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Continuous
                    Probability
                    Distributions
                      Chapter 7



McGraw-Hill/Irwin          Copyright © 2012 by The McGraw-Hill Companies, Inc. All rights reserved.
Learning Objectives
LO1 List the characteristics of the uniform distribution.
LO2 Compute probabilities by using the uniform distribution.
LO3 List the characteristics of the normal probability distribution.
LO4 Convert a normal distribution to the standard normal distribution.
LO5 Find the probability that an observation on a normally distributed
    random variable is between two values.
LO6 Find probabilities using the Empirical Rule.
LO7 Approximate the binomial distribution using the normal
    distribution.
LO8 Describe the characteristics and compute probabilities using the
    exponential distribution.



                                                                         7-2
LO1 List the characteristics of
                             the uniform distribution.


The Uniform Distribution
   The uniform probability
   distribution is perhaps
   the simplest
   distribution for a
   continuous random
   variable.

   This distribution is
   rectangular in shape
   and is defined by
   minimum and maximum
   values.



                                                           7-3
LO1
The Uniform Distribution – Mean and
Standard Deviation




                                      7-4
LO2 Compute probabilities by
                                           using the uniform distribution.

The Uniform Distribution - Example
     Southwest Arizona State University provides bus service to
     students while they are on campus. A bus arrives at the North
     Main Street and College Drive stop every 30 minutes between 6
     A.M. and 11 P.M. during weekdays. Students arrive at the bus stop
     at random times. The time that a student waits is uniformly
     distributed from 0 to 30 minutes.

1.   Draw a graph of this distribution.
2.   Show that the area of this uniform distribution is 1.00.
3.   How long will a student “typically” have to wait for a bus? In other
     words what is the mean waiting time? What is the standard
     deviation of the waiting times?
4.   What is the probability a student will wait more than 25 minutes
5.   What is the probability a student will wait between 10 and 20
     minutes?


                                                                            7-5
LO2

The Uniform Distribution - Example

 1. Graph of this distribution.




                                     7-6
LO2

The Uniform Distribution - Example




  2. Show that the area of this distribution is 1.00




                                                       7-7
LO2

The Uniform Distribution - Example




  3. How long will a student
  “typically” have to wait for a
  bus? In other words what is
  the mean waiting time?

  What is the standard
  deviation of the waiting
  times?

                                     7-8
LO2

The Uniform Distribution - Example

   4. What is the
                       P (25   Wait Time   30)   (height)(b ase)
   probability a
                                                     1
   student will wait                                      (5)
                                                 (30 0)
   more than 25
   minutes?                                      0.1667




                                                             7-9
LO2

The Uniform Distribution - Example

   5. What is the
                       P (10   Wait Time   20)   (height)(b ase)
   probability a
                                                     1
   student will wait                                      (10 )
                                                 (30 0)
   between 10 and 20
   minutes?                                      0.3333




                                                             7-10
LO3 List the characteristics of the
                                     normal probability distribution.
Characteristics of a Normal
Probability Distribution
   1.   It is bell-shaped and has a single peak at the center of the
        distribution.
   2.   It is symmetrical about the mean
   3.   It is asymptotic: The curve gets closer and closer to the X-
        axis but never actually touches it. To put it another way, the
        tails of the curve extend indefinitely in both directions.
   4.   The location of a normal distribution is determined by the
        mean, , the dispersion or spread of the distribution is
        determined by the standard deviation,σ .
   5.   The arithmetic mean, median, and mode are equal
   6.   The total area under the curve is 1.00; half the area under
        the normal curve is to the right of this center point, the mean,
        and the other half to the left of it.

                                                                           7-11
LO3


The Normal Distribution - Graphically




                                        7-12
LO3

The Family of Normal Distribution




     Equal Means and Different                 Different Means and
       Standard Deviations                     Standard Deviations




               Different Means and Equal Standard Deviations
                                                                     7-13
LO4 Convert a normal distribution to the
                              standard normal distribution.

The Standard Normal Probability
Distribution
     The standard normal distribution is a normal
      distribution with a mean of 0 and a standard
      deviation of 1.
     It is also called the z distribution.
     A z-value is the signed distance between a
      selected value, designated X, and the population
      mean , divided by the population standard
      deviation, σ.
     The formula is:

                                                                 7-14
LO6 Find probabilities using the
                             Empirical Rule.

