Revolutionizing Football Management: A Data-Driven Approach with Random Forest Regressor
Abstract
In the context of football management, depending
solely on subjective evaluations and expert opinions can create
significant challenges in player selection and strategic planning,
potentially resulting in less-than-ideal outcomes. Relying solely
on human judgment can result in errors and inefficiencies,
limiting teams from reaching their full potential. Managers face
challenges in making objective tactical decisions and assessing
player suitability accurately. This highlights the necessity for a
datadriven paradigm shift in football management. Utilizing the
Random Forest Regressor, an advanced analytical method offers
a systematic and fact-based approach to decision-making. The
data for this study was collected exclusively from SOFIFA.com,
specifically focusing on Indian Super League (ISL) players. By
leveraging this method and the comprehensive dataset from
SOFIFA.com, teams can effectively analyze player attributes
and performance data, aiding in the identification of transfer
targets that align with both individual playing styles and team
requirements. This approach not only enhances tactical decision-
making efficiency but also improves overall strategy formulation.
Incorporating this cutting-edge algorithm empowers football
managers to make better decisions, optimize squad composition,
and ultimately elevate team performance on the field.
Keywords:
Player selection, strategic planning, Random Forest Regressor, transfer target, tactical decision-making, Indian Super League (ISL)Published
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