1. Introduction
2. Discrete and Continuous Probability Distributions
3. Introduction to R Software
4. Introduction to Python and XLSTAT
5. Basic Statistics
6. Sampling and ANOVA
7. Multivariate Probability Distribution
8. Regression
9. Path Model and Discriminant Analysis
10. PCA and Factor Analysis
11. Structural Equation Modelling
12. Moving Average and Box-Jenkin’s Method
13. Time Series Models Part II
14. Mathematical Optimization Techniques
15. Dynamic Programming, Markov Analysis, and Information Theory
16. Nonlinear Optimization
17. Nature-Based Techniques and Multicriteria Decision Analysis Techniques
18. Artificial Neural Network
19. Learning Rules
20. Descriptive Analytics
21. Decision Tree
22. Other Learning Techniques
23. Simulation
24. Continuous Simulation
25. Simulation Optimization
26. Data Mining and Partitioning
27. Visualization Techniques and Dimension Reduction Techniques
28. Performance Metrics
29. Additional Techniques for Diagnostic Analytics and Prescriptive Analytics
30. Implementation of Different Methodologies with R
Biography
Susmita Bandyopadhyay, Ph.D. (Engineering), M.Tech. (Industrial Engineering and Management), MBA (Systems Management), MCA, B.Tech.-IT Diploma, currently serves as a faculty member in the Department of Business Administration, The University of Burdwan, West Bengal, India. This is her fifth book. The author has published significant number of research articles in reputed international journals and conference proceedings, and holds almost 24 years of teaching, industrial and research experience.






