1 / 13

Discrete Probability Distributions (The Poisson and Exponential Distributions)

Discrete Probability Distributions (The Poisson and Exponential Distributions). QSCI 381 – Lecture 15 (Larson and Farber, Sect 4.3). The Poisson Distribution-I.

bevan
Télécharger la présentation

Discrete Probability Distributions (The Poisson and Exponential Distributions)

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. Discrete Probability Distributions (The Poisson and Exponential Distributions) QSCI 381 – Lecture 15 (Larson and Farber, Sect 4.3)

  2. The Poisson Distribution-I • The Poisson distribution is the samplingdistribution.It is used to determine the probability that a specific number of occurrences takes place within a given unit of time or space. A random variable X is Poisson distributed if: • The experiment consists of counting the number of times, x, an event occurs in a given interval (the interval can relate to time, area or volume). • The probability of the event occurring is the same for each interval. • The number of occurrences in one interval is independent of the number of occurrences in other intervals.

  3. The Poisson Distribution-II • Notation: Note that x can be any non-negative integer.

  4. An Example of the Poisson Distribution-I • The mean catch of dolphins per month in the Eastern Tropical Pacific is 3. • What is the probability that the catch will be 4 in a given month? • What is the probability that the catch will be 2 or less in a given month.

  5. An Example of the Poisson Distribution-II • The mean catch of dolphins per month in the Eastern Tropical Pacific is 3. • What is the probability that the catch will be 4 in a given month?

  6. An Example of the Poisson Distribution-III • The mean catch of dolphins per month in the Eastern Tropical Pacific is 3. • What is the probability that the catch will be 4 in a given month? • What is the probability that the catch will be 2 or fewer in a given month? P[X2]=P[X=0]+P[X=1]+P[X=2]=

  7. Modeling Typhoons-I Assuming that typhoons are Poisson distributed, find the mean number of typhoons per year and the probability that there will be three or more in a single year.

  8. Modeling Typhoons-II • Mean number of typhoons: • Probability of x typhoons a year: • The probability of the number of typhoons being at least 3 is 0.015. • Later we will examine methods to determine whether it is reasonable to assume that these data are Poisson distributed.

  9. The Poisson Distribution (Caveats) • The Poisson distribution would seem to be a good distribution to assume for catch data in fisheries. However, fish school. What does this imply regarding the assumptions of the Poisson distribution? • Be clear when using the Poisson distribution what the interval is.

  10. The Poisson Distribution Graphically =2 =5 =8

  11. Summary of Discrete Distributions

  12. Discrete Probability Distributions and EXCEL-I • BINOMDIST(x,n,p,cum) • Evaluates the probability of obtaining x successes from n trials when the probability of a success is p. Set “cum” to True to calculate the cumulative probability that the number of successes is x or fewer. • NEGBINOMDIST(x,s,p) • Evaluates the probability of obtaining the s th success after x failures when the probability of a success is p. Set s=1 for the Geometric distribution.

  13. Discrete Probability Distributions and EXCEL-II • POISSON(x,,cumu) • Evaluates the probability of obtaining x occurrences in an interval when the mean number is . Set “cum” to True to calculate the cumulative probability that the number of occurrences is x or less.

More Related