50
This course is an introduction to Bayesian statistics. Section 1 discusses several ways of estimating probabilities.
1 hour, 17 minutes
4
Section 2 reviews ideas of conditional probabilities and introduces Bayes’ theorem and its use in updating beliefs about a proposition, when data are observed, or information becomes available. Section 3 introduces the main ideas of the Bayesian inference process. The prior distribution summarises beliefs about the value of a parameter before data are observed. The likelihood function summarises information about a parameter contained in observed data and the posterior distribution represents what is known about a parameter after the data have been observed.
Course learning outcomes
After studying this course, you should be able to:
- Use relative frequencies to estimate probabilities
- Calculate conditional probabilities
- Calculate posterior probabilities using Bayes’ theorem
- Calculate simple likelihood functions
- Describe the role of the posterior distribution, the likelihood function and the posterior distribution in Bayesian inference about a parameter ÆŸ.
Course Currilcum
- Introduction 00:20:00
- Learning outcomes 00:07:00
- Link to course PDF 00:30:00
- Conclusion 00:20:00