SlideShare a Scribd company logo
Chapter 04 Random Variables and Probability Distributions
Solutions to odd-numbered homework problems
(text: MacClave, Benson, and Sincich, 10th
edition)
[4.1] In general, counting things leads to Discrete measurements while measuring things
against some instrument leads to Continuous measurements.
(a) “Number of newspapers sold per month” involves counting, so this is a Discrete
random variable.
(b) “Amount of ink used” involves measuring (e.g., volume) so this is a Continuous
random variable.
(c) “Number of ounces in a bottle” involves measuring (e.g., a weight or volume
measurement), so this is a Continuous random variable.
(d) “Number of defective parts” involves counting, so this is a Discrete random
variable.
(e) “Number of people” involves counting, so this is a Discrete random variable.
[4.5] Technically speaking, x is measured by counting (numbers of dollars and numbers of
cents), so this variable is Discrete.
However, in many applications it is common to think of discrete variables that have a
huge number of possible values as being “approximately” continuous. For example,
people might say (as an approximation) that “salaries follow a normal distribution” or
that the “number of loaves of bread sold per week” follows a normal distribution. What
they mean in both cases is that “salaries” and “numbers of loaves sold” *are* indeed
discrete, but as a good approximation, we can often model them as being
*approximately” normal (i.e., as being continuous variables)
[4.29] (a) x: $0 $300,000
p(x): .70 .30
(b) µ = $0(.70) + $300,000(.30) = $90,000
[4.35] (a) )!26(!2
!6
−
= )1234)(12(
123456
⋅⋅⋅⋅
⋅⋅⋅⋅⋅
=
12
56
⋅
⋅
= 15.
(b) ( )5
2 =
!3!2
!5
= 10
(c) ( )7
0 =
!7!0
!7
= 1
(d) ( )6
6 =
!0!6
!6
= 1
(e) ( )4
3 =
!1!3
!4
= 4
[4.47] (a) x = “# of bridges with a rating of 4 or below” is binomial (n = 10, p = .09).
P(X ≥ 3) = 1 – P(x ≤ 2) = 1 – [ P(x=0) + P(x =1) + P(X=2)]
= 1 – [ ( ) 10010
0 )91(.)09(. + ( ) 9110
1 )91(.)09(. + ( ) 8210
2 )91(.)09(. ]
= 1 – [.389416 + .348678 + .17146] = .055 (or, 5.5%)
(b) There is a fairly low chance (5.5%) of ever finding 3 or more bridges with
ratings below 4. We can either conclude that a fairly rare event has indeed
happened or that perhaps the 9% forecast is a little too low. The smaller the
probability of such a situation, the more likely we are to go with the second
conclusion (that the 9% figure is too low).
[4.49] (a) P(taxpayer with income less than $100,000 is audited) = 15/1000 = .015
P(taxpayer with income exceeding $100,000 is audited) = 30/1000 = .03.
(b) Let X = “# people with incomes less than $100,000 who are audited. Then,
X ∼ binomial (n=5, p = .015).
P(X = 1) = ( )5
1 (.015)1
(1-.015)4
= .070600241
P(X > 1) = 1 – P(X ≤ 1) = 1 – [P(X=0) + P(X=1)] =
1 – [ ( )5
0 (.015)0
(1-.015)5
+ ( )5
1 (.015)1
(1-.015)4
] = .0021833.
(c) Y = “# people with incomes exceeding $100,000 who are audited”. Then,
Y ∼ binomial (n=5, p = .03)
P(Y = 1) = ( )5
1 (.03)1
(1-.03)4
= .132794
P(Y > 1) = 1 – P(Y ≤ 1) = 1 - [ ( )5
0 (.03)0
(1-.03)5
+ ( )5
1 (.03)1
(1-.03)4
] = .008472
(d) Here, X ∼ binomial (n=2, p = .015) and Y ∼ binomial (n=2, p = .03)
P(X=0 ∩ Y=0) = P(X=0)⋅P(Y=0) = (1-.015)2
(1-.03)2
= .9128847.
(e) To use the binomial, you must be able to assume that the people selected
independently of one another (random sampling guarantees that) and that the
probabilities of being audited do not change from person to person.
[4.75] (a) No bolt-on trace elements used: P(280 < x < 284) =
260290
280284
−
−
= .1333.
Bolt-on trace elements are attached: P(280 < x < 284) =
278285
280284
−
−
= .57143.
(b) No bolt-on trace elements used: P(x < 268) =
260290
260268
−
−
= .26666.
Bolt-on trace elements are attached: P(x < 268) = 0.
[4.79] (a) x = “amount dispensed” is continuous.
(b) The graph of this uniform distribution is:
x = amount dispensed
6.5 7.5
(c) µ = (6.5 + 7.5)/2 = 7, σ =
12
5.65.7 −
= .28868,
so µ ±2σ = 7 ± 2(.28868) = 7 ± .5736. Notice that these two points lie
outside the endpoints 6.5. and 7.5 in the graph above, which means that 100% of
the probability lies between 7 ± .5736.
