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ROHANA ROHANABINTI BINTIABDUL ABDULHAMID HAMID INSTITUT INSTITUTE FOR E FORENGINEERING ENGINEERINGMATHEMATICS MATHEMATICS(IMK) (IMK) UNIVERSITIMALAYSIA MALAYSIAPERLIS PERLIS UNIVERSITI Free Powerpoint Templates CHAPTER 3 PROBABILITY DISTRIBUTION PROBABILITY DISTRIBUTION • 3.1 Introduction Binomial distribution • 3.2 • 3.3 Poisson distribution Normal distribution • 3.4 3.1 INTRODUCTION  A probability distribution is obtained when probability values are assigned to all possible numerical values of a random variable.  Individual probability values may be denoted by the symbol P(X=x), in the discrete case, which indicates that the random variable can have various specific values.  It may also be denoted by the symbol f(x), in the continuous, which indicates that a mathematical function is involved.  The sum of the probabilities for all the possible numerical events must equal 1.0. 3.2 THE BINOMIAL DISTRIBUTION Definition 3.1 : An experiment in which satisfied the following characteristic is called a binomial experiment: 1. The random experiment consists of n identical trials. 2. Each trial can result in one of two outcomes, which we denote by success, S or failure, F. 3. The trials are independent. 4. The probability of success is constant from trial to trial, we denote the probability of success by p and the probability of failure is equal to (1 - p) = q. Definition 3.2 : A binomial experiment consist of n identical trial with probability of success, p in each trial. The probability of x success in n trials is given by P( X  x)  Cx p q n  x = 0, 1, 2, ......, n x n x Definition 3.3 :The Mean and Variance of X If X ~ B(n,p), then Mean Variance where  n is the total number of trials,  p is the probability of success and  q is the probability of failure. Standard deviation EXAMPLE 3.1 Given that X ~ b(12, 0.4), find a) P ( X  2) b) P ( X  3) c) P ( X  4) d) P (2  X  5) e) E( X ) f) Var( X ) SOLUTIONS a) P ( X  2)  12 C2 (0.4) 2 (0.6)10  0.0639 b) P ( X  3)  12 C3 (0.4)3 (0.6)9  0.1419 c) P ( X  4)  12 C4 (0.4) 4 (0.6)8  0.2128 d) P (2  X  5)  P ( X  2)  P ( X  3)  P ( X  4)  0.0639  0.1419  0.2128 =0.4185 e) E ( X )  np = 12(0.4) =4.8 f) Var ( X )  npq = 12(0.4)(0.6) = 2.88 3.3 The Poisson Distribution Definition 3.4 A random variable X has a Poisson distribution and it is referred to as a Poisson random variable if and only if its probability distribution is given by  e   x P( X  x)  for x  0,1, 2,3,... x!   λ (Greek lambda) is the long run mean number of events for the specific time or space dimension of interest. A random variable X having distribution can also be written as X ~ Po ( ) with E ( X )   and Var ( X )   a Poisson EXAMPLE 3.2 Given that X ~ Po (4.8), find a) P( X  0) b) P( X  9) c) P( X  1) SOLUTIONS a) P ( X  0)  b) P( X  9)  e 4.8 0 4.8 9 e 4.8  0.0082 0! 4.8  0.0307 9! c) 1  P ( X  0)  1  0.0082 = 0.9918 EXAMPLE 3.3 Suppose that the number of errors in a piece of software has a Poisson distribution with parameter   3 . Find a) the probability that a piece of software has no errors. b) the probability that there are three or more errors in piece of software . c) the mean and variance in the number of errors. SOLUTIONS e 3  30 a) P( X  0)  0!  e3  0.050 b)P( X  3)  1  P( X  0)  P( X  1)  P( X  2) e 3  30 e 3  31 e 3  32  1   0! 1! 2! 3 9 3  1  1 e     1 1 1   1  0.423  0.577 3.4 The Normal Distribution Definition 3.5 A continuous random variable X is said to have a normal distribution with parameters  and  2 , where       and  2  0, if the pdf of X is 1 f ( x)  e  2 1  x     2   2   x   If X ~ N (  ,  2 ) then E  X    and V  X    2 The Standard Normal Distribution  The normal distribution with parameters   0 and  2  1 is called a standard normal distribution.  