Probability Bootcamp

Probability Bootcamp

Steve Brunton via YouTube Direct link

The Exponential Distribution: Time Between Poisson Events

19 of 44

19 of 44

The Exponential Distribution: Time Between Poisson Events

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Classroom Contents

Probability Bootcamp

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  1. 1 Probability and Statistics: Overview
  2. 2 Gentle Introduction to Probability: Counting Coin Flips and Dice
  3. 3 Counting Probabilities with Combinatorics and the Factorial
  4. 4 Set Theory in Probability: Sample Spaces and Events
  5. 5 The Birthday Problem in Probability: P(A) = 1 - P(not A)
  6. 6 Quality Control, Non-Destructive Inspection, and the Multinomial Distribution
  7. 7 The Binomial Distribution and the Multinomial Distribution
  8. 8 Conditional Probabilities
  9. 9 The Law of Total Probability
  10. 10 Bayes' Theorem (with Example!)
  11. 11 Bayes' Theorem Example: Drug Testing 🌿
  12. 12 Independence in Probability
  13. 13 Random Variables and Probability Distributions
  14. 14 Bernoulli and Binomial Random Variables
  15. 15 The Normal Distribution: The Limit of Binomial Distribution for Large "n"
  16. 16 The Standard Unit Normal and Probability Computations
  17. 17 The Poisson Distribution: The Rare Event Limit of a Binomial Distribution
  18. 18 The Geometric Distribution: The First Success of a Bernoulli Distribution
  19. 19 The Exponential Distribution: Time Between Poisson Events
  20. 20 The Hazard Rate and Memoryless Property of the Exponential Distribution
  21. 21 The Connection Between the Exponential Distribution and the Poisson Process
  22. 22 The Gamma Distribution
  23. 23 Functions of a Random Variable
  24. 24 Rescaling the Normal Distribution to Mean Zero and Variance One
  25. 25 The Chi Squared Distribution: The Square of the Normal Distribution
  26. 26 Joint Probability Distributions
  27. 27 Joint Probability Distributions: Marginal and Conditional Densities
  28. 28 The Expected Value (Mean) of a Probability Distribution
  29. 29 Properties of the Expected Value
  30. 30 Variance and Standard Deviation
  31. 31 Example of Computing the Expectation and Variance of an Exponential Distribution
  32. 32 Two Examples of Expected Values & Functions: Temperature in C vs F, and the Kinetic Theory of Gases
  33. 33 Markov's Inequality in Probability: First Order Estimates
  34. 34 Chebyshev's Inequality in Probability: Second Order Estimates
  35. 35 The Law of Large Numbers
  36. 36 The Central Limit Theorem
  37. 37 The Moment Generating Function
  38. 38 Example of The Moment Generating Function
  39. 39 The Lebesque Measure in Probability
  40. 40 Additive Property of the Moment Generating Function
  41. 41 Covariance and Correlation in Probability
  42. 42 Covariance and Correlation: Example with Gaussian Distributions
  43. 43 The Tail Sum Formula in Probability
  44. 44 Proof of the Central Limit Theorem

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