(d) P(x ≥7) = .50, because the uniform distribution is symmetric around µ = 7.
(e) P(x ≤ 6) = 0, because the density function is 0 for all x ≤ 6.
(f) P(6.5 ≤ x ≤ 7.25)=
5.65.7
5.625.7
−
−
= .75. (so, P(x ≥ 7.25) = .26; see part (g))
(g) Let “xi > 7.25” denote the event “bottle number i contains more than 7.25
ounces”. Then for all 6 bottles to exceed 7.25 ounces, we have
P(x1>7.25 ∩ x2 >7.25 ∩ …∩ x6>7.25) = P(x1>7.25)⋅P(x2 > 7.25)⋅ …⋅P(x6 > 7.25)
= .256
= .000244.
[4.85] Remember, the trick with using the z table is to draw (or envision) the area under the z
curve that lies above the interval (e.g., the interval z > 1.46) and then think about how
you would chop up that area into pieces of the form 0 < z < z0 (i.e., the type of areas that
are given by the z table). No formulas are needed – just reason geometrically about these
areas and the answer will fall out. Think of the statement “P(z > 1.46)” as being “the
area under the z curve over the interval z > 1.46”.
(a) P(z > 1.46) = (area to the right of 0) – (area between 0 and 1.46)
= .5000 - .4279 = .0721
(b) P(z < -1.56) = (area to the left of 0) – (area between -1.56 and 0)
= .5000 - .4406 = .0594
(c) P(.67 < z < 2.41) = (area between 0 and 2.41) – (area between 0 and .67)
= .4920 - .2486 = .2434
(d) P(-.196 < z < -.33) = (area between -1.96 and 0) – (area between -.33 and 0)
= .4750 - .1293 = .3457
(e) P(z ≥ 0) = (area to the right of 0) = (half the total area) = .5
(f) P(-2.33 < z < 1.50) = (area between -2.22 and 0) +(area between 0 and 1.50)
= .4901 + .4332 = .9233
[4.89] As in problem 4.85 (or in any problem involving z), draw (or at least envision) the area
under the z curve and then break it up into use z-table type areas (those between 0 and
z0). Remember: when you are given the areas under the z curve (as in this problem),
you must use the z table “backwards” by looking up that area in the interior of the table
and then reading the z0 values from the left and top margins of the table.
(a) P(z ≤ z0) = .2090 = (area left of z0) = (area left of 0) + (area between 0 and z0)
So, .2090 = .5000 + (area between 0 and z0) or,
(area between 0 and z0) = .5000 - .2090 = .2910. From z table, the value of z0 is
then .81.
(b) P(z ≤ z0) = .7090 = (area left of 0) + (area between 0 and z0),
so (area between 0 and z0) = .7090 - .5000 = .2090. The closest z0 is z0 = .55,
which corresponds to an area of .2088, so use z0 ≈ .55 as a good/close
approximation to the correct value of z0.
(c) P(-z0 ≤ z < z0) = .8472 = (area between –z0 and 0) + (area between 0 and z0).
Because the z curve is symmetric, both these areas are the same, so,
.8472 = 2(area between 0 and z0) or, .8472/2 = .4236 = (area between 0 and z0).
From z table, z0 = 1.43
(d) P(-z0 ≤ z < z0) = .1664 = (area between –z0 and 0) + (area between 0 and z0). Like
part (c), both these areas are the same, so, .1664= 2(area between 0 and z0) or, .
1664/2 = .0832 = (area between 0 and z0). From z table, z0 = .21.
(e) P(z0≤ z ≤ 0) = .4798 = (area between –z0 and 0) which, by symmetry of z, equals
(area between 0 and -z0). The z table gives -z0 = 2.05 (so z0 = -2.05).
(f) P(-1 ≤ z < z0) = .5328 = (area between – 1 and 0) + (area between 0 and z0),
so (area between 0 and z0) = .5328 - .3413 = .1915 and z0 = .50
[4.109] x = “amount of dye discharged” is normal with mean μ and standard deviation σ = .4.
We want P(unacceptable) = P(x > 6) = .01. Standardizing, this becomes
P(z >
σ
µ−6
) = .01 , so from z table,
4.
6 µ−
≈ 2.33, which gives μ ≈ 6 - .4(2.33) = 5.068.
[4.125]A binomial random variable can be approximated by areas under a normal curve when n
is large. Just use the binomial’s mean np and standard deviation npq for as the mean
and standard deviation of the normal curve. In this problem μ = np = (100)(.40) = 40 and
σ = npq = )40.1)(40(.100 − = 24 =4.89898.
(a) P(x ≤ 35) ≈ P(xnormal ≤ 35.5) = P(z ≤
89898.4
405.35 −
) = P(z ≤ -.92) =
.5000- .3212 = .1788.
