The Role of Performance Metrics in Estimating Market Values of Footballers in Europe's Top Five Leagues

The transfer economy in football is a multi-billion-dollar industry, where accurate valuation of players is crucial for clubs' financial sustainability and competitive success. This study investigates the role of performance metrics in estimating the market values of football players in Europe&...

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Main Authors: Murat Işık, Mehmet Ali Yalçınkaya
Format: Article
Language:English
Published: Pamukkale University 2024-12-01
Series:Pamukkale Spor Bilimleri Dergisi
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Online Access:https://dergipark.org.tr/en/download/article-file/3954238
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author Murat Işık
Mehmet Ali Yalçınkaya
author_facet Murat Işık
Mehmet Ali Yalçınkaya
author_sort Murat Işık
collection DOAJ
description The transfer economy in football is a multi-billion-dollar industry, where accurate valuation of players is crucial for clubs' financial sustainability and competitive success. This study investigates the role of performance metrics in estimating the market values of football players in Europe's top five leagues (Spain's La Liga, France's Ligue 1, England's Premier League, Italy's Serie A, and Germany's Bundesliga). The study collected 28 performance metrics (e.g., goals, shots per game, assists, and pass success percentage) for 1508 players from the Whoscored platform. Additionally, the players' positions and the leagues they play in were also included as features. These data were combined with market values from the Transfermarkt platform, resulting in a comprehensive dataset. Two main analytical methods were employed: regression and classification. In the regression analysis, seven models (Adaboost, Decision Tree, Gradient Boosting, K Nearest Neighbors, Random Forest, Ridge Regression, and Support Vector Machine) predicted players' market values. The highest accuracy was achieved with the Random Forest algorithm (R-squared: 0.90). In the classification analysis, players' market values were categorized into four classes (low, lower-mid, upper-mid, and high), and their class memberships were predicted based on performance metrics. The CNN algorithm achieved the highest accuracy, with a success rate of 97%. The results indicate that performance metrics significantly contribute to estimating football players' market values, and models based on these metrics can assist clubs in making more informed, data-driven decisions during transfers.
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spelling doaj-art-9e0ba36ff90549689768be804015c6b12025-01-09T12:13:50ZengPamukkale UniversityPamukkale Spor Bilimleri Dergisi1309-03562024-12-0115345548510.54141/psbd.1489554218The Role of Performance Metrics in Estimating Market Values of Footballers in Europe's Top Five LeaguesMurat Işık0https://orcid.org/0000-0003-3200-1609Mehmet Ali Yalçınkaya1https://orcid.org/0000-0002-7320-5643KIRSEHIR AHI EVRAN UNIVERSITYAhi Evran ÜniversitesiThe transfer economy in football is a multi-billion-dollar industry, where accurate valuation of players is crucial for clubs' financial sustainability and competitive success. This study investigates the role of performance metrics in estimating the market values of football players in Europe's top five leagues (Spain's La Liga, France's Ligue 1, England's Premier League, Italy's Serie A, and Germany's Bundesliga). The study collected 28 performance metrics (e.g., goals, shots per game, assists, and pass success percentage) for 1508 players from the Whoscored platform. Additionally, the players' positions and the leagues they play in were also included as features. These data were combined with market values from the Transfermarkt platform, resulting in a comprehensive dataset. Two main analytical methods were employed: regression and classification. In the regression analysis, seven models (Adaboost, Decision Tree, Gradient Boosting, K Nearest Neighbors, Random Forest, Ridge Regression, and Support Vector Machine) predicted players' market values. The highest accuracy was achieved with the Random Forest algorithm (R-squared: 0.90). In the classification analysis, players' market values were categorized into four classes (low, lower-mid, upper-mid, and high), and their class memberships were predicted based on performance metrics. The CNN algorithm achieved the highest accuracy, with a success rate of 97%. The results indicate that performance metrics significantly contribute to estimating football players' market values, and models based on these metrics can assist clubs in making more informed, data-driven decisions during transfers.https://dergipark.org.tr/en/download/article-file/3954238football player valuationperformance metricstransfer market analysismachine learning in sports
spellingShingle Murat Işık
Mehmet Ali Yalçınkaya
The Role of Performance Metrics in Estimating Market Values of Footballers in Europe's Top Five Leagues
Pamukkale Spor Bilimleri Dergisi
football player valuation
performance metrics
transfer market analysis
machine learning in sports
title The Role of Performance Metrics in Estimating Market Values of Footballers in Europe's Top Five Leagues
title_full The Role of Performance Metrics in Estimating Market Values of Footballers in Europe's Top Five Leagues
title_fullStr The Role of Performance Metrics in Estimating Market Values of Footballers in Europe's Top Five Leagues
title_full_unstemmed The Role of Performance Metrics in Estimating Market Values of Footballers in Europe's Top Five Leagues
title_short The Role of Performance Metrics in Estimating Market Values of Footballers in Europe's Top Five Leagues
title_sort role of performance metrics in estimating market values of footballers in europe s top five leagues
topic football player valuation
performance metrics
transfer market analysis
machine learning in sports
url https://dergipark.org.tr/en/download/article-file/3954238
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AT mehmetaliyalcınkaya theroleofperformancemetricsinestimatingmarketvaluesoffootballersineuropestopfiveleagues
AT muratisık roleofperformancemetricsinestimatingmarketvaluesoffootballersineuropestopfiveleagues
AT mehmetaliyalcınkaya roleofperformancemetricsinestimatingmarketvaluesoffootballersineuropestopfiveleagues