Bayesian Statistics - A Comprehensive Course

Bayesian Statistics - A Comprehensive Course

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Bayesian statistics syllabus

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1 of 55

Bayesian statistics syllabus

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Bayesian Statistics - A Comprehensive Course

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  1. 1 Bayesian statistics syllabus
  2. 2 Bayesian vs frequentist statistics
  3. 3 Bayesian vs frequentist statistics probability - part 1
  4. 4 Bayesian vs frequentist statistics probability - part 2
  5. 5 What is a probability distribution?
  6. 6 What is a marginal probability?
  7. 7 What is a conditional probability?
  8. 8 Conditional probability : example breast cancer mammogram part 1
  9. 9 Conditional probability : example breast cancer mammogram part 2
  10. 10 Conditional probability - Monty Hall problem
  11. 11 1 - Marginal probability for continuous variables
  12. 12 2 Conditional probability continuous rvs
  13. 13 A derivation of Bayes' rule
  14. 14 4 - Bayes' rule - an intuitive explanation
  15. 15 5 - Bayes' rule in statistics
  16. 16 6 - Bayes' rule in inference - likelihood
  17. 17 7 Bayes' rule in inference the prior and denominator
  18. 18 8 - Bayes' rule in inference - example: the posterior distribution
  19. 19 9 - Bayes' rule in inference - example: forgetting the denominator
  20. 20 10 - Bayes' rule in inference - example: graphical intuition
  21. 21 11 The definition of exchangeability
  22. 22 12 exchangeability and iid
  23. 23 13 exchangeability what is its significance?
  24. 24 14 - Bayes' rule denominator: discrete and continuous
  25. 25 15 Bayes' rule: why likelihood is not a probability
  26. 26 15a - Maximum likelihood estimator - short introduction
  27. 27 16 Sequential Bayes: Data order invariance
  28. 28 17 - Conjugate priors - an introduction
  29. 29 18 - Bernoulli and Binomial distributions - an introduction
  30. 30 19 - Beta distribution - an introduction
  31. 31 20 - Beta conjugate prior to Binomial and Bernoulli likelihoods
  32. 32 21 - Beta conjugate to Binomial and Bernoulli likelihoods - full proof
  33. 33 22 - Beta conjugate to Binomial and Bernoulli likelihoods - full proof 2
  34. 34 23 - Beta conjugate to Binomial and Bernoulli likelihoods - full proof 3
  35. 35 24 - Bayesian inference in practice - posterior distribution: example Disease prevalence
  36. 36 25 - Bayesian inference in practice - Disease prevalence
  37. 37 26 - Prior and posterior predictive distributions - an introduction
  38. 38 27 - Prior predictive distribution: example Disease - 1
  39. 39 27 - Prior predictive distribution: example Disease - 2
  40. 40 29 - Posterior predictive distribution: example Disease
  41. 41 30 - Normal prior and likelihood - known variance
  42. 42 31 - Normal prior conjugate to normal likelihood - proof 1
  43. 43 32 - Normal prior conjugate to normal likelihood - proof 2
  44. 44 33 - Normal prior conjugate to normal likelihood - intuition
  45. 45 34 - Normal prior and likelihood - prior predictive distribution
  46. 46 35 - Normal prior and likelihood - posterior predictive distribution
  47. 47 36 - Population mean test score - normal prior and likelihood
  48. 48 37 - The Poisson distribution - an introduction - 1
  49. 49 38 - The Poisson distribution - an introduction - 2
  50. 50 39 - The gamma distribution - an introduction
  51. 51 40 - Poisson model: crime count example introduction
  52. 52 41 - Proof: Gamma prior is conjugate to Poisson likelihood
  53. 53 42 - Prior predictive distribution for Gamma prior to Poisson likelihood
  54. 54 43 - Prior predictive distribution (a negative binomial) for gamma prior to poisson likelihood 2
  55. 55 44 - Posterior predictive distribution a negative binomial for gamma prior to poisson likelihood

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