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Applied Linear Regression for Business Analytics with R
Details
Applied Linear Regression for Business Analytics with R introduces regression analysis to business students using the R programming language with a focus on illustrating and solving real-time, topical problems. Specifically, this book presents modern and relevant case studies from the business world, along with clear and concise explanations of the theory, intuition, hands-on examples, and the coding required to employ regression modeling. Each chapter includes the mathematical formulation and details of regression analysis and provides in-depth practical analysis using the R programming language.
Provides a variety of in-depth case studies across different business disciplines Offers an intuitive account of linear regression to readers also without advanced mathematical knowledge Engages worked-through examples accompanied by detailed coding; extra data files at www.businessregression.com
Autorentext
Dr. Daniel McGibney is an Assistant Professor of Professional Practice at the University of Miami Herbert Business School, USA. He currently teaches analytics to both graduate and undergraduate students. Over the years, he has taught many analytics and data science classes, ranging from Basic Statistics to Big Data Analytics and Deep Learning. He has taught Applied Linear Regression Analysis to students pursuing their MSBA, MBA, MST, and MAcc. He also actively oversees and mentors graduate capstone projects in Analytics for MSBA students, collaborating with Deloitte, Visa, Carnival, Citi, Experian, and many other companies. Dr. McGibney formerly served as the program director for the Herbert Business School's MSBA degree program. He advised students, oversaw admissions, expanded industry partnerships, and advanced the program curriculum during his tenure as program director.
Inhalt
- Introduction.- 2. Basic Statistics and Functions using R.- 3. Regression Fundamentals.- 4. Simple Linear Regression.- 5. Multiple Regression.- 6. Estimation Intervals and Analysis of Variance.- 7. Predictor Variable Transformations.- 8. Model Diagnostics.- 9. Variable Selection.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783031214790
- Genre Business Encyclopedias
- Sprache Englisch
- Anzahl Seiten 296
- Herausgeber Springer
- Größe H241mm x B160mm x T22mm
- Jahr 2023
- EAN 9783031214790
- Format Fester Einband
- ISBN 303121479X
- Veröffentlichung 03.06.2023
- Titel Applied Linear Regression for Business Analytics with R
- Autor Daniel P. McGibney
- Untertitel A Practical Guide to Data Science with Case Studies
- Gewicht 612g