Multiple Choice
As a project for his business statistics class, a student examined the factors that determined parking meter rates throughout the campus area. Data were collected for the price per hour of parking, blocks to the quadrangle, and one of the three jurisdictions: on campus, in downtown and off campus, or outside of downtown and off campus. The population regression model hypothesized is Yi = α + β0 + β1X1i + β2X2i + β3X3i + ε
Where
Y is the meter price
X1 is the number of blocks to the quad
X2 is a dummy variable that takes the value 1 if the meter is located in downtown and off campus and the value 0 otherwise
X3 is a dummy variable that takes the value 1 if the meter is located outside of downtown and off campus, and the value 0 otherwise
Suppose that whether the meter is located on campus is an important explanatory factor. Why should the variable that depicts this attribute not be included in the model?
A) Its inclusion will introduce autocorrelation.
B) Its inclusion will introduce collinearity.
C) Its inclusion will inflate the standard errors of the estimated coefficients.
D) Both B and C.
Correct Answer:

Verified
Correct Answer:
Verified
Q1: TABLE 15-3<br>A chemist employed by a pharmaceutical
Q20: TABLE 15-4<br>The superintendent of a school district
Q28: The Variance Inflationary Factor (VIF)measures the<br>A)correlation of
Q31: TABLE 15-4<br> <img src="https://d2lvgg3v3hfg70.cloudfront.net/TB1602/.jpg" alt="TABLE 15-4
Q42: So that we can fit curves as
Q45: TABLE 15-5<br>What are the factors that determine
Q47: TABLE 15-3<br>A chemist employed by a pharmaceutical
Q48: Which of the following is used to
Q51: TABLE 15-3<br>A chemist employed by a pharmaceutical
Q60: The parameter estimates are biased when collinearity