231
Views
0
CrossRef citations to date
0
Altmetric
Sports Performance

Modelling women’s team line-ups based on effectiveness and quality

, , , & ORCID Icon
Pages 2176-2186 | Received 12 May 2023, Accepted 02 Feb 2024, Published online: 25 Feb 2024

References

  • Ahmadalinezhad, M., & Makrehchi, M. (2020). Basketball lineup performance prediction using edge-centric multi-view network analysis. Social Network Analysis and Mining, 10, 72. https://doi.org/10.1007/s13278-020-00677-0
  • Amez, S., Neyt, B., Nuffel, F., & Baert, S. (2021). The right man in the right place? Substitutions and goal-scoring in soccer. Psychology of Sport & Exercise, 54, 101898. https://doi.org/10.1016/j.psychsport.2021.101898
  • Bazanov, B., & Rannama, I. (2015). Analysis of the offensive teamwork intensity in elite female basketball. Journal of Human Sport & Exercise, 10(1), 47–51.
  • Campaz, X. M. (2023). Latent structure of situational efficiency variables in elite women’s basketball. Lietuvos sporto universitetas.
  • Cervone, D., D’Amour, A., Bornn, L., & Goldsberry, K. (2016). A multiresolution stochastic process model for predicting basketball possession outcomes. Journal of the American Statistical Association, 111(514), 585–599.
  • Charamis, E., Marmarinos, C., & Ntzoufras, I. (2023). Estimating team possessions in high-level European basketball competition. International Journal of Sports Science & Coaching, 18(1), 220–230.
  • Choi, D.-H., Kim, S.-M., Lee, J.-W., Suh, S.-H., So, W.-Y., & Cochran, J. (2015). Winning factors: How players’ positional offensive and defensive skills affect probability of victory in the Korea Basketball League. International Journal of Sports Science & Coaching, 10(2-3), 453–459. https://doi.org/10.1260/1747-9541.10.2-3.453
  • Clay, C. D., & Clay, E. K. (2014). Player rotation, on-court performance and game outcomes in NCAA Men’s basketball. International Journal of Performance Analysis in Sport, 14(2), 606–619.
  • Cui, Y., Liu, F., Bao, D., Liu, H., Zhang, S., & Gómez, M.-Á. (2019). Key anthropometric and physical determinants for different playing positions during national basketball association draft combine test. Frontiers in Psychology, 10, 2359. https://doi.org/10.3389/fpsyg.2019.02359
  • Delextrat, A., Badiella, A., Saavedra, V., Matthew, D., Schelling, X., & Torres-Ronda, L. (2015). Match activity demands of elite Spanish female basketball players by playing position. International Journal of Performance Analysis in Sport, 15(2), 687–703.
  • Dezman, B., Trninić, S., & Dizdar, D. (2001). Expert model of decision-making system for efficient orientation of basketball players to positions and roles in the game–empirical verification. Collegium Antropologicum, 25(1), 141–152.
  • Dong, R., Lian, B., Zhang, S., Zhang, M., Huang, S. Z., & O’Donoghue, P. (2021). Addressing opposition quality in basketball performance evaluation. International Journal of Performance Analysis in Sport, 21(2), 263–276.
  • Eys, M., Bruner, M. W., & Martin, L. J. (2019). The dynamic group environment in sport and exercise. Psychology of Sport & Exercise, 42, 40–47. https://doi.org/10.1016/j.psychsport.2018.11.001
  • Fewell, J. H., Armbruster, D., Ingraham, J., Petersen, A., & Waters, J. S. (2012). Basketball teams as strategic networks. PLoS One, 7(11), e47445.
  • FIBA.(2022). FIBA.basketball. Retrieved November 23, from 2023, https://www.fiba.basketball/documents.
  • Francis, J., Owen, A., & Peters, D. M. (2019). Making every point count: Identifying the key determinants of team success in elite men’s wheelchair basketball. Frontiers in Psychology, 10, 1431. https://doi.org/10.3389/fpsyg.2019.01431
  • Franks, A., Miller, A., Bornn, L., & Goldsberry, K. (2015). Counterpoints: Advanced defensive metrics for nba basketball. 9th annual MIT Sloan Sports Analytics Conference, Boston, MA.
  • Garcia-Rubio, J., Courel-Ibáñez, J., Gonzalez-Espinosa, S., & Ibáñez, S. J. (2019). Specialization in basketball. Performance profiling analysis according to players’ specific position in formative stages. Revista de Psicologia del Deporte, 28(3), 132–139.
  • Gómez, M. A., Jiménez, S., Navarro, R., Lago-Penas, C., & Sampaio, J. (2011). Effects of coaches’ timeouts on basketball teams’ offensive and defensive performances according to momentary differences in score and game period. European Journal of Sport Science, 11(5), 303–308.
