Elementary Statistics ( 3rd International Edition ) Isbn:9781260092561
Elementary Statistics ( 3rd International Edition ) Isbn:9781260092561
3rd Edition
ISBN: 9781259969454
Author: William Navidi Prof.; Barry Monk Professor
Publisher: McGraw-Hill Education
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Chapter 4.3, Problem 23E

Hot enough for you? The following table presents the temperature, in degrees Fahrenheit, and barometric pressure, in inches of mercury, on August 15 at 12 noon in Macon. Georgia; over a nine-year period.

Chapter 4.3, Problem 23E, Hot enough for you? The following table presents the temperature, in degrees Fahrenheit, and

  1. Compute the least-squares regression line for predicting temperature from barometric pressure.
  2. Compute file coefficient of determination.
  3. Construct a scatterplot of due temperature (y) versus the barometric pressure (x).
  4. Which point is an outlier?
  5. Remove outlier and compute least-squares regression line for predicting temperature from barometric pressure.
  6. Is the outlier Explain.
  7. Compute the coefficient of determination for the data set with the outlier removed. Is the proportion of variation explained by the least-squares regression fine greater, less, or about the same without die outlier? Explain.

a.

Expert Solution
Check Mark
To determine

The least squares regression line for the given data set.

Answer to Problem 23E

  y=21.8708x+740.3765

Explanation of Solution

Given information:

Belowtable represents the temperature, in degrees Fahrenheit, and barometric pressure, in inches of mercury, on August 15 at 12 noon in Macon, Georgia, over a nine-year period:

  Elementary Statistics ( 3rd International Edition ) Isbn:9781260092561, Chapter 4.3, Problem 23E , additional homework tip  1

Formula used:

The equation for least-square regression line:

  y=b0+b1x

Where b1=rsysx is the slope and b0=y¯b1x¯ is the y-intercept.

The correlation coefficient of a data is given by:

  r=1n( x x ¯ )( y y ¯ )sxsy

Where,

  x¯,y¯ represent the mean of x and y respectively. sx,sy represent the standard deviations of x and y . n represents the number of terms.

The standard deviations are given by:

  sx= ( x x ¯ ) 2 n,sy= ( y y ¯ ) 2 n

Calculation:

The mean of x is given by:

  x¯=xn=30.16+30.09+29.99+29.83+29.83+30.00+29.98+29.85+30.019x¯=269.779x¯=29.97444...

The mean of y is given by:

  y¯=yn=80.1+85.5+87.0+94.5+84.0+83.2+80.1+84.9+84.09y¯=763.39y¯=84.81111...

The data can be represented in tabular form as:

  Elementary Statistics ( 3rd International Edition ) Isbn:9781260092561, Chapter 4.3, Problem 23E , additional homework tip  2

Hence, the standard deviation is given by:

  sx= ( x x ¯ ) 2 nsx= 0.09942...9sx=0.01104...

And,

  sy= ( y y ¯ ) 2 nsy= 147.44888...9sy=16.38320...

Consider, r=1n( x x ¯ )( y y ¯ )sxsy

Putting the values in the formula,

  r=1n ( x x ¯ )( y y ¯ )sxsyr=192.17444...( 0.01104... )( 16.38320... )r=0.56791...

Putting the values to obtain b1 ,

  b1=rsysxb1=(0.56791...)( 16.38320... )( 0.01104... )b1=21.87080...b121.8708

Putting the values to obtain b0 ,

  b0=y¯b1x¯b0=(84.81111...)(21.87080...)(29.97444...)b0=740.37646...b0740.3765

Hence, the least-square regression line is given by:

  y=b0+b1xy=(740.3765)+(21.8708)xy=21.8708x+740.3765

Therefore, the least squares regression line for the given data set is y=21.8708x+740.3765

b.

Expert Solution
Check Mark
To determine

The coefficient of determination.

Answer to Problem 23E

  0.3225

Explanation of Solution

Given information:

Same as part a of this exercise.

Calculation:

From part a of this exercise, the correlation coefficient is r=0.56791...

The coefficient of determination is given by:

  r2

Where r is the correlation coefficient of the data.

Putting the values to obtain Coefficient of Determination,

  r2=(0.56791...)2=0.32253...0.3225

Therefore, the Coefficient of Determination is 0.3225 .

c.

Expert Solution
Check Mark
To determine

Construct the scatterplot of the temperature (y) versus the barometric pressure (x) .

