Presentation is loading. Please wait.

Presentation is loading. Please wait.

MATH408: Probability & Statistics Summer 1999 WEEK 4 Dr. Srinivas R. Chakravarthy Professor of Mathematics and Statistics Kettering University (GMI Engineering.

Similar presentations


Presentation on theme: "MATH408: Probability & Statistics Summer 1999 WEEK 4 Dr. Srinivas R. Chakravarthy Professor of Mathematics and Statistics Kettering University (GMI Engineering."— Presentation transcript:

1 MATH408: Probability & Statistics Summer 1999 WEEK 4 Dr. Srinivas R. Chakravarthy Professor of Mathematics and Statistics Kettering University (GMI Engineering & Management Institute) Flint, MI 48504-4898 Phone: 810.762.7906 Email: schakrav@kettering.edu Homepage: www.kettering.edu/~schakrav

2 Probability Plot Example 3.12

3

4

5

6 PROBABILITY MASS FUNCTION

7 Mean and variance of a discrete RV

8 Example 3.16 Verify that  = 0.4 and  = 0.6

9 BINOMIAL RANDOM VARIABLE defect Good p q n, items are sampled, is fixed P(defect) = p is the same for all independently and randomly chosen X = # of defects out of n sampled

10 BINOMIAL (cont’d)

11

12 Examples

13 POISSON RANDOM VARIABLE Named after Simeon D. Poisson (1781-1840) Originated as an approximation to binomial Used extensively in stochastic modeling Examples include: –Number of phone calls received, number of messages arriving at a sending node, number of radioactive disintegration, number of misprints found a printed page, number of defects found on sheet of processed metal, number of blood cells counts, etc.

14 POISSON (cont’d) If X is Poisson with parameter, then  = and  2 =

15 Graph of Poisson PMF

16 Examples

17 EXPONENTIAL DISTRIBUTION

18

19 MEMORYLESS PROPERTY P(X > x+y / X > x) = P( X > y)  X is exponentially distributed

20 Examples

21 Normal approximation to binomial (with correction factor) Let X follow binomial with parameters n and p. P(X = x) = P( x-0.5 < X < x + 0.5) and so we approximate this with a normal r.v with mean np and variance n p (1-p). GRT: np > 5 and n (1-p) > 5.

22 Normal approximation to Poisson (with correction factor) Let X follow Poisson with parameter. P(X = x) = P( x-0.5 < X < x + 0.5) and so we approximate this with a normal r.v with mean and variance. GRT: > 5.

23 Examples

24 HOME WORK PROBLEMS (use Minitab) Sections: 3.6 through 3.10 51, 54, 55, 58-60, 61-66, 70, 74-77, 79, 81, 83, 87-90, 93, 95, 100-105, 108 Group Assignment: (Due: 4/21/99) Hand in your solutions along with MINITAB output, to Problems 3.51 and 3.54.


Download ppt "MATH408: Probability & Statistics Summer 1999 WEEK 4 Dr. Srinivas R. Chakravarthy Professor of Mathematics and Statistics Kettering University (GMI Engineering."

Similar presentations


Ads by Google