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Chapter 5 Discrete Probability Distribution I. Basic Definitions II. Summary Measures for Discrete Random Variable Expected Value (Mean) Variance and Standard.

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Presentation on theme: "Chapter 5 Discrete Probability Distribution I. Basic Definitions II. Summary Measures for Discrete Random Variable Expected Value (Mean) Variance and Standard."— Presentation transcript:

1 Chapter 5 Discrete Probability Distribution I. Basic Definitions II. Summary Measures for Discrete Random Variable Expected Value (Mean) Variance and Standard Deviation III. Two Popular Discrete Probability Distributions Binomial Distribution Poisson Distribution

2 I. Basic Definitions Random Variable:(p.195) a numerical description of the outcomes of an experiment. Assign values to outcomes of an experiment so the experiment can be represented as a random variable. Example: Test scores: 0  X  100 Toss coin: X = {0, 1} Roll a die: X = {1, 2, 3, 4, 5, 6}

3 I. Basic Definitions Discrete Random Variable: It takes a set of discrete values. Between two possible values some values are impossible. Continuous Random Variable: Between any two possible values for this variable, another value always exists. Example: Roll a die: X = {1, 2, 3, 4, 5, 6}. X is a discrete random variable. Weight of a person selected at random: X is a continuous random variable.

4 I. Basic Definitions Two ways to present a discrete random variable Probability Distribution: (p.198 Table 5.3) a list of all possible values (x) for a random variable and probabilities (f(x)) associated with individual values. Probability Function: probability may be represented as a function of values of the random variable. Example: p.199 Consider the experiment of rolling a die and define the random variable X to be the number coming up. 1. Probability distribution 2. Probability function: f(x) = 1/6.

5 I. Basic Definition Valid Discrete Probability Function 0  f(x)  1 for all f(x) AND  f(x) = 1 Example: p.200 #7 a. The probability distribution is proper because all f(x) meet requirements 0  f(x)  1 and  f(x) = 1. b. P(X=30) = f(30) =.25 c. P(X  25) = f(25) + f(20) =.15 +.20 =.35 d. P(X>30) = f(35) =.40 Homework: p.201 #10, p.201 #14

6 a. Find valid f(200):.1+.2+.3+.25+.1+f(200) = 1, so f(200) =.05 b. P(?) P(X>0) = f(50)+f(100)+f(150)+f(200) =.7 c. P(?) P(X  100) = f(100)+f(150)+f(200) =.4(“at least”) I. Basic Definitions Example: p.202 #14

7 II. Summary Measures for Discrete Random Variable Expected Value (mean): E(X) or  (p.203) E(X) =  xf(x) Variance: Var(X) or  2 (p.203) Var(X) =  (x-  ) 2 f(x) Homework: p.204 #16 Example: Consider the experiment of tossing coin and define X to be 0 if head and 1 if tail. Find the expected value and variance. E(X) =  xf(x) = (0)(.5)+(1)(.5) =.5 Var(X) =  (x-  ) 2 f(x) = (0 -.5) 2 (.5)+(1 -.5) 2 (.5) =.25

8 III. Two Popular Discrete Probability Distributions — Binomial and Poisson Outlines: 1. Probability Distribution: Binomial Distribution: Table 5 (p.989 - p.997). Given n, p, x  f(x). Poisson Distribution: Table 7 (p.999 - p.1004). Given, x  f(x). 2. Applications: Difference between Binomial and Poisson. 3. Applications: criterion to define “success”.

9 III. Two Popular Discrete Probability Distributions 1. Binomial Distributionp.207 Random variable X: x “successes” out of n trials (the number of “successes” in n trials). Three conditions for Binomial distribution: — n independent trials — Two outcomes for each trial: “success” and “failure”. — p: probability of a “success” is a constant from trial to trial.

10 III. Two Popular Discrete Probability Distributions Example: Toss a coin 10 times. We define the “success” as a head and X is the number of heads from 10 trials. Does X have a binomial distribution? Answer: Yes. Follow-up: Why? n? p? Example: Roll a die 10 times. We define the “success” as 5 or more points coming up and X is the number of successes from 10 trials. Does X have a binomial distribution? Answer: Yes. Why? n? p?

11 III. Two Popular Discrete Probability Distributions Summary Measures for Binomial Distribution E(X) = npp.214 Var(X) = np(1-p)p.214 Binomial Probability Distributionp.212 — f(x) = P(X=x) = — Table 5 (p.989-p.997): Given n, p and x, find f(x). Homework: p.216 #26, #27, #29, #30 c, d.

