Applied Statistics and Probability for Engineers 6e + WileyPLUS Registration Card
Applied Statistics and Probability for Engineers 6e + WileyPLUS Registration Card
6th Edition
ISBN: 9781118865644
Author: Douglas C. Montgomery, George C. Runger
Publisher: Wiley (WileyPLUS Products)
Question
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Chapter 5, Problem 101SE

a.

To determine

Show that the following function satisfies the properties of a joint probability mass function.

Compute P(X<0.5,Y<1.5).

a.

Expert Solution
Check Mark

Answer to Problem 101SE

P(X<0.5,Y<1.5)=38 .

Explanation of Solution

Calculation:

It is given that,

xyfXY(x,y)
0014
0118
1018
1114
2214

The joint probability mass function of the discrete random variable X and Y is defined as fXY(x,y).

The properties of joint probability mass function is,

  • fXY(x,y)0
  • xyfXY(x,y)=1
  • fXY(x,y)=P(X=x,Y=y)

According to given information it is clear that, fXY(x,y)>0.

Let R denote the range of (X, Y).

Thus,

xyfXY(x,y)=RfXY(x,y)=14+18+18+14+14=1

Hence, the function satisfies all the properties of joint probability mass function.

The discrete random variable X takes only some discrete values and the range of X is {0,1,2}.

The discrete random variable Y takes only some discrete values and the range of Y is {0,1,2}.

Thus,

P(X<0.5,Y<1.5)=fXY(0,1)+fXY(0,0).

Using the given information,

P(X<0.5,Y<1.5)=fXY(0,1)+fXY(0,0)=18+14=38

Thus, P(X<0.5,Y<1.5)=38.

b.

To determine

Compute P(X1).

b.

Expert Solution
Check Mark

Answer to Problem 101SE

P(X1)=34.

Explanation of Solution

Calculation:

The discrete random variable X takes only some discrete values and the range of X is {0,1,2}.

The discrete random variable Y takes only some discrete values and the range of Y is {0,1,2}.

Now, (X1) implies that X takes value 0, and 1 whereas Y take values 0, 1 and 2.

Thus,

P(X1)=fXY(0,0)+fXY(0,1)+fXY(1,0)+fXY(1,1)

Using the given information,

P(X1)=fXY(0,0)+fXY(0,1)+fXY(1,0)+fXY(1,1)=14+18+18+14=68=34

Thus, P(X1)=34.

c.

To determine

Compute P(X<1.5).

c.

Expert Solution
Check Mark

Answer to Problem 101SE

P(X<1.5)=34.

Explanation of Solution

Calculation:

The discrete random variable X takes only some discrete values and the range of X is {0,1,2}.

The discrete random variable Y takes only some discrete values and the range of Y is {0,1,2}.

Now, X<1.5 implies that X takes value 0, and 1 whereas Y take values 0, 1 and 2.

Thus,

P(X<1.5)=fXY(0,0)+fXY(0,1)+fXY(1,0)+fXY(1,1)

Using the given information,

P(X<1.5)=fXY(0,0)+fXY(0,1)+fXY(1,0)+fXY(1,1)=14+18+18+14=68=34

Thus, P(X<1.5)=34.

d.

To determine

Compute P(X>0.5,Y<1.5).

d.

Expert Solution
Check Mark

Answer to Problem 101SE

P(X>0.5,Y<1.5)=38.

Explanation of Solution

Calculation:

The discrete random variable X takes only some discrete values and the range of X is {0,1,2}.

The discrete random variable Y takes only some discrete values and the range of Y is {0,1,2}.

Now, (X>0.5,Y<1.5) implies that X takes value 1 and 2, whereas Y take values 0 and 1.

Thus,

P(X>0.5,Y<1.5)=fXY(1,0)+fXY(1,1)

Using the given information,

P(X>0.5,Y<1.5)=fXY(1,0)+fXY(1,1)=18+14=38

Thus, P(X>0.5,Y<1.5)=38.

e.

To determine

Compute E(X), E(Y), V(X) and V(Y).

e.

Expert Solution
Check Mark

Answer to Problem 101SE

E(X)=0.875, E(Y)=0.875, V(X)=0.61 and V(Y)=0.61.

Explanation of Solution

Calculation:

Mean:

Mean of a discrete random variable X is defined as,

E(X)=xxf(x), where f(x) be the probability mass function of the random variable X.

Variance:

Variance of a discrete random variable X is defined as,

V(X)=E(X2)E2(X)=xx2f(x)(xxf(x))2,

where f(x) be the probability mass function of the random variable X.

Thus, mean of the random variable X is,

E(X)=xxf(x)=(0)(14)+(0)(18)+(1)(18)+(1)(14)+(2)(14)=0+0+0.125+0.25+0.5=0.875

The variance of the random variable X is,

V(X)=xx2f(x)(xxf(x))2=(0)2(14)+(0)2(18)+(1)2(18)+(1)2(14)+(2)2(14)(0.875)2=(0+0+0.125+0.25+1)0.765=1.3750.765=0.61

Thus, mean of the random variable Y is,

E(Y)=yyf(y)=(0)(14)+(1)(18)+(0)(18)+(1)(14)+(2)(14)=0+0.125+0+0.25+0.5=0.875

The variance of the random variable Y is,

V(Y)=yy2f(y)(yyf(y))2=(0)2(14)+(1)2(18)+(0)2(18)+(1)2(14)+(2)2(14)(0.875)2=(0+0.125+0+0.25+1)0.765=1.3750.765=0.61

Thus, E(X)=0.875, E(Y)=0.875, V(X)=0.61 and V(Y)=0.61.

f.

