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Defining Probabilities: Random Variables Examples: Out of 100 heart catheterization procedures performed at a local hospital each year, the probability that more than five of them will result in complications is P(X > 5) Drywall anchors are sold in packs of 50 at the local hardware store. The probability that no more than 3 will be defective is P(Y < 3) JMB Chapter 3 Lecture 1 EGR 252.001 Spring 2008 Slide 1 Discrete Random Variables Problem 2.53 Page 55 Modified Assume someone spends $75 to buy 3 envelopes. The sample space describing the presence of $10 bills (H) vs bills that are not $10 (N) is: S = {NNN, NNH, NHN, HNN, NHH, HNH, HHN, HHH} The random variable associated with this situation, X, reflects the outcome of the experiment X is the number of envelopes that contain $10 X = {0, 1, 2, 3} JMB Chapter 3 Lecture 1 EGR 252.001 Spring 2008 Slide 2 Discrete Probability Distributions 1 The probability that the envelope contains a $10 bill is 275/500 or .55 What is the probability that there are no $10 bills in the group? P(X = 0) =(1-0.55) * (1-0.55) *(1-0.55) = 0.091125 P(X = 1) = 3 * (0.55)*(1-0.55)* (1-0.55) = 0.334125 Why 3 for the X = 1 case? Three items in the sample space for X = 1 NNH NHN HNN JMB Chapter 3 Lecture 1 EGR 252.001 Spring 2008 Slide 3 Discrete Probability Distributions 2 P(X = 0) =(1-0.55) * (1-0.55) *(1-0.55) = 0.091125 P(X = 1) = 3*(0.55)*(1-0.55)* (1-0.55) = 0.334125 P(X = 2) = 3*(0.55^2*(1-0.55)) = 0.408375 P(X = 3) = 0.55^3 = 0.166375 The probability distribution associated with the number of $10 bills is given by: x 0 1 2 3 P(X = x) JMB Chapter 3 Lecture 1 EGR 252.001 Spring 2008 Slide 4 Example 3.8, pg 80 Shipment: 8 computers of which 3 are defective Random purchase of 2 computers What is the probability distribution for the random variable X = defective computers purchased? Possibilities: X = 0 X =1 X = 2 Let’s start with P(X=0) P = specified target / all possible (0 defectives and 2 nondefectives are selected) (all ways to get 0 out of 3 defectives) ∩ (all ways to get 2 out of 5 nondefectives) (all ways to choose 2 out of 8 computers) (all ways to choose 2 out of 8 computers) 3 5 1 1 15 P( X 1 ) 28 8 2 3 5 0 2 10 P( X 0) 28 8 2 JMB Chapter 3 Lecture 1 EGR 252.001 Spring 2008 Slide 5 Discrete Probability Distributions The discrete probability distribution function (pdf) f(x) = P(X = x) ≥ 0 Σx f(x) = 1 The cumulative distribution, F(x) F(x) = P(X ≤ x) = Σt ≤ x f(t) JMB Chapter 3 Lecture 1 EGR 252.001 Spring 2008 Slide 6 Probability Distributions From our example, the probability that no more than 2 of the envelopes contain $10 bills is P(X ≤ 2) = F (2) = _________________ F(2) = f(0) + f(1) + f(2) = .833625 (OR 1 - f(3)) The probability that no fewer than 2 envelopes contain $10 bills is P(X ≥ 2) = 1 - P(X ≤ 1) = 1 – F (1) = ________ 1 – F(1) = 1 – (f(0) + f(1)) = 1 - .425 = .575 (OR f(2) + f(3)) JMB Chapter 3 Lecture 1 EGR 252.001 Spring 2008 Slide 7 Another View The probability histogram 0.45 0.40 0.35 f(x) 0.30 0.25 0.20 0.15 0.10 0.05 0.00 0 2 1 3 x JMB Chapter 3 Lecture 1 EGR 252.001 Spring 2008 Slide 8 Your Turn … The output of the same type of circuit board from two assembly lines is mixed into one storage tray. In a tray of 10 circuit boards, 6 are from line A and 4 from line B. If the inspector chooses 2 boards from the tray, show the probability distribution function associated with the selected boards being from line A. 6 4 0 2 1* 6 0.133 f (0) P ( X 0) 45 10 x P(x) 2 6 4 1 1 6*4 0.533 f (1) P ( X 1) 10 45 2 6 4 2 0 15 *1 0.333 f ( 2) P ( X 1) 45 10 2 JMB Chapter 3 Lecture 1 EGR 252.001 Spring 2008 0 1 2 Slide 9 Continuous Probability Distributions b In general, P (a X b) f ( x )dx a The probability that the average daily temperature in Georgia during the month of August falls between 90 and 95 degrees is The probability that a given part will fail before 1000 hours of use is JMB Chapter 3 Lecture 1 EGR 252.001 Spring 2008 Slide 10 Visualizing Continuous Distributions The probability that the average daily temperature in Georgia during the month of August falls between 90 and 95 degrees is -5 -3 -1 1 3 5 The probability that a given part will fail before 1000 hours of use is 0 JMB Chapter 3 Lecture 1 5 EGR 252.001 Spring 2008 10 15 20 25 30 Slide 11 Continuous Probability Calculations The continuous probability density function (pdf) f(x) ≥ 0, for all x ∈ R f ( x )dx 1 b P (a X b) f ( x )dx a The cumulative distribution, F(x) x F ( x ) P( X x ) f (t )dt JMB Chapter 3 Lecture 1 EGR 252.001 Spring 2008 Slide 12 Example: Problem 3.7, pg. 88 The total number of hours, measured in units of 100 hours x, 0<x<1 f(x) = 2-x, 1≤x<2 0, elsewhere { a) P(X < 120 hours) = P(X < 1.2) = P(X < 1) + P (1 < X < 1.2) NOTE: You will need to integrate two different functions over two different ranges. b) P(50 hours < X < 100 hours) = Which function(s) will be used? JMB Chapter 3 Lecture 1 EGR 252.001 Spring 2008 Slide 13