Detailed programme
Detailed programme
1. CONSTRUCTION OF EMPIRICAL MODELS
1.1. Review of basic statistical concepts
1.1.1. Introduction
1.1.2. Point estimation with emphasis on measures of quality
1.1.3. Interval estimation
1.1.4. Tests of hypothesis
1.2. Estimation for complete data
1.2.1. The empirical distribution for complete individual data
1.2.2. The empirical distribution for grouped data
1.3. Estimation for modified data
1.3.1. Means, variance and interval estimation
1.3.2. Kernel density models
1.3.3. Approximations for large data sets
2. PARAMETRIC STATISTICAL METHODS
2.1. Parameter estimation
2.1.1. Methods of moments and percentile matching
2.1.2. Maximum likelihood estimation (individual, grouped, censored and truncated data)
2.1.3. Variance and interval estimation
2.1.4. Non-normal confidence intervals
2.1.5 Bayesian estimation
2.2. Model selection
2.2.1. Introduction
2.2.2. Representation of the data and model
2.2.3. Graphical comparison of the density and distribution functions
2.2.4. Hypothesis tests
2.2.5. Selecting a model
3. SIMULATION AND BOOTSTRAP
3.1. Simulation
3.1.1. Basics of simulation
3.1.2. Examples of simulation in actuarial modeling and finance
3.2. Bootstrap
3.2.1. Introduction to bootstrapping
3.2.2. Bootstrap distributions and standards errors
3.2.3. Bootstrap confidence intervals
3.2.4. Significance testing using permutation tests