12 Example: p.216 #25 Given: Binomial, n = 2, p =.4 “Success” X: # of successes in 2 trials Answer: b. f(1) = ?(Table 5) f(1) =.48 c. f(0) = ? f(0) =.36 d. f(2) = ?e. P(X  1) = ? f(2) =.16) P(X  1) = f(1) + f(2) =.64 e. E(X) = np =.8 Var(X) = np(1-p) =.48  = ?

13 Example: p.217 #35(Application) Binomial distribution? 1. Is there a criterion for “success” and “failure”? 2. n trials? n=? 3. p=? Given: “Success”: withdraw; n = 20; p =.20 Answer: a. P(X  2) = f(0) + f(1) + f(2) =.0115 +.0576 +.1369 =.2060 b. P(X=4) = f(4) =.2182 c. P(X>3) = 1 - P(X  3) = 1 – [f(0) + f(1) + f(2) + f(3)] = 1 -.0115 -.0576 -.1369 -.2054 =.5886 d. E(X) = np = (20)(.2) = 4.

14 III. Two Popular Discrete Probability Distributions 2. Poisson Distributionp.218 Random variable X: x “occurrences” per unit (the number of “occurrences” in a unit - time, size,...). Example: X = the number of calls per hour. Does X have a Poisson distribution? Answer: Yes. Because “Occurrence”: a call. Unit: an hour. X: the number of “occurrences” (calls) per unit (hour). Reading: p.216 #29, #30, and p.220 #40, p.221 #42 Binomial or Poisson? If Binomial, “success”? p? n? If Poisson, “occurrence”?  ? unit?

15 III. Two Popular Discrete Probability Distributions Summary Measures for Poisson Distribution E(X) =  (  is given) Var(X) =  Poisson Probability Distributionp.219 — f(x) = P(X=x) = — Table 7 (p.999 through p.1004): Given  and x, find f(x). Note: Keep the unit of  consistent with the question. Homework: p.220 #38, p.221 #42, #43

16 Example: p.220 #39 Given: Poisson distribution, because X = the number of occurrences per time period.  = 2 and unit is “a time period”. Note: Unit in questions may be different. Answer: a. f(x) = = b. What is the average number of occurrences in three time periods? (Different unit!)  3 = (3)(  ) = 6.c. f(x) = d. f(2) = P(X=2) =.2707 (Table 7.  =2, x = 2) e. f(6) = P(X=6) =.1606(Table 7.  =6, x = 6)

17 Example: p.221 #43 Given: Poisson distribution, because X = the number of arrivals per time period.  = 10 and unit is “per minute”. Note: Unit in questions may be different. Answer: a. f(0) = 0(Table 7.  =10, x = 0) b. P(X  3) = f(0)+f(1)+f(2)+f(3) (Table 7.  =10, x = ?) = 0 +.0005 +.0023 +.0076 =.0104 c. P(X=0) = f(0) =.0821 (Table 7.  =(10)(15/60)=2.5 for unit of 15 seconds, x = 0) d. P(X  1) = ?(Table 7.  =2.5, x = ?) P(X  1) = f(1) + f(2) + f(3) + … ??? = 1 - P(X<1) = 1 - f(0) = 1 -.0821 =.9179.

18 Chapter 5 Summary Binomial distribution: X = # of “successes” out of n trials Poisson distribution: X = # of “occurrences” per unit For Binomial distribution, E(X)=np, Var(X)=np(1-p) For Poisson distribution, E(X) =  = Var(X) Binomial distribution table: Table 5 Poisson distribution table: Table 7 Poisson Approximation of Binomial distribution If p .05 AND n  20, Poisson distribution (Table 7) can be used to find probability for Binomial distribution. Example: A Binomial distribution with n = 250 and p =.01, f(3) = ? Answer:  = np =(250)(.01)=2.5. From Table 7, f(x)=.2138 Sampling with replacement and without replacement.

19 Example: A bag of 100 marbles contains 10% red ones. Assume that samples are drawn randomly with replacement. a. If a sample of two is drawn, what is the probability that both will be red? b. If a sample of three is drawn, what is the probability that at least one will be red? (“without replacement”: Hypergeometric distribution p.214) Answer: a. n = 2, p =.1, f(2) = ? From Table 5, f(2) =.01 b. n = 3, p =.1, P(X  1) = f(1) + f(2) + f(3) From Table 5, P(X  1) =.2430 +.0270 +.0010 =.271


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