    The Empirical Rule
   About 68 percent of
    the area under the
    normal curve is within
    one standard
    deviation of the
    mean.
   About 95 percent is
    within two standard
    deviations of the
    mean.
   Practically all is
    within three standard
    deviations of the
    mean.

                                                          7-15
LO6



The Empirical Rule - Example
    As part of its quality
    assurance program, the
    Autolite Battery Company
    conducts tests on battery
    life. For a particular D-cell
    alkaline battery, the mean
    life is 19 hours. The useful
    life of the battery follows a
    normal distribution with a
    standard deviation of 1.2
    hours.

 Answer the following questions.
 1. About 68 percent of the
    batteries failed between
    what two values?
 2. About 95 percent of the
    batteries failed between
    what two values?
 3. Virtually all of the batteries
    failed between what two
    values?
                                     7-16
LO4


Areas Under the Normal Curve




                               7-17
LO5 Find the probability that an observation on a normally
                distributed random variable is between two values.


The Normal Distribution – Example
  The weekly incomes of
  shift foremen in the
  glass industry follow the
  normal probability
  distribution with a mean
  of $1,000 and a
  standard deviation of
  $100.
  What is the z value for
  the income, let’s call it X,
  of a foreman who earns
  $1,100 per week? For a
  foreman who earns
  $900 per week?
                                                                     7-18
LO5

Normal Distribution – Finding Probabilities
   In an earlier example
   we reported that the
   mean weekly income
   of a shift foreman in
   the glass industry is
   normally distributed
   with a mean of $1,000
   and a standard
   deviation of $100.

   What is the likelihood
   of selecting a foreman
   whose weekly income
   is between $1,000
   and $1,100?


                                              7-19
LO5

Normal Distribution – Finding Probabilities




                                              7-20
LO5


  Finding Areas for Z Using Excel
The Excel function
=NORMDIST(x,Mean,Standard_dev,Cumu)
=NORMDIST(1100,1000,100,true)
generates area (probability) from
Z=1 and below




                                      7-21
LO5
Normal Distribution – Finding Probabilities
(Example 2)

    Refer to the information
    regarding the weekly income
    of shift foremen in the glass
    industry. The distribution of
    weekly incomes follows the
    normal probability
    distribution with a mean of
    $1,000 and a standard
    deviation of $100.
    What is the probability of
    selecting a shift foreman in
    the glass industry whose
    income is:
    Between $790 and $1,000?


                                              7-22
LO5
Normal Distribution – Finding Probabilities
(Example 3)

    Refer to the information
    regarding the weekly income
    of shift foremen in the glass
    industry. The distribution of
    weekly incomes follows the
    normal probability
    distribution with a mean of
    $1,000 and a standard
    deviation of $100.
    What is the probability of
    selecting a shift foreman in
    the glass industry whose
    income is:
    Less than $790?


                                              7-23
LO5
Normal Distribution – Finding Probabilities
(Example 4)

    Refer to the information
    regarding the weekly income
    of shift foremen in the glass
    industry. The distribution of
    weekly incomes follows the
    normal probability
    distribution with a mean of
    $1,000 and a standard
    deviation of $100.
    What is the probability of
    selecting a shift foreman in
    the glass industry whose
    income is:
    Between $840 and $1,200?


                                              7-24
LO5
Normal Distribution – Finding Probabilities
(Example 5)

    Refer to the information
    regarding the weekly income
    of shift foremen in the glass
    industry. The distribution of
    weekly incomes follows the
    normal probability
    distribution with a mean of
    $1,000 and a standard
    deviation of $100.
    What is the probability of
    selecting a shift foreman in
    the glass industry whose
    income is:
    Between $1,150 and $1,250


                                              7-25
LO5

Using Z in Finding X Given Area - Example

    Layton Tire and Rubber
    Company wishes to set a
    minimum mileage guarantee on
    its new MX100 tire. Tests
    reveal the mean mileage is
    67,900 with a standard
    deviation of 2,050 miles and
    that the distribution of miles
    follows the normal probability
    distribution. Layton wants to set
    the minimum guaranteed
    mileage so that no more than 4
    percent of the tires will have to
    be replaced.
    What minimum guaranteed
    mileage should Layton
    announce?



