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There are 4 modules in this course
This course introduces the Bayesian approach to statistics, starting with the concept of probability and moving to the analysis of data. We will learn about the philosophy of the Bayesian approach as well as how to implement it for common types of data. We will compare the Bayesian approach to the more commonly-taught Frequentist approach, and see some of the benefits of the Bayesian approach. In particular, the Bayesian approach allows for better accounting of uncertainty, results that have more intuitive and interpretable meaning, and more explicit statements of assumptions. This course combines lecture videos, computer demonstrations, readings, exercises, and discussion boards to create an active learning experience. For computing, you have the choice of using Microsoft Excel or the open-source, freely available statistical package R, with equivalent content for both options. The lectures provide some of the basic mathematical development as well as explanations of philosophy and interpretation. Completion of this course will give you an understanding of the concepts of the Bayesian approach, understanding the key differences between Bayesian and Frequentist approaches, and the ability to do basic data analyses.
In this module, we review the basics of probability and Bayes’ theorem. In Lesson 1, we introduce the different paradigms or definitions of probability and discuss why probability provides a coherent framework for dealing with uncertainty. In Lesson 2, we review the rules of conditional probability and introduce Bayes’ theorem. Lesson 3 reviews common probability distributions for discrete and continuous random variables.
What's included
8 videos4 readings5 assignments
Show info about module content
8 videos•Total 38 minutes
🎥 Course introduction•4 minutes
🎥 Lesson 1.1 Classical and frequentist probability•6 minutes
🎥 Lesson 1.2 Bayesian probability and coherence•3 minutes
🎥 Lesson 2.1 Conditional probability•4 minutes
🎥 Lesson 2.2 Bayes' theorem•6 minutes
🎥 Lesson 3.1 Bernoulli and binomial distributions•5 minutes
🎥 Lesson 3.2 Uniform distribution•5 minutes
🎥 Lesson 3.3 Exponential and normal distributions•3 minutes
4 readings•Total 36 minutes
📖 Module 1 objectives, assignments, and supplementary materials•3 minutes
📖 Background for Lesson 1•10 minutes
📖 Supplementary material for Lesson 2•3 minutes
📖 Supplementary material for Lesson 3•20 minutes
5 assignments•Total 97 minutes
✍️ Lesson 1: Demonstrate your knowledge•30 minutes
✍️ Lesson 2: Demonstrate your knowledge•12 minutes
✍️ Lesson 3.1: Demonstrate your knowledge•30 minutes
✍️ Lesson 3.2-3.3: Demonstrate your knowledge•10 minutes
✍️ Module 1 Honors •15 minutes
Statistical Inference
Module 2•3 hours to complete
Module details
This module introduces concepts of statistical inference from both frequentist and Bayesian perspectives. Lesson 4 takes the frequentist view, demonstrating maximum likelihood estimation and confidence intervals for binomial data. Lesson 5 introduces the fundamentals of Bayesian inference. Beginning with a binomial likelihood and prior probabilities for simple hypotheses, you will learn how to use Bayes’ theorem to update the prior with data to obtain posterior probabilities. This framework is extended with the continuous version of Bayes theorem to estimate continuous model parameters, and calculate posterior probabilities and credible intervals.
What's included
11 videos5 readings4 assignments
Show info about module content
11 videos•Total 59 minutes
🎥 Lesson 4.1 Confidence intervals•5 minutes
🎥 Lesson 4.2 Likelihood function and maximum likelihood•7 minutes
🎥 Lesson 4.3 Computing the MLE•3 minutes
🎥 Lesson 4.4 Computing the MLE: examples•4 minutes
🎥 Lesson 5.3 Continuous version of Bayes' theorem•4 minutes
🎥 Lesson 5.4 Posterior intervals•8 minutes
5 readings•Total 38 minutes
📖 Module 2 objectives, assignments, and supplementary materials•3 minutes
📖 Background for Lesson 4•10 minutes
📖 Supplementary material for Lesson 4•5 minutes
📖 Background for Lesson 5•10 minutes
📖 Supplementary material for Lesson 5•10 minutes
4 assignments•Total 74 minutes
✍️ Lesson 4: Demonstrate your knowledge•8 minutes
✍️ Lesson 5.1-5.2: Demonstrate your knowledge•30 minutes
✍️ Lesson 5.3-5.4: Demonstrate your knowledge•30 minutes
✍️ Module 2 Honors •6 minutes
Priors and Models for Discrete Data
Module 3•2 hours to complete
Module details
In this module, you will learn methods for selecting prior distributions and building models for discrete data. Lesson 6 introduces prior selection and predictive distributions as a means of evaluating priors. Lesson 7 demonstrates Bayesian analysis of Bernoulli data and introduces the computationally convenient concept of conjugate priors. Lesson 8 builds a conjugate model for Poisson data and discusses strategies for selection of prior hyperparameters.