(b) P(40 ≤x ≤ 50) ≈ P(39.5 ≤xnormal ≤ 50.5) = P(
89898.4
405.39 −
≤ z ≤
89898.4
405.50 −
) =
P(-.10≤ z ≤ 2.14) = .0398 + .4838 = .5236
(c) P(x ≥ 38) ≈ P(xnormal ≥ 37.5) = P(z ≥
89898.4
405.37 −
) = P(z ≥ -.51) =
.1950 + .5000 = .6950.
[4.129]x = “# having post-laser vision problems” is binomial with n = 100,000 and p = .01.
P(x < 950) = P(xnormal ≤ 949.5) = P(z ≤ )01.1)(01)(.000,100(
)01)(.000,100(5.949
−
−
) = P(z ≤ -1.61) =
.5000- .4463 = .0537.
[4.133] x = “# defective CDs” is binomial with n = 1600 and p = .006.
P(x ≥ 12) = P(xnormal ≥ 11.5) = P(z ≥ )006.1)(006)(.1600(
)006)(.1600(5.11
−
−
) = P(z ≥ .62) =
.5000- .2324 = .2676. The event “x ≥ 12” is fairly large (i.e. it is fairly likely to occur),
so find 12 defective CDs would not be unreasonable if the defect rate is really .006 (i.e.,
the defect-free rate is .994).
[4.139]There are 5 choices for which number could be selected first & 5 choices for which one
could be selected second, so there are 5⋅5 = 25 possible samples of size 2 (as listed in the
problem). Since the two items in any sample are selected independently (i.e., at random),
then we can simply multiply the two probabilities to get the probability of both items.
For example, P(1,2) = P(x=1 ∩ x = 2) = P(x=1)⋅P(x = 2) = (.2)(.3) = .06.
(a) The means of the samples are 1, 1.5, 2, 2.5, …, 4.5, 5. Adding the probabilities
of the pairs that are associated with each mean, we get the sampling distribution:
sample mean probability
1 .04  (1,1)
1.5 .12
2 .17
2.5 .20
3 .20  (1,5) (2,4) (3,3) (4,2) (5,1)
3.5 .14
4 .08
4.5 .04
5 .01
(b) The histogram of the distribution in part (a) looks approximately like this:
(c) P( x ≥ 4.5) = P( x =4.5) + P( x =5) = .04 +.01 = .05
(d) P( x ≥ 4.5) is a fairly rare event (only happens 5% of the time), so it would be
unlikely to find values of x above 4.5.
[4.149]
n
σ =
64
16 =2, so
(a) P( x < 16) ≈ P(z < (16-20)/2) = P(z < -2.0) = .5000 - .4772 = .0228
(b) P( x > 23) ≈ P(z > (23-20)/2) = P(z >1.5) = .5000-.4332 = .0668
(c) P( x > 25) ≈ P(z > (25-20)/2) = P(z > 2.5) = .5000-.4938 = .0062
(d) P(16 < x < 22) ≈ P((16-20)/2 < z < (22-20)/2) = P(-2.0 < z <1)
= .4772 + .3413 = .8185
(e) P( x < 14) ≈ P(z < (14-20)/2) = P(z < -3) = .5000 - .4987 = .0013
[4.153](a) xµ = µ = 141
1 54.54
1
3.532.521.5
(b) xσ =
n
σ =
100
18 = 1.8
(c) Because n = 100 exceeds 30, the Central Limit Theorem says that the sampling
distribution of x should be approximately normal.
(d) z = ( x - xµ )/ xσ = (142-141)/1.8 = .5555 ≈ .56
(e) P( x > 142) = P( z > .56) = .5000 - .2123 = .2877
[4.161](a) Because n = 50 exceeds 30, the Central Limit Theorem says that the sampling
distribution of x should be approximately normal.
(b) P( x > 44) = P( z > (44-40)/(12/ 50 )) = P(z > 2.36) = .5000 - .4901 = .0091
(c) P(µ - 2
n
σ < x < µ + 2
n
σ ) = P(-2 < z < 2) = .4772 + .4772 = .9544
[4.167] You can simply use the n=20, p = .7 binomial table for this problem:
(a) P(X = 14) = P(X ≤ 14) –P(X≤ 13) = .584 - .392 = .192
(b) P(X ≤ 12) = .228
(c) (P(X > 12) = 1 – P(X≤ 12) = 1 - .228 = .772
(d) P(9 ≤ X ≤ 18) = P(X ≤ 18) – P(X ≤8) = .992 - .005 = .987
(e) P(8 < X < 18) = P(X ≤ 8) – P(X ≤ 18) = .965 - .005 = .960
(f) µ = np = 20(.7) = 14, σ = npq = )3)(.7(.20 = 2.049, σ2
= npq = 4.2
(f) P(µ - 2σ < x < µ - 2σ) = P(14 – 2(2.049) < x < 14 + 2(2.049))
= P(9.902 < x < 18.098) = P(10 ≤ x ≤ 18) = P(x ≤ 18) – P( x ≤ 9)
= .992 - .017 = .975
[4.183] (a) For a uniform distribution, µ = (c+d)/2 = (10,000 + 15,000)/2 = 12,500.
