2019
DOI: 10.1177/1747954119879350
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Machine learning in men’s professional football: Current applications and future directions for improving attacking play

Abstract: It is common practice amongst coaches and analysts to search for key performance indicators related to attacking play in football. Match analysis in professional football has predominately utilised notational analysis, a statistical summary of events based on video footage, to study the sport and prepare teams for competition. Recent increases in technology have facilitated the dynamic analysis of more complex process variables, giving practitioners the potential to quickly evaluate a match with consideration … Show more

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Cited by 76 publications
(46 citation statements)
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“…The authors in [ 15 ] were exclusively focused on football. They summed up the usage of machine learning in this area and highlighted that possessing even bigger and bigger amounts of data could bring about a revolution in football analytics.…”
Section: Related Work and Existing Solutionsmentioning
confidence: 99%
“…The authors in [ 15 ] were exclusively focused on football. They summed up the usage of machine learning in this area and highlighted that possessing even bigger and bigger amounts of data could bring about a revolution in football analytics.…”
Section: Related Work and Existing Solutionsmentioning
confidence: 99%
“…Technological advancements have led to new possibilities, allowing practitioners the ability to measure KPIs using automatic tracking systems, including videobased motion analysis, Global Positioning System (GPS) units (Carling et al, 2008) or Local Positioning Measurements (LPM) (Frencken et al, 2010). This concurrent technology integrated with data science approaches produces a range of variables enabling practitioners to quickly quantify actions on the pitch and create new KPIs and visualizations in greater detail (Herold et al, 2019;Perin et al, 2018;Yue et al, 2008). By including time and space and/or player interactions, these KPIs enrich event data with context and provide evidencebased information to coaches and analysts (McLean et al, 2017;Memmert and Perl, 2009).…”
Section: Introductionmentioning
confidence: 99%
“…These recent developments-the availability of accurate performance data and the need for a quick detailed tactical analysis-signifies a huge potential for the application of sophisticated machine learning techniques to football data and requires an efficient collaboration of computer-science and domain experts (Herold et al 2019;Goes et al 2020;Rein and Daniel 2016). Many recent scientific investigations aimed to establish new key performance indicator (KPI)-metrics quantifying certain aspects of the game: pass evaluation metrics were examined (Steiner et al 2019;Goes et al 2019), metrics to quantify controlled space were defined (Kim 2004;Fernandez and Bornn 2018;Brefeld et al 2019) and several studies evaluated shot metrics (Lucey et al 2014;Rathke 2017;Fairchild et al 2018;Anzer and Bauer 2021) 4 and goal scoring opportunities through possession values (Link et al 2016;Spearman 2018;Fernandez and Bornn 2018;Decroos et al 2020).…”
Section: Introductionmentioning
confidence: 99%