Explanation of Solution

Given information:

Below table represents the temperature, in degrees Fahrenheit, and barometric pressure, in inches of mercury, on August 15 at 12 noon in Macon, Georgia, over a nine-year period:

  Elementary Statistics ( 3rd International Edition ) Isbn:9781260092561, Chapter 4.3, Problem 23E , additional homework tip  3

Calculation:

The scatter plot can be drawn with the help of the given data. The Pressure will be taken on horizontal axis and the temperature will betaken on vertical axis.

  Elementary Statistics ( 3rd International Edition ) Isbn:9781260092561, Chapter 4.3, Problem 23E , additional homework tip  4

From the scatterplot, it is observed that there is a moderate association between the “variable temperature” and “barometric pressure”.

d.

Expert Solution
Check Mark
To determine

The points which are outliers.

Answer to Problem 23E

  (29.83,94.5)

Explanation of Solution

Given information:

Same as part a of this exercise.

Calculation:

  Elementary Statistics ( 3rd International Edition ) Isbn:9781260092561, Chapter 4.3, Problem 23E , additional homework tip  5

From above table, it can be seen that among all the y values 94.5 stands away from all other values.

Therefore, the outlier point is (29.83,94.5)

e.

Expert Solution
Check Mark
To determine

The least squares regression line for the given data set excluding the outlier.

Answer to Problem 23E

  y=7.8999x+320.5388

Explanation of Solution

Given information:

Same as part a of this exercise.

Formula used:

The equation for least-square regression line:

  y=b0+b1x

Where b1=rsysx is the slope and b0=y¯b1x¯ is the y-intercept.

The correlation coefficient of a data is given by:

  r=1n( x x ¯ )( y y ¯ )sxsy

Where,

  x¯,y¯ represent the mean of x and y respectively. sx,sy represent the standard deviations of x and y . n represents the number of terms.

The standard deviations are given by:

  sx= ( x x ¯ ) 2 n,sy= ( y y ¯ ) 2 n

Calculation:

From part d of this exercise outlier is (29.83,94.5)

Excluding the outlier,

The mean of x is given by:

  x¯=xn=30.16+30.09+29.99+29.83+30.00+29.98+29.85+30.018=239.948=29.9925

The mean of y is given by:

  y¯=yn=80.1+85.5+87.0+84.0+83.2+80.1+84.9+84.08=668.88=83.6

The data can be represented in tabular form as:

  Elementary Statistics ( 3rd International Edition ) Isbn:9781260092561, Chapter 4.3, Problem 23E , additional homework tip  6

Hence, the standard deviation is given by:

  sx= ( x x ¯ ) 2 nsx= 0.075958sx=0.00949...

And,

  sy= ( y y ¯ ) 2 nsy= 41.848sy=5.23

Consider, r=1n( x x ¯ )( y y ¯ )sxsy

Putting the values in the formula,

  r=1n ( x x ¯ )( y y ¯ )sxsyr=18( 0.6)( 0.00949... )( 5.23 )r=0.33658...

Putting the values to obtain b1 ,

  b1=rsysxb1=(0.33658...)( 5.23 )( 0.00949... )b1=7.89993...b17.8999

Plugging the values to obtain b0 ,

  b0=y¯b1x¯b0=(83.6)(7.89993...)(29.9925)b0=320.53877...b0320.5388

Hence, the least-square regression line is given by:

  y=b0+b1xy=(320.5388)+(7.8999)xy=7.8999x+320.5388

Therefore, the least squares regression line for the given data set by excluding the outlier is y=7.8999x+320.5388

f.

Expert Solution
Check Mark
To determine

Whether the outlier is influential.

Answer to Problem 23E

The outlier is influential.

Explanation of Solution

Given information:

Same as part a .

Calculation:

From part a , the least squares regression line for the given data set is y=21.8708x+740.3765

From part e , the least squares regression line for the given data set by removing the outlier is y=7.8999x+320.5388

From above equations, it can be observed that removing the outlier creates a great difference in the equation of the least square regression line.

Therefore, the outlier is influential.

g.

Expert Solution
Check Mark
To determine

The coefficient of determination for the data set excluding the outliers.

Answer to Problem 23E

  0.1133

The proportion of variation is less without the outlier.

Explanation of Solution

Given information:

Same as part a of this exercise.

Calculation:

The coefficient of determination is given by:

  r2

Where r is the correlation coefficient of the data.

From part d of this exercise, the correlation coefficient with the outlier removed is r=0.33658...

Putting the values to obtain Coefficient of Determination,

  r2=(0.33658...)2=0.11328...0.1133

Therefore, the Coefficient of Determination is 0.1133 .

Here the coefficient of determination reduced without the outlier.

Hence, the proportion of variance explained is less without the outlier.

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Chapter 4 Solutions

Elementary Statistics ( 3rd International Edition ) Isbn:9781260092561

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