(b) P(x > 12,000) = (15000 – 12,000)/(15000 – 10,000) = 3000 / 5000 = .60.
(c) We want .20 = P(x > x0) = (15,000 – x0)/(15,000 – 10,000), so solve for
x0 = 14,000
[4.187] If µ = 18.2, σ = 10.64, then the lowest possible time x = 0 years would have
a z score of z = (0- 18.2) / 10.64 = -1.71. In other words, no values of x that are
farther than 1.71 standard deviations below the mean would be possible, which
isn’t the case for a normal distribution (that has many of its values farther away
from the mean than just 1.71 standard deviations. So, this data is unlikely to have
come from a normal distribution.
[4.197] X = “number of questionnaires returned ∼ binomial (n, p=.4), so we want the
probability P(X > 100) to be large. Using the normal approximation to the
binomial, P(X > 100) ≈ P( z > npq
np−100
) should be “large”, which would require
that npq
np−100
be fairly large and negative. Since we know that a lot of the area
under a z curve lies to the right of -2, let’s choose -2 as a “large negative” z value
and find the n that makes P( z > npq
np−100
) = P( z > -2) = .9772 (a “large”
probability):
npq
np−100
=
n
n
24.
4.100 −
= -2, which has the solution n = 291.85, or about n =
292.
Of course, if you want an even larger probability of getting 100 responses back,
then you would find the z value corresponding to that probability and resolve the
equation above, etc.

More Related Content

PPT
PDF
Calculus Cheat Sheet All
PPT
Section 4.1 polynomial functions and models
PPTX
1.1 review on algebra 1
PDF
ABC-Zs of TaxCharityTM-30nov15
PDF
Nationalism and fascism as answering to the failure of neoliberal globalization
PDF
ABC-Zs of TaxCharityTM-31oct2015
PDF
Sneaker culture marketing e vendas - jéssica teles
Calculus Cheat Sheet All
Section 4.1 polynomial functions and models
1.1 review on algebra 1
ABC-Zs of TaxCharityTM-30nov15
Nationalism and fascism as answering to the failure of neoliberal globalization
ABC-Zs of TaxCharityTM-31oct2015
Sneaker culture marketing e vendas - jéssica teles

Viewers also liked (10)

PDF
Winners
PPTX
Beyond College: The 9 Gems That Will Help You Succeed After Graduation
PDF
Os desafios da economia de salvador
PPT
Los Medios de la informacion y la Opinión Pública
PDF
Christy_gradsummitposterpdf
PPTX
GAir continua a destacar-se na aeronáutica
PPTX
Seminario 2 competencias informacionales (corregido)
PDF
The future of the united states and of the world with donald trump
PPTX
Advertising Quiz
PDF
Account-Based Content Marketing: Building an effective content strategy to su...
Winners
Beyond College: The 9 Gems That Will Help You Succeed After Graduation
Os desafios da economia de salvador
Los Medios de la informacion y la Opinión Pública
Christy_gradsummitposterpdf
GAir continua a destacar-se na aeronáutica
Seminario 2 competencias informacionales (corregido)
The future of the united states and of the world with donald trump
Advertising Quiz
Account-Based Content Marketing: Building an effective content strategy to su...
Ad

Similar to Chapter 04 answers (20)

PDF
Rosser's theorem
DOCX
Statistics Assignment 1 HET551 – Design and Developm.docx
PDF
Local linear approximation
PDF
NUMERICAL METHODS
PPT
Higher nov 2008_p1old
PDF
Maths Revision Notes - IGCSE
DOC
Sbma 4603 numerical methods Assignment
PPT
Statistik 1 5 distribusi probabilitas diskrit
PDF
Chapter 03 drill_solution
PPTX
Probability-1.pptx
PPTX
Delos-Santos-Analyn-M.-_Repoter-No.-1-Multiplication-and-Division-of-Polynomi...
PDF
Statistical Hydrology for Engineering.pdf
PDF
Appendex b
PDF
Applications of Differential Calculus in real life
PDF
101 math short cuts [www.onlinebcs.com]
PDF
Howard, anton calculo i- um novo horizonte - exercicio resolvidos v1
PDF
Maths04
PPTX
Normal probability distribution
PDF
Appendex
PPTX
Polynomials of class 10 maths chapter polynomials this is prepared by Abhishe...