                                            26
                                             7-26
LO5

Using Z in Finding X Given Area - Example
                      Solve X using the formula :
                          x-      x 67,900
                      z
                                    2,050

                      The value of z is found using the 4% information
                      The areabetween67,900 and x is 0.4600,found by 0.5000 - 0.0400
                      Using Appendix B.1, the area closest to 0.4600is 0.4599,which
                      gives a z alue of - 1.75. Then substituting into the equation :

                               x - 67,900
                      - 1.75              , then solving for x
                                 2,050

                      - 1.75(2,050) x - 67,900


                      x 67,900 - 1.75(2,050)

                      x 64,312




                                                                                        7-27
LO5

Using Z in Finding X Given Area - Excel




                                          7-28
LO7 Approximate the binomial distribution
                        using the normal distribution.

Normal Approximation to the Binomial

     The normal distribution (a continuous distribution)
      yields a good approximation of the binomial
      distribution (a discrete distribution) for large values
      of n.

     The normal probability distribution is generally a good
      approximation to the binomial probability distribution
      when n and n(1- ) are both greater than 5.




                                                                7-29
LO7

Normal Approximation to the Binomial

Using the normal distribution (a continuous distribution) as a substitute
for a binomial distribution (a discrete distribution) for large values of n
seems reasonable because, as n increases, a binomial distribution gets
closer and closer to a normal distribution.




                                                                         7-30
LO7


Continuity Correction Factor
 The value .5 subtracted or added, depending on the
 problem, to a selected value when a binomial probability
 distribution (a discrete probability distribution) is being
 approximated by a continuous probability distribution (the
 normal distribution).




                                                         7-31
LO7

How to Apply the Correction Factor
Only one of four cases may arise:
1. For the probability at least X occurs, use the area above (X -.5).
2. For the probability that more than X occurs, use the area above
   (X+.5).
3. For the probability that X or fewer occurs, use the area below (X -
   .5).
4. For the probability that fewer than X occurs, use the area below
   (X+.5).




                                                                        7-32
LO7
Normal Approximation to the Binomial -
Example

  Suppose the
  management of the
  Santoni Pizza Restaurant
  found that 70 percent of
  its new customers return
  for another meal. For a
  week in which 80 new
  (first-time) customers
  dined at Santoni’s, what
  is the probability that
  60 or more will return
  for another meal?


                                         7-33
LO7
Normal Approximation to the Binomial - Example

Binomial distribution solution:




                      P(X ≥ 60) = 0.063+0.048+ … + 0.001) = 0.197
                                                                    7-34
LO7
Normal Approximation to the Binomial -
Example

   Step 1. Find the
   mean and the
   variance of a binomial
   distribution and find
   the z corresponding
   to an X of 59.5 (x-.5,
   the correction factor)
   Step 2: Determine
   the area from 59.5
   and beyond


                                         7-35
LO8 Describe the characteristics and compute
                             probabilities using the exponential distribution.

The Family of Exponential Distributions
Characteristics and Uses:
1. Positively skewed, similar to
   the Poisson distribution (for
   discrete variables).
2. Not symmetric like the
   uniform and normal
   distributions.
3. Described by only one
   parameter, which we identify
                                      The exponential distribution usually describes
   as λ, often referred to as the
                                      inter-arrival situations such as:
   “rate” of occurrence               • The service times in a system.
   parameter.                         • The time between “hits” on a web site.
4. As λ decreases, the shape of       • The lifetime of an electrical component.
   the distribution becomes “less     • The time until the next phone call arrives in a
   skewed.”                           customer service center

                                                                                     7-36
LO8


Exponential Distribution - Example
 Orders for prescriptions arrive at a
 pharmacy management website
 according to an exponential
 probability distribution at a mean of
 one every twenty seconds.

 Find the probability the next order
 arrives in:
 1) in less than 5 seconds,
 2) in more than 40 seconds,
 3) or between 5 and 40 seconds.

                                         7-37
LO8




                           P ( Arrival     40) 1 P ( Arrival   40)
                                         1
P ( Arrival    5)                        20
                                            ( 40 )

              1
                             1 (1 e                  )
                 (5)
  1 (1 e      20
                       )     1 0.8647
  1 0.7788                   0.1353
  0.2212
                                                                     7-38
LO8

Exponential Distribution - Example
 Compton Computers wishes to set a
 minimum lifetime guarantee on it new
 power supply unit. Quality testing
 shows the time to failure follows an
 exponential distribution with a mean of
 4000 hours. Note that 4000 hours is a
 mean and not a rate. Therefore, we
 must compute λ as 1/4000 or 0.00025
 failures per hour.

