ECON 710 Midterm: ECON 710 UW Madison Midterm 2013a

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31 Jan 2019
Department
Course
Professor
Econometrics 710
Midterm Exam
March 12, 2013
Sample Answers
This exam concerns the model
yi=m(xi) + ei(1)
m(x) = ī€Œ0+ī€Œ1x+ī€Œ2x2+ī€ī€ī€ +ī€Œpxp(2)
E(ziei) = 0 (3)
zi= (1; xi; :::; xp
i)0(4)
g(x) = d
dxm(x)(5)
with iid observations (yi; xi); i = 1; :::; n: The order of the polynomial pis known.
1. How should we interpret the function m(x)given the projection assumption (3)? How should we
interpret g(x)? (Brieā€”y)
The model does not specify that m(x)is the conditional mean. Rather, equation (3) speciā€¦es that
it is a projection model. Thus m(x)is the best linear predictor of yigiven linear functions of zi:
Equivalently, it is the best predictor in the class of pth order polynomials in xi:It is also the best
mean-square approximation to the conditional mean, in the class of pth order polynomials in xi:The
function g(x)is the derivative of the best linear predictor, and equals
g(x) = ī€Œ1+ 2ī€Œ2x+ 3ī€Œ3x2+ī€ī€ī€ +pī€Œpxpī€€1
=h(x)0ī€Œ
where ī€Œ= (ī€Œ0; :::; ī€Œp)0and h(x) = (0;1;2x; 3x2; :::; pxpī€€1)0:
2. Describe an estimator ^g(x)of g(x):
Since g(x) = h(x)0ī€Œis linear in ī€Œ; the plug-in approach suggests replacing ī€Œwith the eĀ¢cient estimator
for ī€Œ: Under the projection assumption (3) OLS is the asymptotically eĀ¢cient estimator. It equals
^
ī€Œ= (Z0Z)ī€€1(Z0Y)where Yand Zare the stacked observations on yiand zi:Then the estimator for
g(x)is
^g(x) = h(x)0^
ī€Œ
=^
ī€Œ1+ 2^
ī€Œ2x+ 3^
ī€Œ3x2+ī€ī€ī€ +p^
ī€Œpxpī€€1
3. Find the asymptotic distribution of pn(^g(x)ī€€g(x)) as n! 1:
Under the projection assumption (3) plus regularity conditions, we know that as n! 1;pnī€^
ī€Œī€€ī€Œī€‘!d
N(0; Vī€Œ)where Vb=Qī€€1ī€ŠQī€€1with Q=E(ziz0
i)and ī€Š = Eī€€ziz0
ie2
iī€. Then as n! 1
pn(^g(x)ī€€g(x)) = pnī€h(x)0^
ī€Œī€€h(x)0ī€Œī€‘
=h(x)0pnī€^
ī€Œī€€ī€Œī€‘
!dh(x)0N(0; Vī€Œ) = N(0; h(x)0Vī€Œh(x)):
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Document Summary

This exam concerns the model yi = m(xi) + ei m(x) = (cid:12)0 + (cid:12)1x + (cid:12)2x2 + (cid:1)(cid:1)(cid:1) + (cid:12)pxp. The model does not specify that m(x) is the conditional mean. Rather, equation (3) speci(cid:133)es that it is a projection model. Thus m(x) is the best linear predictor of yi given linear functions of zi: = h(x)0(cid:12) where (cid:12) = ((cid:12)0; :::; (cid:12)p)0 and h(x) = (0; 1; 2x; 3x2; :::; pxp(cid:0)1)0: describe an estimator ^g(x) of g(x): Since g(x) = h(x)0(cid:12) is linear in (cid:12); the plug-in approach suggests replacing (cid:12) with the e cient estimator for (cid:12): under the projection assumption (3) ols is the asymptotically e cient estimator. ^(cid:12) = (z 0z)(cid:0)1(z 0y ) where y and z are the stacked observations on yi and zi: then the estimator for g(x) is. = ^(cid:12)1 + 2^(cid:12)2x + 3^(cid:12)3x2 + (cid:1)(cid:1)(cid:1) + p^(cid:12)pxp(cid:0)1: find the asymptotic distribution of pn (^g(x) (cid:0) g(x)) as n !

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