Applied Linear Regression for Business Analytics with Python Applied Linear Regression for Business Analytics with Python
International Series in Operations Research & Management Science

Applied Linear Regression for Business Analytics with Python

A Practical Guide Using Ravix with Case Studies

    • 87,99 €
    • 87,99 €

Descripción editorial

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.

GÉNERO
Negocios y finanzas personales
PUBLICADO
2026
10 de junio
IDIOMA
EN
Inglés
EXTENSIÓN
346
Páginas
EDITORIAL
Springer Nature Switzerland
INFORMACIÓN DEL PROVEEDOR
Springer Science & Business Media LLC
TAMAÑO
48,3
MB
Public Systems Modeling Public Systems Modeling
2022
Quantitative Models for Performance Evaluation and Benchmarking Quantitative Models for Performance Evaluation and Benchmarking
2014
Queues Queues
2013
Handbook on Data Envelopment Analysis Handbook on Data Envelopment Analysis
2011
Emerging Technologies in Supply Chains Emerging Technologies in Supply Chains
2026
Optimizing Supply Chains Through Digital Twins Optimizing Supply Chains Through Digital Twins
2026