 Compton wants a warranty period such
 that only five percent of the power
 supply units fail during that period.
 What value should they set for the
 warranty period?


                                           7-39
LO8
Use formula (7–7) . In this case, the rate parameter is 4,000 hours and
we want the area, as shown in the diagram, to be .05.

      P(Arrival Time x) 1 e(       x)

                                      1
                                          (x)
                                  4 , 000
                      0.05 1 e
Now, we need to solve this equation for x.




Obtain the natural log of both sides of the equation:




X = 205.17. Hence, Compton can set the warranty period at 205 hours
and expect about 5 percent of the power supply units to be returned.

                                                                          7-40

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Chap007

  • 1. Continuous Probability Distributions Chapter 7 McGraw-Hill/Irwin Copyright © 2012 by The McGraw-Hill Companies, Inc. All rights reserved.
  • 2. Learning Objectives LO1 List the characteristics of the uniform distribution. LO2 Compute probabilities by using the uniform distribution. LO3 List the characteristics of the normal probability distribution. LO4 Convert a normal distribution to the standard normal distribution. LO5 Find the probability that an observation on a normally distributed random variable is between two values. LO6 Find probabilities using the Empirical Rule. LO7 Approximate the binomial distribution using the normal distribution. LO8 Describe the characteristics and compute probabilities using the exponential distribution. 7-2
  • 3. LO1 List the characteristics of the uniform distribution. The Uniform Distribution The uniform probability distribution is perhaps the simplest distribution for a continuous random variable. This distribution is rectangular in shape and is defined by minimum and maximum values. 7-3
  • 4. LO1 The Uniform Distribution – Mean and Standard Deviation 7-4
  • 5. LO2 Compute probabilities by using the uniform distribution. The Uniform Distribution - Example Southwest Arizona State University provides bus service to students while they are on campus. A bus arrives at the North Main Street and College Drive stop every 30 minutes between 6 A.M. and 11 P.M. during weekdays. Students arrive at the bus stop at random times. The time that a student waits is uniformly distributed from 0 to 30 minutes. 1. Draw a graph of this distribution. 2. Show that the area of this uniform distribution is 1.00. 3. How long will a student “typically” have to wait for a bus? In other words what is the mean waiting time? What is the standard deviation of the waiting times? 4. What is the probability a student will wait more than 25 minutes 5. What is the probability a student will wait between 10 and 20 minutes? 7-5
  • 6. LO2 The Uniform Distribution - Example 1. Graph of this distribution. 7-6
  • 7. LO2 The Uniform Distribution - Example 2. Show that the area of this distribution is 1.00 7-7
  • 8. LO2 The Uniform Distribution - Example 3. How long will a student “typically” have to wait for a bus? In other words what is the mean waiting time? What is the standard deviation of the waiting times? 7-8
  • 9. LO2 The Uniform Distribution - Example 4. What is the P (25 Wait Time 30) (height)(b ase) probability a 1 student will wait (5) (30 0) more than 25 minutes? 0.1667 7-9
  • 10. LO2 The Uniform Distribution - Example 5. What is the P (10 Wait Time 20) (height)(b ase) probability a 1 student will wait (10 ) (30 0) between 10 and 20 minutes? 0.3333 7-10
  • 11. LO3 List the characteristics of the normal probability distribution. Characteristics of a Normal Probability Distribution 1. It is bell-shaped and has a single peak at the center of the distribution. 2. It is symmetrical about the mean 3. It is asymptotic: The curve gets closer and closer to the X- axis but never actually touches it. To put it another way, the tails of the curve extend indefinitely in both directions. 4. The location of a normal distribution is determined by the mean, , the dispersion or spread of the distribution is determined by the standard deviation,σ . 5. The arithmetic mean, median, and mode are equal 6. The total area under the curve is 1.00; half the area under the normal curve is to the right of this center point, the mean, and the other half to the left of it. 7-11
  • 12. LO3 The Normal Distribution - Graphically 7-12
  • 13. LO3 The Family of Normal Distribution Equal Means and Different Different Means and Standard Deviations Standard Deviations Different Means and Equal Standard Deviations 7-13
