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Continuous Probability Distributions Part 2 • Many continuous probability distributions, including: Uniform Normal Gamma Exponential Chi-Squared Lognormal Weibull JMB Chapter 6 Part 2 EGR 252 Spring 2012 Slide 1 Review: Standard Normal Random Variable • Normal Distribution Review: the probability of X taking on any value between x1 and x2 is given by: x2 P ( x1 X x2 ) n( x; , )dx x1 x2 x1 1 e 2 ( x )2 2 2 dx • To ease calculations, we define a normal random variable Z X where Z is normally distributed with μ = 0 and σ2 = 1 JMB Chapter 6 Part 2 EGR 252 Spring 2012 Slide 2 Review: Standard Normal Distribution • Table A.3 Pages 735-736: “Areas under the Normal Curve” Standard Normal Distribution -5 -4 -3 -2 -1 0 1 2 3 4 5 Z JMB Chapter 6 Part 2 EGR 252 Spring 2012 Slide 3 Applications of the Normal Distribution • A certain machine makes electrical resistors having a mean resistance of 40 ohms and a standard deviation of 2 ohms. What percentage of the resistors will have a resistance less than 44 ohms? • Solution: X is normally distributed with μ = 40 and σ = 2 and x = 44 Z Z X 44 40 2 2 -5 0 5 P(X<44) = P(Z< +2.0) = 0.9772 Therefore, we conclude that 97.72% will have a resistance less than 44 ohms. What percentage will have a resistance greater than 44 ohms? JMB Chapter 6 Part 2 EGR 252 Spring 2012 Slide 4 Normal Approximation to the Binomial • If n is large and p is not close to 0 or 1, or if n is smaller but p is close to 0.5, then the binomial distribution can be approximated by the normal distribution using these equations: P( X x) x 0 . 5 np P Z npq x 0 . 5 np P( X x) P Z npq • Look at example 6.15, pg. 191 (9th edition) JMB Chapter 6 Part 2 EGR 252 Spring 2012 Slide 5 Look at example 6.15, pg. 191-192 p = 0.4 n = 100 μ = np = ___________ σ = ____________ For X < 30 z = ((30-0.5) – 40)/4.899 ) P (Z < ((30-0.5) – 40)/4.899 ) = P (Z < -2.14) = _________ (from table) JMB Chapter 6 Part 2 EGR 252 Spring 2012 Slide 6 Your Turn • DRAW THE PICTURE!! Refer to the previous example, 1. What is the probability that more than 50 survive? -5 0 5 -5 0 5 2. What is the probability that exactly 45 survive? JMB Chapter 6 Part 2 EGR 252 Spring 2012 Slide 7 Gamma & Exponential Distributions • Related to the Poisson Process (discrete) Number of occurrences in a given interval or region “Memoryless” process • Sometimes we’re interested in the number of events that occur in an area (eg flaws in a square yard of cotton). • Sometimes we’re interested in the time until a certain number of events occur. • Area and time are variables that are measured. JMB Chapter 6 Part 2 EGR 252 Spring 2012 Slide 8 Gamma Distribution • The density function of the random variable X with gamma distribution having parameters α (number of occurrences) and β (time or region). x 1 f (x) x 1e ( ) x > 0. Gamma Distribution (n ) (n 1)! 1 μ = αβ σ2 = αβ2 f(x) 0.8 0.6 0.4 0.2 0 0 2 4 6 8 x JMB Chapter 6 Part 2 EGR 252 Spring 2012 Slide 9 Exponential Distribution • Special case of the gamma distribution with α = 1. f (x) 1 x e x > 0. Describes the time until or time between Poisson events. μ=β σ2 = β2 0 JMB Chapter 6 Part 2 5 10 EGR 252 Spring 2012 15 20 25 30 Slide 10 Is It a Poisson Process? • For homework and exams in the introductory statistics course, you will be told that the process is Poisson. An average of 2.7 service calls per minute are received at a particular maintenance center. The calls correspond to a Poisson process. What is the probability that up to a minute will elapse before 2 calls arrive? An average of 2.7 service calls per minute are received at a particular maintenance center. The calls correspond to a Poisson process. How long before the next call? JMB Chapter 6 Part 2 EGR 252 Spring 2012 Slide 11 Poisson Example Problem An average of 2.7 service calls per minute are received at a particular maintenance center. The calls correspond to a Poisson process. What is the probability that up to 1 minute will elapse before 2 calls arrive? β = 1 / λ = 1 / 2.7 = 0.3704 α=2 What is the value of P(X ≤ 1) Can we use a table? No We must use integration. JMB Chapter 6 Part 2 EGR 252 Spring 2012 Slide 12 Poisson Example Solution An average of 2.7 service calls per minute are received at a particular maintenance center. The calls correspond to a Poisson process. What is the probability that up to 1 minute will elapse before 2 calls arrive? The time until a number of Poisson events occurs follows the gamma distribution. β = 1/ 2.7 = 0.3704 α = 2 (calls) 1 P(X < 1) = 0 (1/ β2) x e-x/ β dx 1 2 = 2.7 0 x e -2.7x dx = [-2.7xe-2.7x – e-2.7x] 01 = 1 – e-2.7 (1 + 2.7) = 0.7513 Using Excel: =GAMMADIST(1,2,1/2.7,TRUE) JMB Chapter 6 Part 2 EGR 252 Spring 2012 Slide 13 Another Type of Question An average of 2.7 service calls per minute are received at a particular maintenance center. The calls correspond to a Poisson process. What is the expected time before the next call arrives? Expected value = μ = α β α = 1(call) β = 1/2.7 μ = β = 0.3704 min. We expect the next call to arrive in 0.3704 minutes. When α = 1 the gamma distribution is known as the exponential distribution. JMB Chapter 6 Part 2 EGR 252 Spring 2012 Slide 14