Rosser's theorem
Statistics Assignment 1 HET551 – Design and Developm.docx
Local linear approximation
NUMERICAL METHODS
Higher nov 2008_p1old
Maths Revision Notes - IGCSE
Sbma 4603 numerical methods Assignment
Statistik 1 5 distribusi probabilitas diskrit
Chapter 03 drill_solution
Probability-1.pptx
Delos-Santos-Analyn-M.-_Repoter-No.-1-Multiplication-and-Division-of-Polynomi...
Statistical Hydrology for Engineering.pdf
Appendex b
Applications of Differential Calculus in real life
101 math short cuts [www.onlinebcs.com]
Howard, anton calculo i- um novo horizonte - exercicio resolvidos v1
Maths04
Normal probability distribution
Appendex
Polynomials of class 10 maths chapter polynomials this is prepared by Abhishe...
Ad

Recently uploaded (20)

DOCX
Euro SEO Services 1st 3 General Updates.docx
PDF
Laughter Yoga Basic Learning Workshop Manual
PDF
20250805_A. Stotz All Weather Strategy - Performance review July 2025.pdf
PPTX
Principles of Marketing, Industrial, Consumers,
PDF
Chapter 5_Foreign Exchange Market in .pdf
PPTX
The Marketing Journey - Tracey Phillips - Marketing Matters 7-2025.pptx
PPT
Chapter four Project-Preparation material
PDF
Types of control:Qualitative vs Quantitative
PDF
Solara Labs: Empowering Health through Innovative Nutraceutical Solutions
PDF
How to Get Business Funding for Small Business Fast
PDF
Nidhal Samdaie CV - International Business Consultant
PPTX
CkgxkgxydkydyldylydlydyldlyddolydyoyyU2.pptx
PDF
Reconciliation AND MEMORANDUM RECONCILATION
PPTX
New Microsoft PowerPoint Presentation - Copy.pptx
PDF
How to Get Funding for Your Trucking Business
DOCX
unit 2 cost accounting- Tender and Quotation & Reconciliation Statement
PDF
SIMNET Inc – 2023’s Most Trusted IT Services & Solution Provider
PDF
Roadmap Map-digital Banking feature MB,IB,AB
PDF
Unit 1 Cost Accounting - Cost sheet
DOCX
unit 1 COST ACCOUNTING AND COST SHEET
Euro SEO Services 1st 3 General Updates.docx
Laughter Yoga Basic Learning Workshop Manual
20250805_A. Stotz All Weather Strategy - Performance review July 2025.pdf
Principles of Marketing, Industrial, Consumers,
Chapter 5_Foreign Exchange Market in .pdf
The Marketing Journey - Tracey Phillips - Marketing Matters 7-2025.pptx
Chapter four Project-Preparation material
Types of control:Qualitative vs Quantitative
Solara Labs: Empowering Health through Innovative Nutraceutical Solutions
How to Get Business Funding for Small Business Fast
Nidhal Samdaie CV - International Business Consultant
CkgxkgxydkydyldylydlydyldlyddolydyoyyU2.pptx
Reconciliation AND MEMORANDUM RECONCILATION
New Microsoft PowerPoint Presentation - Copy.pptx
How to Get Funding for Your Trucking Business
unit 2 cost accounting- Tender and Quotation & Reconciliation Statement
SIMNET Inc – 2023’s Most Trusted IT Services & Solution Provider
Roadmap Map-digital Banking feature MB,IB,AB
Unit 1 Cost Accounting - Cost sheet
unit 1 COST ACCOUNTING AND COST SHEET

Chapter 04 answers

  • 1. Chapter 04 Random Variables and Probability Distributions Solutions to odd-numbered homework problems (text: MacClave, Benson, and Sincich, 10th edition) [4.1] In general, counting things leads to Discrete measurements while measuring things against some instrument leads to Continuous measurements. (a) “Number of newspapers sold per month” involves counting, so this is a Discrete random variable. (b) “Amount of ink used” involves measuring (e.g., volume) so this is a Continuous random variable. (c) “Number of ounces in a bottle” involves measuring (e.g., a weight or volume measurement), so this is a Continuous random variable. (d) “Number of defective parts” involves counting, so this is a Discrete random variable. (e) “Number of people” involves counting, so this is a Discrete random variable. [4.5] Technically speaking, x is measured by counting (numbers of dollars and numbers of cents), so this variable is Discrete. However, in many applications it is common to think of discrete variables that have a huge