  • Gómez, M.-A., Lago-Peñas, C., & Owen, A. L. (2016). The influence of substitutions on elite soccer teams’ performance. International Journal of Performance Analysis in Sport, 16(2), 553–568.
  • Gómez, M.-Á., Silva, R., Lorenzo, A., Kreivyte, R., & Sampaio, J. (2017). Exploring the effects of substituting basketball players in high-level teams. Journal of Sports Sciences, 35(3), 247–254.
  • Grassetti, L., Bellio, R., DiGaspero, L., Fonseca, G., & Vidoni, P. (2021). An extended regularized adjusted plus-minus analysis for lineup M anagement in basketball using play-by-play data. IMA Journal of Management Mathematics, 32(4), 385–409.
  • Group, S. W. S.(2021). The cohesion coach: How Phil Jackson brought the rebel bulls misc together. https://j-brucestewartphd.medium.com/the-cohesion-coach-how-phil-jackson-brought-the-rebel-bulls-together-5f5f8f05ddb2.
  • Haimes, Y. Y., & Hall, W. A. (1974). Multiobjectives in water resource systems analysis: The surrogate worth trade off method. Water Resources Research, 10(4), 615–624.
  • Harmon, M., Ebrahimi, A., Lucey, P., & Klabjan, D. (2021). Predicting shot making in basketball learnt from adversarial multiagent trajectories. International Journal of Sport and Health Sciences, 15 (11), 973–983.
  • Huang, J. (2022). Technical and tactical analysis of China-Japan Women’s Basketball competition in 2021 Asian Cup of Women’s Basketball. Frontiers in Economics and Management, 3(1), 499–504.
  • Jiménez Martín, A., Suárez-Figueroa, M. C., Mateos Caballero, A., & Gómez-Pérez, A. (2012). Selecting sport ontologies for reuse: A MCDA approach. 75th Meeting of the European Working Groupin Multiple Criteria Decision Aid (MCDA 75), Tarragona, España.
  • Kalman, S., & Bosch, J. (2020). NBA lineup analysis on clustered player tendencies: A new approach to the positions of basketball & modeling lineup efficiency of soft lineup aggregates. 14th Annual MIT Sloan Sports Analytics Conference.
  • Kizielewicz, B., & Dobryakova, L. (2020). MCDA Based approach to sports players’ evaluation under incomplete knowledge. Procedia Computer Science, 176, 3524–3535. https://doi.org/10.1016/j.procs.2020.09.034
  • Köklü, Y., Alemdaroğlu, U., Koçak, F., Erol, A., & Fındıkoğlu, G. (2011). Comparison of chosen physical fitness characteristics of Turkish professional basketball players by division and playing position. Journal of Human Kinetics, 30(2011), 99–106.
  • Kolias, P., Stavropoulos, N., Papadopoulou, A., & Kostakidis, T. (2022). Evaluating basketball player’s rotation line-ups performance via statistical markov chain modelling. International Journal of Sports Science & Coaching, 17(1), 178–188.
  • Kubatko, J., Oliver, D., Pelton, K., & Rosenbaum, D. (2007). A starting point for analyzing basketball statistics. Journal of Quantitative Analysis in Sports, 3(3), 1–22. https://doi.org/10.2202/1559-0410.1070
  • Kvam, P., & Sokol, J. (2006). A Logistic regression/Markov chain model for NCAA Basketball. Naval Research Logistics (NRL), 53 (8), 788–803. https://doi.org/10.1002/nav.20170.
  • Li, L., Simiyu, W. W., Liao, T., & Feng, Y. (2017). Selected demographic characteristics of male basketball players: The case of China and the USA. Journal of Physical Education & Sport, 17(4), 2678–2684.
  • Mahrudinda, M., Supian, S., & Chaerani, D. (2020). Optimization of the best line-up in football using binary integer programming model. International Journal of Global Operations Research, 1(3), 114–122.
  • Martonosi, S. E., Gonzalez, M., & Oshiro, N. (2023). Predicting elite NBA lineups using individual player order statistics.
  • Mohamed, M. N., Zainal, A. A., Mazaulan, M., Radzi, N. A. A. M., & Annur, M. S. S. (2022). The disparity of performance indicators between winning and losing FIBA Women’s basketball world cup 2018 teams. Malaysian Journal of Sport Science and Recreation (MJSSR), 18(2), 193–203.
