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A Comprehensive Guide to Bayesian Statistics

Bayesian Inference, Prior & Posterior Distn, Bayesian Interval Estimation, Bayesian Hypothesis Testing & Decision Theory

     
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A Comprehensive Guide to Bayesian Statistics

This Course Includes

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  • icon5 (114 reviews )
  • icon3h 13m
  • iconenglish
  • iconOnline - Self Paced
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  • iconUdemy

About A Comprehensive Guide to Bayesian Statistics

This course is a comprehensive guide to Bayesian Statistics. It includes video explanations along with real life illustrations, examples, numerical problems, take away notes, practice exercise workbooks, quiz, and much more . The course covers the basic theory behind probabilistic and Bayesian modelling, and their applications to common problems in data science, business, and applied sciences. The course is divided into the following sections: Section 1 and 2: These two sections cover the concepts that are crucial to understand the basics of Bayesian Statistics-

An overview on Statistical Inference/Inferential Statistics

Introduction to Bayesian Probability

Frequentist/Classical Inference vs Bayesian Inference

Bayes Theorem and its application in Bayesian Statistics

Real Life Illustrations of Bayesian Statistics

Key concepts of Prior and Posterior Distribution

Types of Prior

Solved numerical problems addressing how to compute the posterior probability distribution for population parameters

Conjugate Prior

Jeffrey's Non-Informative Prior Section 3: This section covers Interval Estimation in Bayesian Statistics:

Confidence Intervals in Frequentist Inference vs Credible Intervals in Bayesian Inference

Interpretation of Confidence Intervals & Credible Intervals

Computing Credible Interval for Posterior Mean Section 4: This section covers Bayesian Hypothesis Testing:

Introduction to Bayes Factor

Interpretation of Bayes Factor

Solved Numerical problems to obtain Bayes factor for two competing hypotheses Section 5: This section caters to Decision Theory in Bayesian Statistics:

Basics of Bayesian Decision Theory with examples

Decision Theory Terminology: State/Parameter Space, Action Space, Decision Rule. Loss Function

Real Life Illustrations of Bayesian Decision Theory

Classification Loss Matrix

Minimizing Expected Loss

Decision making with Frequentist vs Bayesian approach

Types of Loss Functions: Squared Error Loss, Absolute Error Loss, 0-1 Loss

Bayesian Expected Loss

Risk : Frequentist Risk/Risk Function, Bayes Estimate, and Bayes Risk

Admissibility of Decision Rules

Procedures to find Bayes Estimate & Bayes Risk: Normal & Extensive Form of Analysis

Solved numerical problems of computing Bayes Estimate and Bayes Risk for different Loss Functions Section 6: This section includes:

Bayesian's Defense & Critique

Applications of Bayesian Statistics in various fields

Additional Resources

Bonus Lecture and a Quiz At the end of the course, you will have a complete understanding of Bayesian concepts from scratch. You will know how to effectively use Bayesian approach and think probabilistically. Enrolling in this course will make it easier for you to score well in your exams or apply Bayesian approach elsewhere. Complete this course, master the principles, and join the queue of top Statistics students all around the world.

What You Will Learn?

  • An Overview on Statistical Inference .
  • Frequentist vs Bayesian approach to Statistical Inference .
  • Clearly understand Bayes Theorem and its application in Bayesian Statistics .
  • Build a good intuitive understanding of Bayesian Statistics with real life illustrations .
  • Master the key concepts of Prior and Posterior Distribution .
  • Solve exam style numerical problems of computing Posterior Distribution for Population Parameter with different types of Prior .
  • Understand Conjugate Prior and Jeffrey's Prior .
  • Interval Estimation in Bayesian Statistics : Credible Intervals .
  • Distinguish and work with Confidence Intervals and Credible Intervals .
  • Solve problems of computing Credible Interval for Posterior Mean .
  • Bayesian Hypothesis Testing: Bayes Factor .
  • Learn to Interpret Bayes Factor .
  • Solve numerical problems of computing Bayes Factor for two competing hypotheses .
  • Build a solid understanding on Bayesian Decision Theory with examples .
  • Decision Theory Terminology: State/Parameter Space, Decision Rule, Action Space, Loss Function .
  • Minimizing Expected Loss .
  • Real Life Illustrations of Bayesian Decision Theory .
  • Use different Loss Functions: Squared Error Loss, Absolute Error Loss, 0-1 Loss .
  • Decision Making with Frequentist vs Bayesian .
  • Understand Bayesian Expected Loss, Frequentist Risk, and Bayes Risk .
  • Admissibility of Decision Rules .
  • Procedures to find Bayes Estimate & Bayes Risk: Normal & Extensive Form of Analysis .
  • Solve numerical problems of computing Bayes Estimate and Bayes Risk for different Loss Functions .
  • Bayesian's Defense & Critique .
  • Applications of Bayesian Inference in various fields Show moreShow less.