number of possible values as being “approximately” continuous. For example, people might say (as an approximation) that “salaries follow a normal distribution” or that the “number of loaves of bread sold per week” follows a normal distribution. What they mean in both cases is that “salaries” and “numbers of loaves sold” *are* indeed discrete, but as a good approximation, we can often model them as being *approximately” normal (i.e., as being continuous variables) [4.29] (a) x: $0 $300,000 p(x): .70 .30 (b) µ = $0(.70) + $300,000(.30) = $90,000 [4.35] (a) )!26(!2 !6 − = )1234)(12( 123456 ⋅⋅⋅⋅ ⋅⋅⋅⋅⋅ = 12 56 ⋅ ⋅ = 15. (b) ( )5 2 = !3!2 !5 = 10 (c) ( )7 0 = !7!0 !7 = 1 (d) ( )6 6 = !0!6 !6 = 1 (e) ( )4 3 = !1!3 !4 = 4
  • 2. [4.47] (a) x = “# of bridges with a rating of 4 or below” is binomial (n = 10, p = .09). P(X ≥ 3) = 1 – P(x ≤ 2) = 1 – [ P(x=0) + P(x =1) + P(X=2)] = 1 – [ ( ) 10010 0 )91(.)09(. + ( ) 9110 1 )91(.)09(. + ( ) 8210 2 )91(.)09(. ] = 1 – [.389416 + .348678 + .17146] = .055 (or, 5.5%) (b) There is a fairly low chance (5.5%) of ever finding 3 or more bridges with ratings below 4. We can either conclude that a fairly rare event has indeed happened or that perhaps the 9% forecast is a little too low. The smaller the probability of such a situation, the more likely we are to go with the second conclusion (that the 9% figure is too low). [4.49] (a) P(taxpayer with income less than $100,000 is audited) = 15/1000 = .015 P(taxpayer with income exceeding $100,000 is audited) = 30/1000 = .03. (b) Let X = “# people with incomes less than $100,000 who are audited. Then, X ∼ binomial (n=5, p = .015). P(X = 1) = ( )5 1 (.015)1 (1-.015)4 = .070600241 P(X > 1) = 1 – P(X ≤ 1) = 1 – [P(X=0) + P(X=1)] = 1 – [ ( )5 0 (.015)0 (1-.015)5 + ( )5 1 (.015)1 (1-.015)4 ] = .0021833. (c) Y = “# people with incomes exceeding $100,000 who are audited”. Then, Y ∼ binomial (n=5, p = .03) P(Y = 1) = ( )5 1 (.03)1 (1-.03)4 = .132794 P(Y > 1) = 1 – P(Y ≤ 1) = 1 - [ ( )5 0 (.03)0 (1-.03)5 + ( )5 1 (.03)1 (1-.03)4 ] = .008472 (d) Here, X ∼ binomial (n=2, p = .015) and Y ∼ binomial (n=2, p = .03) P(X=0 ∩ Y=0) = P(X=0)⋅P(Y=0) = (1-.015)2 (1-.03)2 = .9128847. (e) To use the binomial, you must be able to assume that the people selected independently of one another (random sampling guarantees that) and that the probabilities of being audited do not change from person to person. [4.75] (a) No bolt-on trace elements used: P(280 < x < 284) = 260290 280284 − − = .1333. Bolt-on trace elements are attached: P(280 < x < 284) = 278285 280284 − − = .57143. (b) No bolt-on trace elements used: P(x < 268) = 260290 260268 − − = .26666. Bolt-on trace elements are attached: P(x < 268) = 0.
  • 3. [4.79] (a) x = “amount dispensed” is continuous. (b) The graph of this uniform distribution is: x = amount dispensed 6.5 7.5 (c) µ = (6.5 + 7.5)/2 = 7, σ = 12 5.65.7 − = .28868, so µ ±2σ = 7 ± 2(.28868) = 7 ± .5736. Notice that these two points lie outside the endpoints 6.5. and 7.5 in the graph above, which means that 100% of the probability lies between 7 ± .5736. (d) P(x ≥7) = .50, because the uniform distribution is symmetric around µ = 7. (e) P(x ≤ 6) = 0, because the density function is 0 for all x ≤ 6. (f) P(6.5 ≤ x ≤ 7.25)= 5.65.7 5.625.7 − − = .75. (so, P(x ≥ 7.25) = .26; see part (g)) (g) Let “xi > 7.25” denote the event “bottle number i contains more than 7.25 ounces”. Then for all 6 bottles to exceed 7.25 ounces, we have P(x1>7.25 ∩ x2 >7.25 ∩ …∩ x6>7.25) = P(x1>7.25)⋅P(x2 > 7.25)⋅ …⋅P(x6 > 7.25) = .256 = .000244. [4.85] Remember, the trick with using the z table is to draw (or envision) the area under the z curve that lies above the interval (e.g., the interval z > 1.46) and then think about how you would chop up that area into pieces of the form 0 < z < z0 (i.e., the type of areas that are given by the z table). No formulas are needed – just reason geometrically about these areas and the answer will fall out. Think of the statement “P(z > 1.46)” as being “the area under the z curve over the interval z > 1.46”. (a) P(z > 1.46) = (area to the right of 0) – (area between 0 and 1.46) = .5000 - .4279 = .0721 (b) P(z < -1.56) = (area to the left of 0) – (area between -1.56 and 0) = .5000 - .4406 = .0594 (c) P(.67 < z < 2.41) = (area between 0 and 2.41) – (area between 0 and .67) = .4920 - .2486 = .2434 (d) P(-.196 < z < -.33) = (area between -1.96 and 0) – (area between -.33 and 0)