What's included
9 videos2 readings4 assignments
Show info about module content
9 videos•Total 66 minutes
🎥 Lesson 6.1 Priors and prior predictive distributions•4 minutes
🎥 Lesson 7.1 Bernoulli/binomial likelihood with uniform prior•4 minutes
🎥 Lesson 7.2 Conjugate priors•5 minutes
🎥 Lesson 7.3 Posterior mean and effective sample size•7 minutes
🎥 Data analysis example in R•13 minutes
🎥 Data analysis example in Excel•16 minutes
🎥 Lesson 8.1 Poisson data•8 minutes
2 readings•Total 13 minutes
📖 Module 3 objectives, assignments, and supplementary materials•3 minutes
📖 R and Excel code from example analysis•10 minutes
4 assignments•Total 68 minutes
✍️ Lesson 6: Demonstrate your knowledge•30 minutes
✍️ Lesson 7: Demonstrate your knowledge•15 minutes
✍️ Lesson 8: Demonstrate your knowledge•15 minutes
✍️ Module 3 Honors •8 minutes
Models for Continuous Data
Module 4•3 hours to complete
Module details
This module covers conjugate and objective Bayesian analysis for continuous data. Lesson 9 presents the conjugate model for exponentially distributed data. Lesson 10 discusses models for normally distributed data, which play a central role in statistics. In Lesson 11, we return to prior selection and discuss ‘objective’ or ‘non-informative’ priors. Lesson 12 presents Bayesian linear regression with non-informative priors, which yield results comparable to those of classical regression.
What's included
9 videos5 readings5 assignments
Show info about module content
9 videos•Total 69 minutes
🎥 Lesson 9.1 Exponential data•4 minutes
🎥 Lesson 10.1 Normal likelihood with variance known•4 minutes
🎥 Lesson 10.2 Normal likelihood with variance unknown•3 minutes
🎥 Lesson 11.1 Non-informative priors•8 minutes
🎥 Lesson 11.2 Jeffreys prior•3 minutes
🎥 Linear regression in R (Datasets included in Downloads)•17 minutes
🎥 Linear regression in Excel (Analysis ToolPak)•14 minutes
🎥 Linear regression in Excel (StatPlus by AnalystSoft)•14 minutes
🎥 Conclusion•1 minute
5 readings•Total 33 minutes
📖 Module 4 objectives, assignments, and supplementary materials•3 minutes
📖 Supplementary material for Lesson 10•10 minutes
📖 Supplementary material for Lesson 11•5 minutes
📖 Background for Lesson 12•10 minutes
📖 R and Excel code for regression•5 minutes
5 assignments•Total 63 minutes
✍️ Lesson 9: Demonstrate your knowledge•12 minutes
✍️ Lesson 10: Demonstrate your knowledge•20 minutes
✍️ Lesson 11: Demonstrate your knowledge•10 minutes
✍️ Regression: Demonstrate your knowledge•15 minutes
✍️ Module 4 Honors •6 minutes
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Learner reviews
4.6
3,228 reviews
5 stars
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25.03%
3 stars
5.23%
2 stars
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D
DG
4·
Reviewed on Dec 8, 2019
It was a good course for me to get familiar with the new perspective on statistics. Thank you! Maybe, some extended practice exercise at the end of the course would make it even better)
A
AS
5·
Reviewed on Jul 13, 2020
It's an amazing course, I strongly recommend. It was like a complementary course for the Data Analysis course of my university, giving a wide explanation over bayesian analysis. I'm glad to finish it.
K
KK
5·
Reviewed on Nov 13, 2020
A very good introduction to Bayesian Statistics.Couple of optional R modules of data analysis could have been introduced . However, prerequisites are essential in order to appreciate the course.
You should have exposure to the concepts from a basic statistics class (for example, probability, the Central Limit Theorem, confidence intervals, linear regression) and calculus (integration and differentiation), but it is not expected that you remember how to do all of these items. The course will provide some overview of the statistical concepts, which should be enough to remind you of the necessary details if you've at least seen the concepts previously. On the calculus side, the lectures will include some use of calculus, so it is important that you understand the concept of an integral as finding the area under a curve, or differentiating to find a maximum, but you will not be required to do any integration or differentiation yourself.
What computing resources are expected for this course?
Data analysis is done using computer software. This course provides the option of Excel or R. Equivalent content is provided for both options. A very brief introduction to R is provided for people who have never used it before, but this is not meant to be a course on R. Learners using Excel are expected to already have basic familiarity of Excel.
When will I have access to the lectures and assignments?
To access the course materials, assignments and to earn a Certificate, you will need to purchase the Certificate experience when you enroll in a course. You can try a Free Trial instead, or apply for Financial Aid. The course may offer 'Full Course, No Certificate' instead. This option lets you see all course materials, submit required assessments, and get a final grade. This also means that you will not be able to purchase a Certificate experience.
What will I get if I subscribe to this Specialization?
When you enroll in the course, you get access to all of the courses in the Specialization, and you earn a certificate when you complete the work. Your electronic Certificate will be added to your Accomplishments page - from there, you can print your Certificate or add it to your LinkedIn profile.
Is financial aid available?
Yes. In select learning programs, you can apply for financial aid or a scholarship if you can’t afford the enrollment fee. If fin aid or scholarship is available for your learning program selection, you’ll find a link to apply on the description page.