TEACHING LINEAR REGRESSION WITH PYTHON AND EXCEL: METHODS, TOOLS, AND PRACTICAL TASKS
DOI:
https://doi.org/10.17770/etr2025vol3.8556Keywords:
Excel, linear regression, Python, teaching methodsAbstract
This article analyses various approaches to teaching linear regression using Python and Excel. The inductive and deductive methods, as well as problem-based learning, are examined. Examples of using the scikit-learn library or Excel functionalities for building linear regression models are described. Practical tasks are presented to support the understanding of regression analysis concepts.
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Copyright (c) 2025 Neli Kalcheva, Maya Todorova, Ginka Marinova, Firgan Feradov

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