  • 4. = .4750 - .1293 = .3457 (e) P(z ≥ 0) = (area to the right of 0) = (half the total area) = .5 (f) P(-2.33 < z < 1.50) = (area between -2.22 and 0) +(area between 0 and 1.50) = .4901 + .4332 = .9233 [4.89] As in problem 4.85 (or in any problem involving z), draw (or at least envision) the area under the z curve and then break it up into use z-table type areas (those between 0 and z0). Remember: when you are given the areas under the z curve (as in this problem), you must use the z table “backwards” by looking up that area in the interior of the table and then reading the z0 values from the left and top margins of the table. (a) P(z ≤ z0) = .2090 = (area left of z0) = (area left of 0) + (area between 0 and z0) So, .2090 = .5000 + (area between 0 and z0) or, (area between 0 and z0) = .5000 - .2090 = .2910. From z table, the value of z0 is then .81. (b) P(z ≤ z0) = .7090 = (area left of 0) + (area between 0 and z0), so (area between 0 and z0) = .7090 - .5000 = .2090. The closest z0 is z0 = .55, which corresponds to an area of .2088, so use z0 ≈ .55 as a good/close approximation to the correct value of z0. (c) P(-z0 ≤ z < z0) = .8472 = (area between –z0 and 0) + (area between 0 and z0). Because the z curve is symmetric, both these areas are the same, so, .8472 = 2(area between 0 and z0) or, .8472/2 = .4236 = (area between 0 and z0). From z table, z0 = 1.43 (d) P(-z0 ≤ z < z0) = .1664 = (area between –z0 and 0) + (area between 0 and z0). Like part (c), both these areas are the same, so, .1664= 2(area between 0 and z0) or, . 1664/2 = .0832 = (area between 0 and z0). From z table, z0 = .21. (e) P(z0≤ z ≤ 0) = .4798 = (area between –z0 and 0) which, by symmetry of z, equals (area between 0 and -z0). The z table gives -z0 = 2.05 (so z0 = -2.05). (f) P(-1 ≤ z < z0) = .5328 = (area between – 1 and 0) + (area between 0 and z0), so (area between 0 and z0) = .5328 - .3413 = .1915 and z0 = .50 [4.109] x = “amount of dye discharged” is normal with mean μ and standard deviation σ = .4.
  • 5. We want P(unacceptable) = P(x > 6) = .01. Standardizing, this becomes P(z > σ µ−6 ) = .01 , so from z table, 4. 6 µ− ≈ 2.33, which gives μ ≈ 6 - .4(2.33) = 5.068. [4.125]A binomial random variable can be approximated by areas under a normal curve when n is large. Just use the binomial’s mean np and standard deviation npq for as the mean and standard deviation of the normal curve. In this problem μ = np = (100)(.40) = 40 and σ = npq = )40.1)(40(.100 − = 24 =4.89898. (a) P(x ≤ 35) ≈ P(xnormal ≤ 35.5) = P(z ≤ 89898.4 405.35 − ) = P(z ≤ -.92) = .5000- .3212 = .1788. (b) P(40 ≤x ≤ 50) ≈ P(39.5 ≤xnormal ≤ 50.5) = P( 89898.4 405.39 − ≤ z ≤ 89898.4 405.50 − ) = P(-.10≤ z ≤ 2.14) = .0398 + .4838 = .5236 (c) P(x ≥ 38) ≈ P(xnormal ≥ 37.5) = P(z ≥ 89898.4 405.37 − ) = P(z ≥ -.51) = .1950 + .5000 = .6950. [4.129]x = “# having post-laser vision problems” is binomial with n = 100,000 and p = .01. P(x < 950) = P(xnormal ≤ 949.5) = P(z ≤ )01.1)(01)(.000,100( )01)(.000,100(5.949 − − ) = P(z ≤ -1.61) = .5000- .4463 = .0537. [4.133] x = “# defective CDs” is binomial with n = 1600 and p = .006. P(x ≥ 12) = P(xnormal ≥ 11.5) = P(z ≥ )006.1)(006)(.1600( )006)(.1600(5.11 − − ) = P(z ≥ .62) = .5000- .2324 = .2676. The event “x ≥ 12” is fairly large (i.e. it is fairly likely to occur), so find 12 defective CDs would not be unreasonable if the defect rate is really .006 (i.e., the defect-free rate is .994). [4.139]There are 5 choices for which number could be selected first & 5 choices for which one could be selected second, so there are 5⋅5 = 25 possible samples of size 2 (as listed in the problem). Since the two items in any sample are selected independently (i.e., at random),
