Chapter 10 Simple Linear Regression
If the coefficient of correlation (r) = -1.00, then
All the data points must fall exactly on a straight line with a negative slope.
The slope (B1) represents:
change in Y per unit change in X
The ratio of the regression sum of squares (SSR) to the total sum of squares (SST) is called the _____________
coefficient of determination
The strength of the linear relationship between two numerical variables is measured by the:
coefficient of determination
If the p-value for a t test for the slope is 0.021, the results are significant at the 0.01 level of significance (true or false)
false
The value of r is always positive. (true or false)
false
In a simple linear regression model, the coefficient of correlation and the slope:
must have the same sign
One of the assumptions of regression is that the residuals around the line of regression follow the __________ distribution.
normal
In simple linear regression, if the slope is positive, then the coefficient of correlation must also be _______________
positive
The residual represents the difference between the observed value of Y and the __________ value of Y.
predicted
The Y intercept (B0) represents the:
predicted value of Y when X = 0
The change in Y per unit change in X is called the _______
slope
The residuals represent:
the difference between the actual Y values and the predicted Y values.
Which of the following assumptions concerning the distribution of the variation around the line of regression (the residuals) is correct?
the distribution is normal
Assuming a straight line (linear) relationship between X and Y, if the coefficient of correlation (r) equals -0.30:
the slope is negative
In performing a regression analysis involving two numerical variables, you assume:
the variation around the line of regression is the same for each X value
The standard error of the estimate is a measure of:
the variation around the regression line
If no apparent pattern exists in the residual plot, the regression model fit is appropriate for the data. (true or false)
true
If the range of the X variable is between 100 and 300, you should not make a prediction for X = 400. (true or false)
true
Regression analysis is used for prediction, while correlation analysis is used to measure the strength of the association between two numerical variables. (true or false)
true
The coefficient of determination represents the ratio of SSR to SST: (true or false)
true
The regression sum of squares (SSR) can never be greater than the total sum of squares (SST). (true or false)
true
When the coefficient of correlation r = -1, a perfect relationship exists between X and Y. (true or false)
true
If the coefficient of determination (r2) = 1.00, then:
the error sum of squares (SSE) equals 0
The coefficient of determination (r2) tells you:
the proportion of total variation that is explained