2021
DOI: 10.1038/s41598-021-90264-w
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Understanding gender differences in professional European football through machine learning interpretability and match actions data

Abstract: 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 e… Show more

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Cited by 25 publications
(11 citation statements)
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References 25 publications
(18 reference statements)
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“…Just input the race date and time, race location, track number and boat type, and that will provide the weather forecast results of the selected moment (including the highest temperature, the lowest temperature, the probability of precipitation, wind speed and direction), as well as the recommended pacing strategy (speed and paddle frequency) for each segment of Q1–Q4. Following the visual way of presenting the methodology in Garnica-Caparrós and Memmert (2021) [ 37 ], the methodology figure workflow is presented in Figure 3 . After more than 10 epoch training, our model can be applied to the actual weather forecast.…”
Section: Resultsmentioning
confidence: 99%
“…Just input the race date and time, race location, track number and boat type, and that will provide the weather forecast results of the selected moment (including the highest temperature, the lowest temperature, the probability of precipitation, wind speed and direction), as well as the recommended pacing strategy (speed and paddle frequency) for each segment of Q1–Q4. Following the visual way of presenting the methodology in Garnica-Caparrós and Memmert (2021) [ 37 ], the methodology figure workflow is presented in Figure 3 . After more than 10 epoch training, our model can be applied to the actual weather forecast.…”
Section: Resultsmentioning
confidence: 99%
“…In addition, most of the data in the comparative studies were from small samples and lower quality sources. With data quality and reliability considered to be highly important in soccer analytics ( 33 ), reputable data collection companies such as StatsBomb and Stats Perform (formerly known as Opta) should be used. StatsBomb, for instance, boasts one of the most extensive public archives of detailed soccer event data that it publicly shares to promote research in the field.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Despite the recent growth of scientific knowledge, the available evidence is still scarce. For this reason, it is not possible to know if everything we know about men’s football performance can be applied to play in women, taking into account the differences in play between the two sexes ( Bradley et al, 2014 ; Casal et al, 2021 ; Garnica-Caparrós and Memmert, 2021 ). Answering this question is considered necessary since it can allow professionals in this sport to apply the knowledge acquired about men’s football to their own sports specialty ( Okholm Kryger et al, 2021 ).…”
Section: Introductionmentioning
confidence: 99%