  • 14. LO4 Convert a normal distribution to the standard normal distribution. The Standard Normal Probability Distribution  The standard normal distribution is a normal distribution with a mean of 0 and a standard deviation of 1.  It is also called the z distribution.  A z-value is the signed distance between a selected value, designated X, and the population mean , divided by the population standard deviation, σ.  The formula is: 7-14
  • 15. LO6 Find probabilities using the Empirical Rule. The Empirical Rule  About 68 percent of the area under the normal curve is within one standard deviation of the mean.  About 95 percent is within two standard deviations of the mean.  Practically all is within three standard deviations of the mean. 7-15
  • 16. LO6 The Empirical Rule - Example As part of its quality assurance program, the Autolite Battery Company conducts tests on battery life. For a particular D-cell alkaline battery, the mean life is 19 hours. The useful life of the battery follows a normal distribution with a standard deviation of 1.2 hours. Answer the following questions. 1. About 68 percent of the batteries failed between what two values? 2. About 95 percent of the batteries failed between what two values? 3. Virtually all of the batteries failed between what two values? 7-16
  • 17. LO4 Areas Under the Normal Curve 7-17
  • 18. LO5 Find the probability that an observation on a normally distributed random variable is between two values. The Normal Distribution – Example The weekly incomes of shift foremen in the glass industry follow the normal probability distribution with a mean of $1,000 and a standard deviation of $100. What is the z value for the income, let’s call it X, of a foreman who earns $1,100 per week? For a foreman who earns $900 per week? 7-18
  • 19. LO5 Normal Distribution – Finding Probabilities In an earlier example we reported that the mean weekly income of a shift foreman in the glass industry is normally distributed with a mean of $1,000 and a standard deviation of $100. What is the likelihood of selecting a foreman whose weekly income is between $1,000 and $1,100? 7-19
  • 20. LO5 Normal Distribution – Finding Probabilities 7-20
  • 21. LO5 Finding Areas for Z Using Excel The Excel function =NORMDIST(x,Mean,Standard_dev,Cumu) =NORMDIST(1100,1000,100,true) generates area (probability) from Z=1 and below 7-21
  • 22. LO5 Normal Distribution – Finding Probabilities (Example 2) Refer to the information regarding the weekly income of shift foremen in the glass industry. The distribution of weekly incomes follows the normal probability distribution with a mean of $1,000 and a standard deviation of $100. What is the probability of selecting a shift foreman in the glass industry whose income is: Between $790 and $1,000? 7-22
  • 23. LO5 Normal Distribution – Finding Probabilities (Example 3) Refer to the information regarding the weekly income of shift foremen in the glass industry. The distribution of weekly incomes follows the normal probability distribution with a mean of $1,000 and a standard deviation of $100. What is the probability of selecting a shift foreman in the glass industry whose income is: Less than $790? 7-23
  • 24. LO5 Normal Distribution – Finding Probabilities (Example 4) Refer to the information regarding the weekly income of shift foremen in the glass industry. The distribution of weekly incomes follows the normal probability distribution with a mean of $1,000 and a standard deviation of $100. What is the probability of selecting a shift foreman in the glass industry whose income is: Between $840 and $1,200? 7-24
  • 25. LO5 Normal Distribution – Finding Probabilities (Example 5) Refer to the information regarding the weekly income of shift foremen in the glass industry. The distribution of weekly incomes follows the normal probability distribution with a mean of $1,000 and a standard deviation of $100. What is the probability of selecting a shift foreman in the glass industry whose income is: Between $1,150 and $1,250 7-25
  • 26. LO5 Using Z in Finding X Given Area - Example Layton Tire and Rubber Company wishes to set a minimum mileage guarantee on its new MX100 tire. Tests reveal the mean mileage is 67,900 with a standard deviation of 2,050 miles and that the distribution of miles follows the normal probability distribution. Layton wants to set the minimum guaranteed mileage so that no more than 4 percent of the tires will have to be replaced. What minimum guaranteed mileage should Layton announce? 26 7-26
