Bayesian Statistics
Learning Objectives
- Use Bayes’ theorem to calculate simple conditional probabilities.
- Explain what is meant by a prior distribution, a posterior distribution and a conjugate prior distribution.
- Derive the posterior distribution for a parameter in simple cases.
- Explain what is meant by a loss function.
- Use simple loss functions to derive Bayesian estimates of parameters.
- Explain what is meant by the credibility premium formula and describe the role played by the credibility factor.
- Explain the Bayesian approach to credibility theory and use it to derive credibility premiums in simple cases.
- Explain the empirical Bayes approach to credibility theory and use it to derive credibility premiums in simple cases.
- Explain the differences between the two approaches and state the assumptions underlying each of them.
Theory
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Practice