A random variable that has a standard normal distribution is called a standard normal random variable and will be denoted by . Z ~ N (0,1) Standardizing A Normal Distribution If X is a normal random variable with E ( X )   and V ( X )   2 , the random variable X  Z  is a normal random variable with E ( Z )  0 and V ( Z )  1. That is Z is a standard normal random variable. EXAMPLE 3.4 Determine the probability or area for the portions of the Normal distribution described. (using the table) a) P (0  Z  0.45) b) P (2.02  Z  0) c) P ( Z  0.87) d) P (2.1  Z  3.11) e) P (1.5  Z  2.55) SOLUTIONS a) P(0  Z  0.45 )  0.5  P( Z  0.45 )  0.5  0.3264  0.1736 b) P(2.02  Z  0)  0.5  P( Z  2.02 )  0.5  0.0217  0.4783 c) P( Z  0.87 )  1  P( Z  0.87 )  1  0.1922  0.8078 d ) P(2.1  Z  3.11)  1  P( Z  2.1)  P( Z  3.11)  1  0.0179  0.009  0.9731 e) P(1.5  Z  2.55)  P( Z  1.5)  P( Z  2.55)  0.0668  0.0054  0.0614 EXAMPLE 3.5 Determine Z such that a) P( Z  Z )  0.25 b) P( Z  Z )  0.36 c) P( Z  Z )  0.983 d) P( Z  Z )  0.89 SOLUTIONS a) P( Z  0.675)  0.25 b) P( Z  0.355)  0.36 c) P( Z  2.12)  0.983 d) P( Z  1.225)  0.89 EXAMPLE 3.6 Suppose X is a normal distribution N(25,25). Find a) P(24  X  35) b) P( X  20) SOLUTIONS 35  25   24  25 a) P(24  X  35)  P  Z  5 5    P(0.2  Z  2) = P( Z  2)  P( Z  0.2) =P( Z  2)  P( Z  0.2) =0.97725  0.42074  0.55651 20  25   b) P( X  20)  P  Z   5    P( Z  1)  P( Z  1)  0.84134 3.4.1 Normal Approximation of the Binomial Distribution  When the number of observations or trials n in a binomial experiment is relatively large, the normal probability distribution can be used to approximate binomial probabilities. A convenient rule is that such approximation is acceptable when n  30, and both np  5 and nq  5. Definiton 3.6 Given a random variable X ~ b(n, p), if n  30 and both np  5 and nq  5, then X ~ N (np, npq) X  np with Z  npq Continuous Correction Factor  The continuous correction factor needs to be made when a continuous curve is being used to approximate discrete probability distributions. 0.5 is added or subtracted as a continuous correction factor according to the form of the probability statement as c .c follows: a) P( X  x)   P( x  0.5  X  x  0.5) c .c b) P( X  x)   P( X  x  0.5) c .c c) P( X  x)   P( X  x  0.5) c .c d) P( X  x)   P( X  x  0.5) c .c e) P( X  x)   P( X  x  0.5) c.c  continuous correction factor Example 3.7 In a certain country, 45% of registered voters are male. If 300 registered voters from that country are selected at random, find the probability that at least 155 are males. Solutions X is the number of male voters. X ~ b(300, 0.45) c .c P ( X  155)   P ( X  155  0.5)  P( X  154.5) np  300(0.45)  135  5 nq  300(0.55)  165  5  154.5  300(0.45)  154.5  135   PZ    P  Z    300(0.45)(0.55)  74.25     P ( Z  2.26)  0.01191 3.4.1 Normal Approximation of the Poisson Distribution    When the mean  of a Poisson distribution is relatively large, the normal probability distribution can be used to approximate Poisson probabilities. A convenient rule is that such approximation is acceptable when   10. Definition 3.7 Given a random variable X ~ Po ( ), if   10, then X ~ N ( ,  ) with Z  X   Example 3.8 A grocery store has an ATM machine inside. An average of 5 customers per hour comes to use the machine. What is the probability that more than 30 customers come to use the machine between 8.00 am and 5.00 pm? Solutions X is the number of customers come to use the ATM machine in 9 hours. X ~ Po (45)   45  10 X ~ N (45, 45) c .c P( X  30)   P ( X  30  0.5)  P ( X  30.5) 30.5  45   PZ    P( Z  2.16) 45    0.98461