2014
DOI: 10.1080/02640414.2013.853130
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Analysis of football game-related statistics using multivariate techniques

Abstract: The purpose of this study was to explore football game-related statistics during a competition, using principal component and cluster analyses to determine if it is possible to distinguish the winning teams from the drawing and losing ones. We collected the game-related statistics of the group phase matches of the 2006 World Cup and organised them into a matrix. The principal components of the covariance matrix were calculated. The scores of the first and second components were used to represent the new data, … Show more

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Cited by 86 publications
(74 citation statements)
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“…Lago et al [48] were the first authors who used a discriminant analysis to identify differences between winners and losers. Moura et al [51] combined this approach with a factor analysis. They investigated 14 variables and performed a factor analysis.…”
Section: Integrative Discussionmentioning
confidence: 99%
“…Lago et al [48] were the first authors who used a discriminant analysis to identify differences between winners and losers. Moura et al [51] combined this approach with a factor analysis. They investigated 14 variables and performed a factor analysis.…”
Section: Integrative Discussionmentioning
confidence: 99%
“…Ser capaz de reconhecer essas variáveis permitiria os técnicos entender as ações que podem levar ao sucesso ou ao insucesso em uma partida 6 . Estudos prévios buscaram modelar o jogo de futebol com o objetivo de predizer variáveis menos complexas para explicar o jogo usando diferentes técnicas de redução de dimensionalidade como a análise de componente principal 7 , regressão logística [8][9] , analise discriminante 10-12 e teste de comparações de médias 13 .…”
Section: Introductionunclassified
“…For example, Barros, Cunha, Magalhães, and Guimarães (2006) applied PCA to represent and quantify the pitch region used by different football players and, using these analyses, to provide tactical information about the team; and Arruda Moura et al (2013) explored football game-related statistics during football competitions in order to group and distinguish variables related to different game outcomes.…”
Section: Principal Components Analysismentioning
confidence: 99%