목차
Acknowledgements
Foreword
Preface
Part 1. Applied Statistics Analysis
1.1. Fundamentals of Statistics - Overview of Statistics, Terminology, Data
1.2. Descriptive Statistics - A Guide to the Concepts of Descriptive Statistics, Distribution, Central Tendency, Variability
1.3. Bell Curve - A Guide to the Concepts of Bell Curve, Empirical Measure of Central Tendency,
Empirical Measure of Dispersion, Central Limit Theorem, Outlier
1.4. Inferential Statistics - A Guide to the Concepts of Inferential Statistics, Sampling for Inference, Hypothesis Testing
- Supplemental Information 1.1: Understanding Research
1.5. Statistical Model, Part 1 - Identification of the t Test, Independent t Test, Independent t Test
Unequal n Two-Tailed, Paired t Test, Factors Affecting the t Test
1.6. Statistical Model, Part 2 - Identification of ANOVA, Two-Way ANOVA, Comparison of One-Way and Two-Way ANOVA
- Supplemental Information 1.2: Experimental Research
- Supplemental Information 1.3: Quasi-Experimental Research
- Supplemental Information 1.4: Qualitative Research
1.7. Statistical Model, Part 3 - Overview of Correlation, Basic Assumptions about Correlation, Facts about Correlation
1.8. Statistical Model, Part 4 - Overview of Simple Regression, Multiple Regression, Logistic Regression
1.9. Statistical Model, Part 5 - Overview of Chi-Square, Chi-Square in Statistics, Chi-Square Test of Independence
- Supplemental Information 1.5: Writing a Research Paper
1.10. Concluding Remarks
- Reading List 1.1: Applied Statistical (Variance-Based) Research Example with Perceptual Accuracy
- Reading List 1.2: Applied Statistical (Regression-Based) Research Example with Executive Function
Part 2. Applied Time Series Analysis
2.1. Fundamentals of Time Series Analysis - Overview of Time Series, A Guide to Stochastic Concepts (4 ways)
2.2. Probability Theory, Part 1 - System Variables, Relative Frequency, Frequency Based Approaches, Probability State Spaces
2.3. Probability Theory, Part 2 - Random Variables, Distributions and Densities, Various Discrete and Continuous Distributions
2.4. Probability Theory, Part 3 - Empirical Probability, Empirical Probability Densities, Moment and Expectation Values
2.5. Probability Theory, Part 4 - Exponential Probability Density, Information Theory, Maximum Likelihood Estimation
- Supplemental Information 2.1: Theoretical Functions of Various Distributions
- Supplemental Information 2.2: Preliminary Requisites for Stochastic Processes
2.6. Stochastic Processes, Part 1 - Definition and Trajectory, Time-Dependent Moments, Joint Probability
2.7. Stochastic Processes, Part 2 - Empirical Detail of Joint Probability, Stationarity, Markov Property
2.8. Markov Chain Modeling, Part 1 - Markov Chains, Marginal vs. Conditional Probability, Practical Practice
2.9. Markov Chain Modeling, Part 2 - Markov Components, Random Walks and Monte Carlo Simulation, Practical Practice
2.10. Stochastic Iterative Maps, Part 1 - Moving Average Model, Autoregressive Model, Practical Practice
2.11. Stochastic Iterative Maps, Part 2 - Autoregressive Moving Average Model, Function and Simulation, Practical Practice
- Supplemental Information 2.3: Autocorrelation
- Supplemental Information 2.4: Power Spectrum
2.12. Master Equations - Identification, Numerical Simulation for Stochastic Systems, Practical Practice
2.13. Markov Diffusion Processes, Part 1 - Dynamics of Markov Diffusion Processes, Wiener Process, Practical Practice
2.14. Markov Diffusion Processes, Part 2 - The Ornstein-Uhlenbeck Process, (Non)Parametric Analysis, Practical Practice
2.15. Concluding Remarks
- Reading List 2.1: Applied Time Series (Probability-Based) Research Example with Elementary
Coordination
- Reading List 2.2: Applied Time Series (Stochastic) Research Example with Modality Dominance
Part 3. Applied Systems Analysis
3.1. Fundamentals of Systems Analysis - Overview of Systems Analysis, Vectors and Scalars, Vector Operation
3.2. Matrices - A Guide to Concepts, Matrix Applications, Implementing Matrices
- Supplemental Information 3.1: Math Symbols with Code
- Supplemental Information 3.2: Differential, Derivative, and Integral
3.3. Networks, Part 1 - A Guide to Concepts, Network Applications, Network Structures,
Measuring Centralities
3.4. Networks, Part 2 - Practical Aspects of Networks, Simulation of Networks Model
- Supplemental Information 3.3: Modules, Packages, and Libraries in Programming
3.5. Agent-Based Model, Part 1 - A Guide to Concepts, Comparing Agent-Based Model to Other Methods, Implementation
3.6. Agent-Based Model, Part 2 - Practical Aspects of Agent-Based Model, Simulations of Agent-Based Model, Cellular Automata
- Supplemental Information 3.4: High Performance Computing (HPC) via Terminals
3.7. Game Theory, Part 1 - A Guide to Concepts, Famous Games and Payoff Matrices, Nash Equilibrium, Prisoner’s Dilemma
3.8. Game Theory, Part 2 - Practical Aspects of Game Theory, Simulation of Game Theory Model
- Supplemental Information 3.5: Systemic Risk Measurement
3.9. Concluding Remarks
- Reading List 3.1: Applied Systems (Agent-Based Simulation) Research with Behavioral Bias
- Reading List 3.2: Applied Systems (Network-Agent Dynamic) Research with Systemic Risk
References
Appendix 1: Statistical Tables
Appendix 2: Glossary of Terms
Appendix 3: Data File Instructions
Appendix 4: Codebook Instructions
Appendix 5: Tables and Figures
Appendix 6: Index