  • Nakai, M., Tsunoda, Y., Hayashi, H., & Murakoshi, H. (2019). Prediction of basketball free throw shooting by OpenPose. In K. Kojima, M. Sakamoto, K. Mineshima, & K. Satoh (Eds.), New Frontiers in Artificial Intelligence (pp. 435–446). Springer. https://doi.org/10.1007/978-3-030-31605-1_31
  • Noivo, A., Amorim, A. P., Guimaräes, E., & Janeira, M. A. (2022). Ball screen effectiveness in elite Women’sbasketball. Journal of Physical Education & Sport, 22(3), 757–766.
  • Nunes, H., Iglesias, X., & Anguera, M. (2021). Decision making and defensive effectiveness of ball screen in top-level basketball. Revista De Psicología Del Deporte, 30(2), 208–222.
  • Onağ, Z., & Tepeci, M. (2014). Team effectiveness in sport teams: The effects of team cohesion, intra team communication and team norms on team member satisfaction and intent to remain. Procedia-Social and Behavioral Sciences, 150, 420–428. https://doi.org/10.1016/j.sbspro.2014.09.042
  • Rangel, W., Ugrinowitsch, C., & Lamas, L. (2019). Basketball players’ versatility: Assessing the diversity of tactical roles. International Journal of Sports Science & Coaching, 14(4), 552–561.
  • Reina Román, M., García-Rubio, J., Feu, S., & Ibáñez, S. J. (2019). Training and competition load monitoring and analysis of women’s amateur basketball by playing position: Approach study. Frontiers in Psychology, 9, 2689. https://doi.org/10.1016/j.sbspro.2014.09.042
  • Sampaio, J., Ibáñez, S., Ruano, M., Lorenzo Calvo, A., & Ortega, E. (2008). Game location influences basketball players’ performance across playing positions. International Journal of Sport Psychology, 39, 205–216 .
  • Sampaio, J., & Janeira, M. (2003). Statistical analyses of basketball team performance: Understanding teams’ wins and losses according to a different index of ball possessions. International Journal of Performance Analysis in Sport, 3(1), 40–49.
  • Sampaio, J., Janeira, M., Ibáñez, S., & Lorenzo Calvo, A. (2006). Discriminant analysis of game-related statistics between basketball guards, forwards and centres in three professional leagues. European Journal of Sport Science, 6(3), 173–178. https://doi.org/10.1080/17461390600676200
  • Sampaio, J., Lago-Peñas, C., & Gómez, M. (2013). Brief exploration of short and mid-term timeout effects on basketball scoring according to situational variables. European Journal of Sport Science, 13(1), 25–30.
  • Sandholtz, N., Mortensen, J., & Bornn, L. (2020). Measuring spatial allocative efficiency in basketball. Journal of Quantitative Analysis in Sports, 16(4), 271–289.
  • Siegel, S. B., & Daniel. (2019). An examination of timeout value, strategy, and momentum in NCAA division 1 Men’s basketball.
  • Sikka, D., & Devarajan, R. (2022). Basketball win percentage prediction using ensemble-based machine learning. 2022 6th International Conference on Electronics, Communication and Aerospace Technology.
  • Silva, M., Sattler, T., Lacerda, D., & Joao, P. V. (2016). Match analysis according to the performance of team rotations in volleyball. International Journal of Performance Analysis in Sport, 16(3), 1076–1086.
  • Starkes, J., Allard, F., Lindley, S., & O’Reilly, K. (1994). Abilities and Skill in Basketball. International Journal of Sport Psychology, 25(3), 249–265.
  • Stavropoulos, N., Papadopoulou, A., & Kolias, P. (2021). Evaluating the efficiency of off-ball screens in elite basketball teams via second-order Markov Modelling. Mathematics, 9(16), 1991.
  • Štrumbelj, E., & Vračar, P. (2012). Simulating a basketball match with a homogeneous Markov model and forecasting the outcome. International Journal of Forecasting, 28(2), 532–542.
  • Tian, C., De Silva, V., Caine, M., & Swanson, S. (2019). Use of machine learning to automate the identification of basketball strategies using whole team player tracking data. Applied Sciences, 10(1), 24.
  • Trninić, S., & Dizdar, D. (2000). System of the performance evaluation criteria weighted per positions in the Basketball Game. Collegium Antropologicum, 24(1), 217–234.
  • Trost, J. (2022). How to evaluate the financial performance of soccer clubs. Hochschule Rhein-Waal.
  • Wen, D. (2019). Ways to cultivate college students’ teamwork consciousness in college basketball teaching. 4th International Conference on Modern Management, Education Technology and Social Science (MMETSS 2019), Atlantis Press.
  • Zarić, I., Kukić, F., Jovićević, N., Zarić, M., Marković, M., Toskić, L., & Dopsaj, M. (2020). Body height of elite basketball players: Do taller basketball teams rank better at the FIBA World Cup? International Journal of Environmental Research and Public Health, 17(9), 3141.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.