Statistics for Behavior Sciences - LMS MindTap
Statistics for Behavior Sciences - LMS MindTap
10th Edition
ISBN: 9781337276016
Author: GRAVETTER
Publisher: CENGAGE L
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Chapter 16, Problem 21P

21. Problem 18 in Chapter 15 (p. 526) presented data showing the number of crime, the amount spend on crime prevention, and the population for a set n = 12 cities. At that time, we used a partial correlation to evaluate the relationship between the amount spent on crime prevention and the number of crimes crime while controlling population. It is possible to use multiple regression to accomplish essentially the same purpose. The data are as follows:

    Number of

crimesAmount for PreventionPopulation Size 3 6 1 4 7 1 6 3 1 1 4 1 8 11 2 9 12 2 11 8 2 l2 9 2 l3 16 3 l4 17 3 l6 13 3 l7 14 3

  1. Find the multiple regression equation for predict­ ing the number of crimes using the amount spent on prevention and population as the two predictor variables.

  • Find the value of R2for the regression equation.
  • 18. A researcher records the annual number of serious crimes and the amount spent on crime prevention for several small towns, medium cities, and large cities across the country. The resulting data show a strong positive correlation between the number of serious crimes and the amount spent on crime prevention. However, the researcher suspects that the positive correlation is actually caused by population; as population increases, both the amount spent on crime prevention and the number of crimes will also increase. If population is controlled, there probably should be a negative correlation between the amount spent on crime prevention and the number of serious crimes. The following data show the pattern of results obtained. Note that the municipalities are coded in three categories. Use a partial correlation holding population constant to measure the true relationship between crime rate and the amount spent on prevention.

      Number of

    crimesAmount for PreventionPopulation Size 3 6 1 4 7 1 6 3 1 7 4 1 8 11 2 ,9 12 2 11 8 2 12 9 2 13 16 3 14 l7 3 16 l3 3 17 l4 3

    Expert Solution & Answer
    Check Mark
    To determine
    1. Find the multiple regression equation for predicting the number of crimes using the amount spent on prevention and population size.
    2. Find the value of R 2 .

    Answer to Problem 21P

    Solution:

    1. The regression equation is Y=0.8 X 1 +9 X 2 .

      The value of R 2 is 0.953.

    Explanation of Solution

    Given:

    Let Number of Crimes be Y , Amount for Prevention be X 1 and Population Size be X 2 . Here, n=12 because there are 12 observations. The data is shown below:

    Number of Crimes Amount for Prevention Population Size
    Y X 1 X 2
    3 6 1
    4 7 1
    6 3 1
    7 4 1
    8 11 2
    9 12 2
    11 8 2
    12 9 2
    13 16 3
    14 17 3
    16 13 3
    17 14 3

    Formula used:

    The general form of the multiple-regression equation is:

    Y ^ = b 1 X 1 + b 2 X 2 +a

    The values for the multiple regression equation are:

    b 1 = ( S P X 1 Y )( S S X 2 )( S P X 1 X 2 )( S P X 2 Y ) ( S S X 1 )( S S X 2 ) ( S P X 1 X 2 ) 2 b 2 = ( S P X 2 Y )( S S X 1 )( S P X 1 X 2 )( S P X 1 Y ) ( S S X 1 )( S S X 2 ) ( S P X 1 X 2 ) 2 a= M Y b 1 M X 1 b 2 M X 2

    Where:

    M Y = Y n M X 1 = X 1 n M X 2 = X 2 n S P X 1 Y = X 1 Y ( X 1 )( Y ) n S P X 2 Y = X 2 Y ( X 2 )( Y ) n S P X 1 X 2 = X 1 X 2 ( X 1 )( X 2 ) n S S X 1 = ( X 1 M X 1 ) 2 S S X 2 = ( X 2 M X 2 ) 2 S S Y = ( Y M Y ) 2

    The formula of R 2 is:

    R 2 = b 1 S P X 1 Y + b 2 S P X 2 Y S S Y

    Calculation:

    1. Consider the following table:
      Y X 1 X 2 X 1 Y X 2 Y X 1 X 2
      3 6 1 18 3 6
      4 7 1 28 4 7
      6 3 1 18 6 3
      7 4 1 28 7 4
      8 11 2 88 16 22
      9 12 2 108 18 24
      11 8 2 88 22 16
      12 9 2 108 24 18
      13 16 3 208 39 48
      14 17 3 238 42 51
      16 13 3 208 48 39
      17 14 3 238 51 42
      SUM 120 120 24 1376 280 280
    2. The values for the multiple regression equation are:

      b 1 = ( S P X 1 Y )( S S X 2 )( S P X 1 X 2 )( S P X 2 Y ) ( S S X 1 )( S S X 2 ) ( S P X 1 X 2 ) 2 = ( 176 )( 8 )( 40 )( 40 ) ( 230 )( 8 ) ( 40 ) 2 = 192 240 =0.8

      b 2 = ( S P X 2 Y )( S S X 1 )( S P X 1 X 2 )( S P X 1 Y ) ( S S X 1 )( S S X 2 ) ( S P X 1 X 2 ) 2 = ( 40 )( 230 )( 40 )( 176 ) ( 230 )( 8 ) ( 40 ) 2 = 2160 240 =9

      a= M Y b 1 M X 1 b 2 M X 2 =10( 0.8 )( 10 )9( 2 ) =10+818 =0

      The multiple-regression equation is:

      Y ^ =0.8 X 1 +9 X 2

    3. The value of R 2 is:

      R 2 = b 1 S P X 1 Y + b 2 S P X 2 Y S S Y = 0.8( 176 )+9( 40 ) 230 = 219.2 230 =0.953

    Conclusion:

    1. The multiple-regression equation is: Y ^ =0.8 X 1 +9 X 2
    2. The value of R 2 is 0.953.

    Justification:

    Since there are more than one explanatory variable, use multiple regression.

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