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bachelor in business administration
Polytechnic State University Sanluis
Jan-2006 - Nov-2010
CPA
Polytechnic State University
Jan-2012 - Nov-2016
Professor
Harvard Square Academy (HS2)
Mar-2012 - Present
5   The variable smokes is a binary variable equal to one if a person smokes, and zero oth- erwise. Using the data in SMOKE.RAW, we estimate a linear probability model for smokes:
smokes5 .656 2 .069 log(cigpric) 1 .012 log(income) 2 .029 educ
Â
(.855) Â (.204) |
(.026) |
(.006) |
[.856] Â [.207] |
[.026] |
[.006] |
1 .020 age 2 .00026 age2 2 .101 restaurn 2 .026 white
Â
(.006) |
(.00006) |
(.039) |
(.052) |
[.005] |
[.00006] |
[.038] |
[.050] |
n 5 807, R2 5 .062.
Â
The variable white equals one if the respondent is white, and zero otherwise; the other in- dependent variables are defined in Example 8.7. Both the usual and heteroskedasticity- robust standard errors are reported.
(i)Â Â Â Â Â Â Are there any important differences between the two sets of standard errors?
(ii)Â Â Â Â Holding other factors fixed, if education increases by four years, what happens to the estimated probability of smoking?
(iii)Â Â Â At what point does another year of age reduce the probability of smoking?
(iv)  Interpret the coefficient on the binary variable restaurn (a dummy variable equal to one if the person lives in a state with restaurant smoking restrictions).
(v)    Person number 206 in the data set has the following characteristics: cigpric 5
67.44, income 5 6,500, educ 5 16, age 5 77, restaurn 5 0, white 5 0, and smokes 5 0. Compute the predicted probability of smoking for this person and comment on the result.
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