  • 6. then we can simply multiply the two probabilities to get the probability of both items. For example, P(1,2) = P(x=1 ∩ x = 2) = P(x=1)⋅P(x = 2) = (.2)(.3) = .06. (a) The means of the samples are 1, 1.5, 2, 2.5, …, 4.5, 5. Adding the probabilities of the pairs that are associated with each mean, we get the sampling distribution: sample mean probability 1 .04  (1,1) 1.5 .12 2 .17 2.5 .20 3 .20  (1,5) (2,4) (3,3) (4,2) (5,1) 3.5 .14 4 .08 4.5 .04 5 .01 (b) The histogram of the distribution in part (a) looks approximately like this: (c) P( x ≥ 4.5) = P( x =4.5) + P( x =5) = .04 +.01 = .05 (d) P( x ≥ 4.5) is a fairly rare event (only happens 5% of the time), so it would be unlikely to find values of x above 4.5. [4.149] n σ = 64 16 =2, so (a) P( x < 16) ≈ P(z < (16-20)/2) = P(z < -2.0) = .5000 - .4772 = .0228 (b) P( x > 23) ≈ P(z > (23-20)/2) = P(z >1.5) = .5000-.4332 = .0668 (c) P( x > 25) ≈ P(z > (25-20)/2) = P(z > 2.5) = .5000-.4938 = .0062 (d) P(16 < x < 22) ≈ P((16-20)/2 < z < (22-20)/2) = P(-2.0 < z <1) = .4772 + .3413 = .8185 (e) P( x < 14) ≈ P(z < (14-20)/2) = P(z < -3) = .5000 - .4987 = .0013 [4.153](a) xµ = µ = 141 1 54.54 1 3.532.521.5
  • 7. (b) xσ = n σ = 100 18 = 1.8 (c) Because n = 100 exceeds 30, the Central Limit Theorem says that the sampling distribution of x should be approximately normal. (d) z = ( x - xµ )/ xσ = (142-141)/1.8 = .5555 ≈ .56 (e) P( x > 142) = P( z > .56) = .5000 - .2123 = .2877 [4.161](a) Because n = 50 exceeds 30, the Central Limit Theorem says that the sampling distribution of x should be approximately normal. (b) P( x > 44) = P( z > (44-40)/(12/ 50 )) = P(z > 2.36) = .5000 - .4901 = .0091 (c) P(µ - 2 n σ < x < µ + 2 n σ ) = P(-2 < z < 2) = .4772 + .4772 = .9544 [4.167] You can simply use the n=20, p = .7 binomial table for this problem: (a) P(X = 14) = P(X ≤ 14) –P(X≤ 13) = .584 - .392 = .192 (b) P(X ≤ 12) = .228 (c) (P(X > 12) = 1 – P(X≤ 12) = 1 - .228 = .772 (d) P(9 ≤ X ≤ 18) = P(X ≤ 18) – P(X ≤8) = .992 - .005 = .987 (e) P(8 < X < 18) = P(X ≤ 8) – P(X ≤ 18) = .965 - .005 = .960 (f) µ = np = 20(.7) = 14, σ = npq = )3)(.7(.20 = 2.049, σ2 = npq = 4.2 (f) P(µ - 2σ < x < µ - 2σ) = P(14 – 2(2.049) < x < 14 + 2(2.049)) = P(9.902 < x < 18.098) = P(10 ≤ x ≤ 18) = P(x ≤ 18) – P( x ≤ 9) = .992 - .017 = .975 [4.183] (a) For a uniform distribution, µ = (c+d)/2 = (10,000 + 15,000)/2 = 12,500.
  • 8. (b) P(x > 12,000) = (15000 – 12,000)/(15000 – 10,000) = 3000 / 5000 = .60. (c) We want .20 = P(x > x0) = (15,000 – x0)/(15,000 – 10,000), so solve for x0 = 14,000 [4.187] If µ = 18.2, σ = 10.64, then the lowest possible time x = 0 years would have a z score of z = (0- 18.2) / 10.64 = -1.71. In other words, no values of x that are farther than 1.71 standard deviations below the mean would be possible, which isn’t the case for a normal distribution (that has many of its values farther away from the mean than just 1.71 standard deviations. So, this data is unlikely to have come from a normal distribution. [4.197] X = “number of questionnaires returned ∼ binomial (n, p=.4), so we want the probability P(X > 100) to be large. Using the normal approximation to the binomial, P(X > 100) ≈ P( z > npq np−100 ) should be “large”, which would require that npq np−100 be fairly large and negative. Since we know that a lot of the area under a z curve lies to the right of -2, let’s choose -2 as a “large negative” z value and find the n that makes P( z > npq np−100 ) = P( z > -2) = .9772 (a “large” probability): npq np−100 = n n 24. 4.100 − = -2, which has the solution n = 291.85, or about n = 292. Of course, if you want an even larger probability of getting 100 responses back, then you would find the z value corresponding to that probability and resolve the equation above, etc.