A Multiple Linear Regression Approach For Estimating the Market Value of Football Players in Forward Position

07/03/2018
by   Yunus Kologlu, et al.
0

In this paper, market values of the football players in the forward positions are estimated using multiple linear regression by including the physical and performance factors in 2017-2018 season. Players from 4 major leagues of Europe are examined, and by applying the test for homoscedasticity, a reasonable regression model within 0.10 significance level is built, and the most and the least affecting factors are explained in detail.

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