by Miguel ángel Canela (Author), Inés Alegre (Author), Alberto Ibarra (Author)
About the Author
Miguel ángel Canela is currently an Associate Professor of Managerial Decisions Sciences at IESE Business School. He holds a Ph.D. in Mathematics from the Universitat de Barcelona, Spain.
Inés Alegre is currently an Assistant Professor of Managerial Decision Sciences at IESE Business School. She holds a Ph.D. in Management and a Master of Research in Management from IESE, as well as an Industrial Engineering degree from the Universitat Politècnica de Catalunya, Spain.
Alberto Ibarra is currently an Assistant Professor of Decision Analysis at IPADE Business School. He holds a Ph.D. in Management from IESE Business School, an MBA from IPADE Business School and a Public Accounting degree from Universidad Autónoma de Nuevo León.
About this book
This book focuses on the use of quantitative methods for both business and management, helping readers understand the most relevant quantitative methods for managerial decision-making. Pursuing a highly practical approach, the book reduces the theoretical information to a minimum, so as to give full prominence to the analysis of real business problems.
Each chapter includes a brief theoretical explanation, followed by a real-life managerial case that needs to be solved, which is accompanied by a corresponding Microsoft Excel® dataset. The practical cases and exercises are solved using Excel, and for each problem, the authors provide an Excel file with the complete solution and corresponding calculations, which can be downloaded easily from the book’s website. Further, in an appendix, readers can find solutions to the same problems, but using the R statistical language.
The book represents a valuable reference guide for postgraduate, MBA and executive education students, as it offers a hands-on, practical approach to learning quantitative methods in a managerial context. It will also be of interest to managers looking for a practical and straightforward way to learn about quantitative methods and improve their decision-making processes.
Brief Contents
Part I. Basics
1. Summary Statistics
2. Probability Distributions
Part II. Regression Analysis
3. The Regression Line
4. Multiple Regression
5. Testing Regression Coefficients
6. Dummy Variables
7. Interaction
Part III. Classification
8. Classification Models
9. Out-of-Sample Validation
Part IV. Time Series Data
10. Trend and Seasonality
11. Nonlinear Trends
12. Moving Average Trends
13. Holt-Winters Forecasting
Pages: 144 pages
Publisher: Springer; 1st ed. 2019 edition (September 7, 2019)
Language: English
ISBN-10: 3030175537
ISBN-13: 978-3030175535
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