To determine

Find marginal probability distribution of X.

f.

Expert Solution
Check Mark

Answer to Problem 101SE

The marginal probability distribution of X is,

xf(x)
038
138
214

Explanation of Solution

Calculation:

Marginal probability mass function:

If the joint probability mass function for random variable X and Y is fXY(x,y), then the marginal probability mass function of X and Y are,

fX(x)=yfXY(x,y) and fY(y)=xfXY(x,y), respectively.

Thus, for x=0 the marginal probability distribution of X is obtained as,

fX(0)=y=01fXY(0,y)=fXY(0,0)+fXY(0,1)=14+18=38

Thus, for x=1 the marginal probability distribution of X is obtained as,

fX(1)=y=01fXY(1,y)=fXY(1,0)+fXY(1,1)=18+14=38

Thus, for x=2 the marginal probability distribution of X is obtained as,

fX(2)=fXY(2,y)=fXY(2,2)=14

Therefore, the marginal probability distribution of X is,

xf(x)
038
138
214

g.

To determine

Find the conditional probability distribution of Y given that X=1.

g.

Expert Solution
Check Mark

Answer to Problem 101SE

The conditional probability distribution of Y given that X=1.5 is,

yfY|1(y)
013
123

Explanation of Solution

Calculation:

Conditional probability mass function:

If the joint probability mass function for random variable X and Y is fXY(x,y), then the conditional probability mass function of Y given X=x is,

fY|x(y)=fXY(x,y)fX(x) .

Similarly, the conditional probability mass function of X given Y=y is,

fX|y(x)=fXY(x,y)fY(y)

It is given that, for (X=1,Y=0) the joint probability mass function is fXY(1,0)=18.

It is also given that, for (X=1,Y=1) the joint probability mass function is fXY(1,1)=14.

From part (f) it is found that marginal probability distribution of X is,

xf(x)
038
138
214

Thus, for y=0 the conditional probability distribution of Y given that X=1 is,

fY|1(0)=fXY(1,0)fX(1)=1838=13

Thus, for y=1 the conditional probability distribution of Y given that X=1 is,

fY|1(1)=fXY(1,1)fX(1)=1438=23

Therefore, the conditional probability distribution of Y given that X=1 is,

yfY|1(y)
013
123

h.

To determine

Find E(Y|X=1).

h.

Expert Solution
Check Mark

Answer to Problem 101SE

E(Y|X=1)=23.

Explanation of Solution

Calculation:

If the joint probability mass function for random variable X and Y is fXY(x,y), then the conditional mean of Y given X=x is,

E(Y|x)=yyfY|x(y) , where fY|x(y) be the conditional distribution of Y given x.

From part (g) it is found that conditional probability distribution of Y given that X=1.5 is,

yfY|1(y)
013
123

Thus,

E(Y|X=1)=(0)(13)+(1)(23)=0+23=23

Thus, E(Y|X=1)=23.

i.

To determine

Explain whether X and Y are independent or not.

i.

Expert Solution
Check Mark

Answer to Problem 101SE

The random variable X and Y are not independent.

Explanation of Solution

Calculation:

It is known that the random variables X and Y are said to be independent if fXY(x,y)=fX(x)fY(y).

From part (f) it is already found that for x=1 the marginal probability distribution of X is obtained as,fX(1)=38.

Now, for y=0 the marginal probability distribution of Y is obtained as,

fY(0)=x=01fXY(x,0)=fXY(0,0)+fXY(1,0)=14+18=38

Thus, for y=1 the marginal probability distribution of Y is obtained as,

fY(1)=x=01fXY(x,1)=fXY(0,1)+fXY(1,1)=18+14=38

Thus, for y=2 the marginal probability distribution of Y is obtained as,

fY(2)=fXY(x,2)=fXY(2,2)=14

Therefore, the marginal probability distribution of Y is,

yf(y)
038
138
214

It is given that, for (X=1,Y=1) the joint probability mass function is fXY(1,1)=14.

Thus,

fX(1)fY(1)=(38)(38)=964

Hence, it is clear that, fXY(1,1)fX(1)fY(1).

Thus, X and Y are not independent.

j.

To determine

Find the correlation between X and Y.

j.

Expert Solution
Check Mark

Answer to Problem 101SE

The correlation for the joint probability distribution is 0.794, respectively.

Explanation of Solution

Calculation:

Thus, E(X), E(Y) and E(XY) is obtained as,

xyfXY(x,y)xf(x,y)yf(x,y)x2f(x,y)y2f(x,y)xyf(x,y)
001400000
011800.12500.1250
10180.12500.12500
11140.250.250.250.250.25
22140.50.5111
Total0.8750.8751.3751.3751.25

Thus E(XY)=1.25

From part (e), it is found that E(X)=0.875, E(Y)=0.875, V(X)=0.61 and V(Y)=0.61.

The covariance between two random variables X and Y id defined as,

cov(X,Y)=σXY=E[(XμX)(YμY)]=E(XY)μXμY

Thus, the covariance between X and Y is obtained as,

cov(X,Y)=E(XY)μXμY=1.25(0.875)(0.875)=1.250.765=0.484375

The correlation between two random variables X and Y is denoted as,

ρXY=cov(X,Y)V(X)V(Y)=σXYσXσY

Thus, the correlation between X and Y is obtained as,

ρXY=σXYσXσY=0.484375(0.61)(0.61)=0.4843750.61=0.794_.

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Chapter 5 Solutions

Applied Statistics and Probability for Engineers 6e + WileyPLUS Registration Card

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