  • 27. LO5 Using Z in Finding X Given Area - Example Solve X using the formula : x- x 67,900 z 2,050 The value of z is found using the 4% information The areabetween67,900 and x is 0.4600,found by 0.5000 - 0.0400 Using Appendix B.1, the area closest to 0.4600is 0.4599,which gives a z alue of - 1.75. Then substituting into the equation : x - 67,900 - 1.75 , then solving for x 2,050 - 1.75(2,050) x - 67,900 x 67,900 - 1.75(2,050) x 64,312 7-27
  • 28. LO5 Using Z in Finding X Given Area - Excel 7-28
  • 29. LO7 Approximate the binomial distribution using the normal distribution. Normal Approximation to the Binomial  The normal distribution (a continuous distribution) yields a good approximation of the binomial distribution (a discrete distribution) for large values of n.  The normal probability distribution is generally a good approximation to the binomial probability distribution when n and n(1- ) are both greater than 5. 7-29
  • 30. LO7 Normal Approximation to the Binomial Using the normal distribution (a continuous distribution) as a substitute for a binomial distribution (a discrete distribution) for large values of n seems reasonable because, as n increases, a binomial distribution gets closer and closer to a normal distribution. 7-30
  • 31. LO7 Continuity Correction Factor The value .5 subtracted or added, depending on the problem, to a selected value when a binomial probability distribution (a discrete probability distribution) is being approximated by a continuous probability distribution (the normal distribution). 7-31
  • 32. LO7 How to Apply the Correction Factor Only one of four cases may arise: 1. For the probability at least X occurs, use the area above (X -.5). 2. For the probability that more than X occurs, use the area above (X+.5). 3. For the probability that X or fewer occurs, use the area below (X - .5). 4. For the probability that fewer than X occurs, use the area below (X+.5). 7-32
  • 33. LO7 Normal Approximation to the Binomial - Example Suppose the management of the Santoni Pizza Restaurant found that 70 percent of its new customers return for another meal. For a week in which 80 new (first-time) customers dined at Santoni’s, what is the probability that 60 or more will return for another meal? 7-33
  • 34. LO7 Normal Approximation to the Binomial - Example Binomial distribution solution: P(X ≥ 60) = 0.063+0.048+ … + 0.001) = 0.197 7-34
  • 35. LO7 Normal Approximation to the Binomial - Example Step 1. Find the mean and the variance of a binomial distribution and find the z corresponding to an X of 59.5 (x-.5, the correction factor) Step 2: Determine the area from 59.5 and beyond 7-35
  • 36. LO8 Describe the characteristics and compute probabilities using the exponential distribution. The Family of Exponential Distributions Characteristics and Uses: 1. Positively skewed, similar to the Poisson distribution (for discrete variables). 2. Not symmetric like the uniform and normal distributions. 3. Described by only one parameter, which we identify The exponential distribution usually describes as λ, often referred to as the inter-arrival situations such as: “rate” of occurrence • The service times in a system. parameter. • The time between “hits” on a web site. 4. As λ decreases, the shape of • The lifetime of an electrical component. the distribution becomes “less • The time until the next phone call arrives in a skewed.” customer service center 7-36
  • 37. LO8 Exponential Distribution - Example Orders for prescriptions arrive at a pharmacy management website according to an exponential probability distribution at a mean of one every twenty seconds. Find the probability the next order arrives in: 1) in less than 5 seconds, 2) in more than 40 seconds, 3) or between 5 and 40 seconds. 7-37
  • 38. LO8 P ( Arrival 40) 1 P ( Arrival 40) 1 P ( Arrival 5) 20 ( 40 ) 1 1 (1 e ) (5) 1 (1 e 20 ) 1 0.8647 1 0.7788 0.1353 0.2212 7-38
  • 39. LO8 Exponential Distribution - Example Compton Computers wishes to set a minimum lifetime guarantee on it new power supply unit. Quality testing shows the time to failure follows an exponential distribution with a mean of 4000 hours. Note that 4000 hours is a mean and not a rate. Therefore, we must compute λ as 1/4000 or 0.00025 failures per hour. Compton wants a warranty period such that only five percent of the power supply units fail during that period. What value should they set for the warranty period? 7-39
  • 40. LO8 Use formula (7–7) . In this case, the rate parameter is 4,000 hours and we want the area, as shown in the diagram, to be .05. P(Arrival Time x) 1 e( x) 1 (x) 4 , 000 0.05 1 e Now, we need to solve this equation for x. Obtain the natural log of both sides of the equation: X = 205.17. Hence, Compton can set the warranty period at 205 hours and expect about 5 percent of the power supply units to be returned. 7-40