Regression Fundamentals
Daniel P. McGibney
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Daniel P. McGibney: University of Miami, Management Science
Chapter Chapter 3 in Applied Linear Regression for Business Analytics with Python, 2026, pp 49-72 from Springer
Abstract:
Abstract Although data collection has expanded dramatically in recent years, transforming raw information into actionable insight remains a central challenge. Linear regression, developed more than 200 years ago, continues to serve as a cornerstone of statistics and business analytics and lies at the heart of many predictive methods, including modern machine learning models.
Date: 2026
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DOI: 10.1007/978-3-032-23806-1_3
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