Understanding gender differences in professional European football through machine learning interpretability and match actions data

被引:0
|
作者
Marc Garnica-Caparrós
Daniel Memmert
机构
[1] German Sport University Cologne,Institute of Training and Computer Science in Sport
来源
Scientific Reports | / 11卷
关键词
D O I
暂无
中图分类号
学科分类号
摘要
After the great success of the Women’s World Cup in 2019, several platforms have started identifying the reasons for gender inequality in European football. Even though these inequalities emerge from a variety of key aspects in the modern sport, we focused on the game and evaluated the main differential features of European male and female football players in match actions data under the assumption of finding significant differences and established patterns between genders. A methodology for unbiased feature extraction and objective analysis is presented based on data integration and machine learning explainability algorithms. Female (n0=1511\documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$$n_0 = 1511$$\end{document}) and male (n1=2703\documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$$n_1 = 2703$$\end{document}) data points were collected from event data and categorized by game period and player position. We set up a supervised classification pipeline to predict the gender of each player by looking at their actions in the game. The comparison methodology did not include any qualitative enrichment or subjective analysis to prevent biased data enhancement or gender-related processing. The pipeline included three representative binary classification models; A logic-based Decision Trees, a probabilistic Logistic Regression and a multilevel perceptron Neural Network. Each model tried to draw the differences between male and female data points, and we extracted the results using machine learning explainability methods to understand the underlying mechanics of the models implemented. The study was able to determine pivotal factors that differentiate each gender performance as well as disseminate unique patterns by gender involving more than one indicator. Data enhancement and critical variables analysis are essential next steps to support this framework and serve as a baseline for further studies and training developments.
引用
收藏
相关论文
共 26 条
  • [21] Exploring Gender Differences in Computational Thinking Learning in a VR Classroom: Developing Machine Learning Models Using Eye-Tracking Data and Explaining the Models
    Gao, Hong
    Hasenbein, Lisa
    Bozkir, Efe
    Goellner, Richard
    Kasneci, Enkelejda
    INTERNATIONAL JOURNAL OF ARTIFICIAL INTELLIGENCE IN EDUCATION, 2023, 33 (04) : 929 - 954
  • [22] Integrating clinical, genomic, metabolomic and dietary data through machine learning to improve our understanding of their influences on blood pressure regulation
    Louca, Panayiotis
    Tran, Tran Q. B.
    du Toit, Clea
    Christofidou, Paraskevi
    Spector, Tim D.
    Mangino, Massimo
    Suhre, Karsten
    Padmanabhan, Sandosh
    Menni, Cristina
    JOURNAL OF HUMAN HYPERTENSION, 2022, 36 (SUPPL 1) : 1 - 2
  • [23] Understanding cross-data dynamics of individual and social/environmental factors through a public health lens: explainable machine learning approaches
    Jeong, Siwoo
    Yun, Sung Bum
    Park, Soon Yong
    Mun, Sungchul
    FRONTIERS IN PUBLIC HEALTH, 2023, 11
  • [24] Machine learning approach to personalized medicine in breast cancer patients: Development of data-driven, personalized, causal modeling through identification and understanding of optimal treatments for predicting better disease outcomes
    Kaplan, Henry
    Berry, Anna
    Rinn, Kristine
    Ellis, Erin
    Birchfield, George
    Wahl, Tanya
    Liu, Xiaoyu
    Tameishi, Mariko
    Beatty, J. D.
    Dawson, Patricia
    Mehta, Vivek
    Holman, Anna
    Atwood, Mary
    Alexander, Shlece
    Bonham, Candy
    Summers, Lauren
    Khalil, Iya
    Hayete, Boris
    Wuest, Diane
    Zheng, Wei
    Liu, Yuhang
    Wang, Xulong
    Brown, Thomas David
    CANCER RESEARCH, 2018, 78 (13)
  • [25] Identification of population-informative markers from high-density genotyping data through combined feature selection and machine learning algorithms: Application to European autochthonous and cosmopolitan pig breeds
    Schiavo, Giuseppina
    Bertolini, Francesca
    Bovo, Samuele
    Galimberti, Giuliano
    Munoz, Maria
    Bozzi, Riccardo
    Candek-Potokar, Marjeta
    Ovilo, Cristina
    Fontanesi, Luca
    ANIMAL GENETICS, 2024, 55 (02) : 193 - 205
  • [26] Analysis of Clinical Phenotypes through Machine Learning of First-Line H. pylori Treatment in Europe during the Period 2013-2022: Data from the European Registry on H. pylori Management (Hp-EuReg)
    Nyssen, Olga. P.
    Pratesi, Pietro
    Spinola, Miguel. A.
    Jonaitis, Laimas
    Perez-Aisa, Angeles
    Vaira, Dino
    Saracino, Ilaria Maria
    Pavoni, Matteo
    Fiorini, Giulia
    Tepes, Bojan
    Bordin, Dmitry. S.
    Voynovan, Irina
    Lanas, Angel
    Martinez-Dominguez, Samuel. J.
    Alfaro, Enrique
    Bujanda, Luis
    Pabon-Carrasco, Manuel
    Hernandez, Luis
    Gasbarrini, Antonio
    Kupcinskas, Juozas
    Lerang, Frode
    Smith, Sinead. M.
    Gridnyev, Oleksiy
    Leja, Marcis
    Rokkas, Theodore
    Marcos-Pinto, Ricardo
    Mestrovic, Antonio
    Marlicz, Wojciech
    Milivojevic, Vladimir
    Simsek, Halis
    Kunovsky, Lumir
    Papp, Veronika
    Phull, Perminder. S.
    Venerito, Marino
    Boyanova, Lyudmila
    Boltin, Doron
    Niv, Yaron
    Matysiak-Budnik, Tamara
    Doulberis, Michael
    Dobru, Daniela
    Lamy, Vincent
    Capelle, Lisette. G.
    Trpchevska, Emilijia Nikolovska
    Moreira, Leticia
    Cano-Catalia, Anna
    Parra, Pablo
    Megraud, Francis
    O'Morain, Colm
    Ortega, Guillermo. J.
    Gisbert, Javier. P.
    ANTIBIOTICS-BASEL, 2023, 12 (09):