Ds 533 Fall 2004 Exam # 3


Multiple Choice Questions



Download 376.15 Kb.
Page4/4
Date20.05.2018
Size376.15 Kb.
#50222
1   2   3   4
Multiple Choice Questions

Select the best answer
1. In choosing the “best-fitting” line through a set of points in linear regression, we choose the one with the:


  1. smallest sum of squared residuals **

  2. largest sum of squared residuals

  3. smallest number of outliers

  4. largest number of points on the line

  5. none of the above

2. In a multiple regression analysis, there are 25 data points and 5 independent variables, and the sum of the squared differences between observed and predicted values of y is 160. The regression standard error will be:




  1. 2.530

  2. 3.464

  3. 2.902**

  4. 5.657

  5. none of the above

3. In a simple linear regression analysis, the following sum of squares are produced:



The proportion of the variation in y that is explained by the variation in x is:


  1. 20%

  2. 80%**

  3. 25%

  4. 50%

  5. none of the above


4. Given the least squares regression line 8 – 3x,


  1. the relationship between x and y is positive

  2. the relationship between x and y is negative**

  3. as x increases, so does y

  4. as x decreases, so does y

  5. there is no relationship between x and y

5. A multiple regression equation includes 6 independent variables, and the coefficient of multiple determination is 0.91. The percentage of the variation in y that is explained by the regression equation is:




  1. 91%**

  2. 95%

  3. 83%

  4. about 15%

  5. none of the above

6. A “fan” shape in a scatterplot indicates:




  1. unequal variance**

  2. a nonlinear relationship

  3. he absence of outliers

  4. sampling error

7. The values of the regression parameters i are not known. We estimate them from the data.

a) True ** b) false c) Not enough information
8. Residual plots can be used to check the aptness of the model for the data.

a) True** b) False c) Not enough information




  1. We need to estimate the variance of the error terms because:

    1. It gives an indication of the variability of the distribution of y.

    2. It is needed for making inference concerning regression function and the prediction of y.

a) Only (I) is true.

b) Only (II) is true.



  1. Both (I) and (II) are true.**

  2. Neither (I) nor (II) is true.





Download 376.15 Kb.

Share with your friends:
1   2   3   4




The database is protected by copyright ©ininet.org 2024
send message

    Main page