Prediction-based evaluation of back-four defense with spatial control in soccer
- URL: http://arxiv.org/abs/2511.06191v1
- Date: Sun, 09 Nov 2025 02:33:11 GMT
- Title: Prediction-based evaluation of back-four defense with spatial control in soccer
- Authors: Soujanya Dash, Kenjiro Ide, Rikuhei Umemoto, Kai Amino, Keisuke Fujii,
- Abstract summary: The study introduces interpretable indicators namely, space control, stretch index, pressure index, and defensive line height.<n>2,413 defensive sequences were analyzed following possession losses by FC Barcelona and Real Madrid.<n>Barcelona's success was characterized by higher spatial control and compact line coordination, whereas Real Madrid exhibited more adaptive but less consistent defensive structures.
- Score: 3.9252515141417756
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Defensive organization is critical in soccer, particularly during negative transitions when teams are most vulnerable. The back-four defensive line plays a decisive role in preventing goal-scoring opportunities, yet its collective coordination remains difficult to quantify. This study introduces interpretable spatio-temporal indicators namely, space control, stretch index, pressure index, and defensive line height (absolute and relative) to evaluate the effectiveness of the back-four during defensive transitions. Using synchronized tracking and event data from the 2023-24 LaLiga season, 2,413 defensive sequences were analyzed following possession losses by FC Barcelona and Real Madrid CF. Two-way ANOVA revealed significant effects of team, outcome, and their interaction for key indicators, with relative line height showing the strongest association with defensive success. Predictive modeling using XGBoost achieved the highest discriminative performance (ROC AUC: 0.724 for Barcelona, 0.698 for Real Madrid), identifying space score and relative line height as dominant predictors. Comparative analysis revealed distinct team-specific defensive behaviors: Barcelona's success was characterized by higher spatial control and compact line coordination, whereas Real Madrid exhibited more adaptive but less consistent defensive structures. These findings demonstrate the tactical and predictive value of interpretable spatial indicators for quantifying collective defensive performance.
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