Question 13 (1 point)
Consider the following residual plots for the Cabbages scenario and Orange Trees scenario.
Based on the residual plots, choose the correct statement from the following.
Question 13 options:
It is appropriate to use the linear regression model for the Cabbages scenario because the values are closely clustered together in the residual plot for this scenario. |
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It is appropriate to use the linear regression model for the Orange Trees scenario because the residual values are larger for this scenario. |
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It is appropriate to use the linear regression model for the Cabbages scenario because the residual plot for this scenario shows more constant variance. |
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It is appropriate to use the linear regression model for the Orange Trees scenario because the residual plot for this scenario shows more constant variance. |
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It is appropriate to use the linear regression model for the Orange Trees scenario because the values are closely clustered together in the residual plot for this scenario. |
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It is appropriate to use the linear regression model for the Cabbages scenario because the residual values are smaller for this scenario. |
Based on the residual plots, the correct statement is:
It is appropriate to use the linear regression model for the Cabbages scenario because the residual plot for this scenario shows more constant variance.
Option C is correct.
Question 13 (1 point) Consider the following residual plots for the Cabbages scenario and Orange Trees...
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