Time-Varying Home Field Advantage in Football: Learning from a Non-Stationary Causal Process
Time-Varying Home Field Advantage in Football: Learning from a Non-Stationary Causal Process
In sports analytics, home field advantage is a robust phenomenon where the home team wins more games than the away team. However, discovering the causal factors behind home field advantage presents unique challenges due to the non-stationary, time-varying environment of sports matches. In response, we propose a novel causal discovery method, DYnamic Non-stAtionary local M-estimatOrs (DYNAMO), to learn the time-varying causal structures of home field advantage. DYNAMO offers flexibility by integrating various loss functions, making it practical for learning linear and non-linear causal structures from a general class of non-stationary causal processes. By leveraging local information, we provide theoretical guarantees for the identifiability and estimation consistency of non-stationary causal structures without imposing additional assumptions. Simulation studies validate the efficacy of DYNAMO in recovering time-varying causal structures. We apply our method to high-resolution event data from the 2020-2021 and 2021-2022 English Premier League seasons, during which the former season had no audience presence. Our results reveal intriguing, time-varying, team-specific field advantages influenced by referee bias, which differ significantly with and without crowd support. Furthermore, the time-varying causal structures learned by our method improve goal prediction accuracy compared to existing methods.
Minhao Qi、Hengrui Cai、Guanyu Hu、Weining Shen
体育计算技术、计算机技术
Minhao Qi,Hengrui Cai,Guanyu Hu,Weining Shen.Time-Varying Home Field Advantage in Football: Learning from a Non-Stationary Causal Process[EB/OL].(2025-06-12)[2025-07-22].https://arxiv.org/abs/2506.11399.点此复制
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