1 / 12

MBA3 Probability distributions and information

MBA3 Probability distributions and information. Fred Wenstøp. Discrete probability distributions. A series of probabilities p i for all possible states of nature S p i =1 A probability distribution can be Theoretical, based on simple but fundamental assumptions Binomial Pascal

wsmart
Download Presentation

MBA3 Probability distributions and information

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. MBA3 Probability distributions and information Fred Wenstøp

  2. Discrete probability distributions • A series of probabilities pi for all possible states of nature Spi =1 • A probability distribution can be • Theoretical, based on simple but fundamental assumptions • Binomial • Pascal • Poisson • Empirical, based on past experience • Subjective, based on beliefs Fred Wenstøp: MBA3

  3. The binomial distribution • How many times will I succeed? • A binomial process: • A series of n independent trials where the outcome each time is either success or failure and a constant probability p for success • The probability of exactly a successes in a binomial process • Excel: • BINOMDIST(a;n;p;0) Fred Wenstøp: MBA3

  4. The Pascal distribution • When will it be my turn? • The probability that it will take n trials to get the first success in a binomial process with probability p. • Example: • How many tosses to get on the board i Ludo? • p = 1/6 • See graph: Fred Wenstøp: MBA3

  5. The Poisson distribution • How often will disasters happen? • The probability of x occurrences of an event in a certain period when the propensity for the event to occur is constant and equal to l per period. • =POISSON(x;l;0) • Example • Norway has about two oil spills per year in coastal waters. The probability that we will have x spills in a certain year is • =POISSON(x;2;0) Fred Wenstøp: MBA3

  6. Empirical or subjective distributions • Based on experience or merely assumed • Example: • Future sales of a consumer good Fred Wenstøp: MBA3

  7. Continuous probability distributions:Probability densities • In many situations, any value among an infinite number can in principle occur • In practice, the number depends on how precisely we measure the differences between them • Future stock price • Future employment rates • Future sales • The probability of a particular value is therefore zero • Instead, we use probability densities, where areas are probabilities • Example: The normal distribution Fred Wenstøp: MBA3

  8. Cumulative distributions • Probability densities can be represented as cumulative distributions which make them easier to handle • The probability of at least x • y = F(x) • F(a) = P(x<a) • Important parameters • Median m, F(m) = 0.5 • Fractiles • The median is the 50% fractile Fred Wenstøp: MBA3

  9. Conditional probabilityThe value of tests • A production process produces defect units with probability 0.1 • If an OK unit is shipped, the reward is 100 • If it is defect, a loss of 160 is incurred • A unit can be reworked at an expense of 40 and becomes OK regardless of previous state • A test with sensitivity 0.7 and specificity 0.8 may be performed before any decision is made • What should you be willing to pay for the test? Production P(OK) = 0.9 P(D) = 0.1 Test P(TD|D) = 0.7 P(TOK|D) = 0.3 P(TOK|OK) = 0.8 P(TD|OK) = 0.2 Fred Wenstøp: MBA3

  10. Probability tree to represent conditional probabilities 0.72 Production P(OK) = 0.9 P(D) = 0.1 Test P(TD|D) = 0.7 P(TOK|D) = 0.3 P(TOK|OK) = 0.8 P(TD|OK) = 0.2 TOK 0.8 TD OK 0.18 0.2 0.9 0.03 D TOK 0.1 0.3 TD 0.7 0.07 Fred Wenstøp: MBA3

  11. 0.72 0.72 TOK OK 0.8 0.96 TD OK D TOK 0.18 0.9 0.2 0.03 0.04 0.03 0.18 D TOK TD OK 0.1 0.72 0.3 TD 0.75 D 0.7 0.28 0.07 0.07 0.25 Transforming a probability tree to a decision oriented tree Fred Wenstøp: MBA3

  12. Decision analysis Rework 60 60 D: 0.1 -160 Ship D: 0.04 OK: 0.9 -160 82.2 100 74 OK: 0.96 89.6 100 Ship Rework 60 82.2 TOK: 0.75 89.6 D: 0.28 -160 Test OK: 0.72 Ship 27.2 100 TD: 0.25 Rework 60 60 Fred Wenstøp: MBA3

More Related