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Autori principali: Wang, Lintao, Xu, Shiwen, Horton, Michael, Gudmundsson, Joachim, Wang, Zhiyong
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2507.10626
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author Wang, Lintao
Xu, Shiwen
Horton, Michael
Gudmundsson, Joachim
Wang, Zhiyong
author_facet Wang, Lintao
Xu, Shiwen
Horton, Michael
Gudmundsson, Joachim
Wang, Zhiyong
contents Predicting soccer match outcomes is a challenging task due to the inherently unpredictable nature of the game and the numerous dynamic factors influencing results. While it conventionally relies on meticulous feature engineering, deep learning techniques have recently shown a great promise in learning effective player and team representations directly for soccer outcome prediction. However, existing methods often overlook the heterogeneous nature of interactions among players and teams, which is crucial for accurately modeling match dynamics. To address this gap, we propose HIGFormer (Heterogeneous Interaction Graph Transformer), a novel graph-augmented transformer-based deep learning model for soccer outcome prediction. HIGFormer introduces a multi-level interaction framework that captures both fine-grained player dynamics and high-level team interactions. Specifically, it comprises (1) a Player Interaction Network, which encodes player performance through heterogeneous interaction graphs, combining local graph convolutions with a global graph-augmented transformer; (2) a Team Interaction Network, which constructs interaction graphs from a team-to-team perspective to model historical match relationships; and (3) a Match Comparison Transformer, which jointly analyzes both team and player-level information to predict match outcomes. Extensive experiments on the WyScout Open Access Dataset, a large-scale real-world soccer dataset, demonstrate that HIGFormer significantly outperforms existing methods in prediction accuracy. Furthermore, we provide valuable insights into leveraging our model for player performance evaluation, offering a new perspective on talent scouting and team strategy analysis.
format Preprint
id arxiv_https___arxiv_org_abs_2507_10626
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Player-Team Heterogeneous Interaction Graph Transformer for Soccer Outcome Prediction
Wang, Lintao
Xu, Shiwen
Horton, Michael
Gudmundsson, Joachim
Wang, Zhiyong
Machine Learning
Artificial Intelligence
Predicting soccer match outcomes is a challenging task due to the inherently unpredictable nature of the game and the numerous dynamic factors influencing results. While it conventionally relies on meticulous feature engineering, deep learning techniques have recently shown a great promise in learning effective player and team representations directly for soccer outcome prediction. However, existing methods often overlook the heterogeneous nature of interactions among players and teams, which is crucial for accurately modeling match dynamics. To address this gap, we propose HIGFormer (Heterogeneous Interaction Graph Transformer), a novel graph-augmented transformer-based deep learning model for soccer outcome prediction. HIGFormer introduces a multi-level interaction framework that captures both fine-grained player dynamics and high-level team interactions. Specifically, it comprises (1) a Player Interaction Network, which encodes player performance through heterogeneous interaction graphs, combining local graph convolutions with a global graph-augmented transformer; (2) a Team Interaction Network, which constructs interaction graphs from a team-to-team perspective to model historical match relationships; and (3) a Match Comparison Transformer, which jointly analyzes both team and player-level information to predict match outcomes. Extensive experiments on the WyScout Open Access Dataset, a large-scale real-world soccer dataset, demonstrate that HIGFormer significantly outperforms existing methods in prediction accuracy. Furthermore, we provide valuable insights into leveraging our model for player performance evaluation, offering a new perspective on talent scouting and team strategy analysis.
title Player-Team Heterogeneous Interaction Graph Transformer for Soccer Outcome Prediction
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2507.10626