Daniel P. McGibney McGibney Applied Linear Regression for Business Analytics with Python

Applied Linear Regression for Business Analytics with Python

von Daniel P. McGibney

A Practical Guide Using Ravix with Case Studies

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Beschreibung

This textbook provides a practical, business-focused introduction to regression analysis using Python. It equips readers with the intuition, coding skills, and statistical tools needed to transform raw data into actionable insights. In today’s data-driven economy, where organizations rely on analytics for pricing, marketing, employee retention, and financial forecasting, regression remains a cornerstone method.

The text bridges theory and application by combining clear explanations, step-by-step coding, and real-world business case studies. A distinguishing feature is the introduction of the Ravix package, a regression modeling and visualization framework developed to streamline regression workflows in Python. Ravix simplifies model building, produces clear and interpretable output, and integrates seamlessly with core scientific Python libraries such as NumPy, Pandas, Statsmodels, and Scikit-learn. By reducing coding complexity and emphasizing interpretation, Ravix makes modern regression techniques accessible to students, analysts, and professionals.


This textbook provides a practical, business-focused introduction to regression analysis using Python. It equips readers with the intuition, coding skills, and statistical tools needed to transform raw data into actionable insights. In today’s data-driven economy, where organizations rely on analytics for pricing, marketing, employee retention, and financial forecasting, regression remains a cornerstone method.

The text bridges theory and application by combining clear explanations, step-by-step coding, and real-world business case studies. A distinguishing feature is the introduction of the Ravix package, a regression modeling and visualization framework developed to streamline regression workflows in Python. Ravix simplifies model building, produces clear and interpretable output, and integrates seamlessly with core scientific Python libraries such as NumPy, Pandas, Statsmodels, and Scikit-learn. By reducing coding complexity and emphasizing interpretation, Ravix makes modern regression techniques accessible to students, analysts, and professionals.


Introduces PRegress, a Python package simplifying regression Bridges statistics with coding and real-world business cases Teaches readers to turn raw data into insights for pricing, marketing, and forecasting

Autor*in

Daniel P. McGibney

Themen in »Applied Linear Regression for Business Analytics with Python«

Applied linear regression Business analytics case studies Regression analysis Multiple regression Predictive modeling Regression analysis textbook for MBA and MSBA students Python regression package PRegress for data science Business analytics with Python Regression models Business decision making

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Details

ISBN: 9783032238061
Verlag: Springer International Publishing
Erscheinung: 10.06.2026

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