Sport, 67, 406–415.10.1080/02701367.1996.10607972
- McGarry, T., & Franks, I. M. (1996b). In search of invariant athletic behaviour in sport: An example from championship squash match-play. Journal of Sports Sciences, 14, 445–456.10.1080/02640419608727730
- McKay, J. (2012). Role of unstructured practice in elite rugby. Unpublished MEd special project.
- Meyer, D., Forbes, D., & Clarke, S. R. (2006). Statistical analysis of notational AFL data using continuous time Markov chains. Journal of sports science & medicine, 5, 525–532.
- Motoi, S., Misu, T., Nakada, Y., Yazaki, T., Kobayashi, G., Matsumoto, T., & Yagi, N. (2012). Bayesian event detection for sport games with hidden Markov model. Pattern Analysis and Applications, 15, 59–72.10.1007/s10044-011-0238-6
- Newton, P. K., & Aslam, K. (2009). Monte Carlo tennis: A stochastic Markov Chain model. Journal of Quantitative Analysis in Sports, 5(3), 1–44.
- O’Donoghue, P., & Holmes, L. (2015). Data analysis in sport. New York, London: Routledge, Taylor & Francis Group.
- Passos, P., Araújo, D., Davids, K., Milho, J., & Gouveia, L. (2009). Power law distributions in pattern dynamics of attacker-defender dyads in the team sport of rugby union: Phenomena in a region of self-organized criticality? Emergence : Complexity and Organization, 11, 37–45.
- Passos, P., Araújo, D., Davids, K., & Shuttleworth, R. (2008). Manipulating constraints to train decision making in rugby union. International Journal of Sports Science & Coaching, 3, 125–140.10.1260/174795408784089432
- Percy, D. F. (2015). Strategy selection and outcome prediction in sport using dynamic learning for stochastic processes. Journal of the Operational Research Society, 66, 1840–1849.10.1057/jors.2014.137
- Pfeiffer, M., Hui, Z., & Hohmann, A. (2010). A Markov chain model of elite table tennis competition. International Journal of Sports Science & Coaching, 5, 205–222.10.1260/1747-9541.5.2.205
- RCoreTeam. (2014). R: A language and environment for statistical computing. Vienna: R Foundation for Statistical Computing. Retrieved from https://www.R-project.org/
- Ross, A., Gill, N., & Cronin, J. (2014). Match analysis and player characteristics in rugby sevens. Sports Medicine, 44, 357–367.10.1007/s40279-013-0123-0
- Ross, A., Gill, N., Cronin, J., & Malcata, R. (2016). Defensive and attacking performance indicators in rugby sevens. International Journal of Performance Analysis in Sport, 16, 569–580.
- Spedicato, G. A., Kang, T. S., Yalamanchi, S. B., & Yadav, D. (2016). The Markov chain package: A Package for easily handling discrete Markov chains in R: R package (Version 0.6).
- Wheeler, K. W., Askew, C. D., & Sayers, M. G. L. (2010). Effective attacking strategies in rugby union. European Journal of Sport Science, 10, 237–242.10.1080/17461391.2010.482595
- Wheeler, K. W., Mills, D., Lyons, K., & Harrinton, W. (2013). Effective defensive strategies at the ruck contest in rugby union. International Journal of Sports Science & Coaching, 8, 481–492.10.1260/1747-9541.8.3.481