代做ECON0060: ADVANCED MICROECONOMETRICS SUMMER TERM 2020调试R语言程序

SUMMER TERM 2020

ECON0060: ADVANCED MICROECONOMETRICS

PART A

Answer all questions. 50 marks total.

Question 1 (25 marks total)

Suppose you have data on yit  and xit  for i = 1,...,N and t = 1,...,T. Both yit  and xit  are scalars. Consider the model

yit     =  ⇢yit-1 + βxit + αi + vit ,                          (1)

vit     =  uit + φui,t-1 ,

where (⇢ , β , φ) are parameters, αi  is an unobserved individual efect, and uit   is an unobserved shock that is iid across i and t for all i = 1,...,N and t = 0,...,T.  The correlation between αi and xit  is not necessarily 0. Make the following weak exogeneity assumption:

E(uit |xi1,...,xit ) = 0   8t = 1,...,T.

a. Under these assumptions, OLS applied to model (1) does not yield consistent parameter estimates. Give as many reasons as you can to justify this statement.

b. Eliminate the fixed efect from the model by first diferencing to obtain:

yit yit yit-1  = yit-1 + β (xit xit-1 )+ vit vit-1 .

Does OLS applied to this equation provide consistent estimates of (⇢ , β)? Explain.

c. How can you estimate (⇢ , β , φ) consistently?

d. What condition is required on xit?

Question 2 (25 marks total)

Consider the static panel data model

yit  = βxit  + εit ,

where i = 1, . . . ,n denotes individuals, and t = 1, 2 denotes time. The single regressor xit  and the error term εit  are distributed as follows

For any real number q define the diferences △ (q)yi   = yi1   − q yi2 , △ (q) xi   = xi1   − qxi2, and △ (q) εi  = εi1  − q εi2 . For q = 1 these are standard first diferences.  The OLS estimator of the regression of △ (q)yi  on △ (q) xi  is given by

a. Is the OLS estimator of the regression of yit  on xit  consistent for β? Explain.

b. Show that there exist a constant c such that

xi1  = cαi  + ˜(x)i1,     xi2  = αi  + ˜(x)i2 , εi1  = αi + ui1 , εi2  = αi + ui2 ,

where αi ,˜(x)i1 ,˜(x)i2 , ui1 and ui2 are mutually independent standard normal random variables. What is the value of c?  (Hint: you can start with the representation of xi1 , xi2 , εi1   and εi2  given here. Then show that xi1 , xi2 , εi1  and εi2  are jointly normal with mean zero, and that there exists c that delivers the 4 × 4 variance-covariance matrix above).

c. For q = 1, explain briefly whyβ(ˆ)(1)  is consistent and asymptotically normal, and derive the asymptotic variance ofβ(ˆ)(1) . (Hint: use the result of part b.)

d. Show that there exists a value q 1 for whichβ(ˆ)(q)  is also a consistent estimator for β . For this value of q explain briefly whyβ(ˆ)(q)  is consistent and asymptotically normal, and derive the asymptotic variance ofβ(ˆ)(q) . (Hint: use the result of part b.)

e. Would you recommend to use β(ˆ)(1)  or the estimatorβ(ˆ)(q)  from part d.?

PART B

Answer all questions.  50 marks total.

Question 3 (25 marks total)

Consider the following Type II Tobit selection model:

y1     = xi1β1 + εi1

yi1     =   yi2 · y1

yi2     =   1[xi2β2 + εi2  ≥ 0]

from which one obtains a random sample of observations denoted {(y1i)y2i)x1i)儿2i) : i = 1)...)n}. The variables  xi1  and xi2  are vectors of dimension  k1  and  k2  respectively.   y1   is the outcome of interest  but  is  only  observed  when  yi2   =  1.    Assume  that  (εi1) εi2)  and 儿i   =  (儿i1)儿i2)  are independent and that (εi1) εi2) are bivariate normally distributed, each with mean zero and with uar (εi1) = σ11 , uar (εi2) = 1, and cou (εi1) εi2) = σ12 .

a.  What is the selection probability Pr(yi2  = 1|儿i ) in this model?  Which parameters can be estimated using the selection probability alone?   How  can you  consistently estimate the parameters of the selection probability?  State any additional conditions required.

b.  What is E(yi1|yi2  = 1, xi )?

Hint:  Since εi1  and εi2  are jointly normal,  εi1| εi2  ~ N (σ12εi2 ) σ11 - σ 1(2)2 ).  Further, recall that since εi2  is a standard normal random variable, for any real number c,

where φ (·) and Φ (·) denote the standard normal pdf and cdf, respectively.

c.  Solve for the conditional density for yi1  given yi2  = 1 and x.  What is the log likelihood for this model?

Hint:  Since εi1  and εi2  are jointly normal, the conditional density of εi1  given εi2  ≥ c is

where f (εi1|εi2; σ11) σ12 ) is the density of εi1 conditional on εi2 . You can use this expression in your answer.

d.  Propose  two diferent ways to consistently estimate β1 .    Which provides a more efficient estimator asymptotically?

e.  Why  might one wish to test the hypothesis that σ12  = 0?  What implication would this have?

Question 4 (25 marks total)

Let y1i  ∈ {C,B, A} be the credit rating for consumer i where C < B < A. That is, C is the

lowest rating and A is the highest. Suppose a consumer’s credit rating, y1i, is determined by y 1(*)i ,

an unobserved measure of “credit worthiness”, according to the following ordered probit model

where (A1 , A2 , A3 ) are unknown cutofs to be estimated. Further, assume that

y 1(*)i     =  x1iβ1 + y2i + ε 1i

y2i     =  x2iβ2  + v2i

where y2i   is credit card spending in the past year and (x1i, x2i) are observable demographic variables that afect credit worthiness and credit card spending.  The variables (ε 1i, v2i) are unobservables.  Assume that v2i   ~ N (0, eαx2i).   In other words, v2i   is heteroscedastic with

variance that depends on x2i.  Define the homoscedastic error ε2i  = e- α2(x)2i v2i  and assume that

(ε 1i, ε2i) are jointly normally distributed independent of (x1i, x2i).  In particular, assume that var(ε 1i) = var(ε2i) = 1 and cov(ε 1i,ε2i) = P. You observe a random sample with N observations on (y1i, y2i, x1i, x2i).

a. Propose N consistent estimators for (β2, α).

b. Show that ε 1i  = Pε2i + η 1i  where η 1i  is normally distributed independent of (x1i, x2i, ε2i). What is the variance of η1i?

c. Propose a two-step method for consistently estimating (β1, √ , A1 , A2, P).

d. How would you estimate the average partial efect of (x1i, y2i) on credit ratings?








热门主题

课程名

mktg2509 csci 2600 38170 lng302 csse3010 phas3226 77938 arch1162 engn4536/engn6536 acx5903 comp151101 phl245 cse12 comp9312 stat3016/6016 phas0038 comp2140 6qqmb312 xjco3011 rest0005 ematm0051 5qqmn219 lubs5062m eee8155 cege0100 eap033 artd1109 mat246 etc3430 ecmm462 mis102 inft6800 ddes9903 comp6521 comp9517 comp3331/9331 comp4337 comp6008 comp9414 bu.231.790.81 man00150m csb352h math1041 eengm4100 isys1002 08 6057cem mktg3504 mthm036 mtrx1701 mth3241 eeee3086 cmp-7038b cmp-7000a ints4010 econ2151 infs5710 fins5516 fin3309 fins5510 gsoe9340 math2007 math2036 soee5010 mark3088 infs3605 elec9714 comp2271 ma214 comp2211 infs3604 600426 sit254 acct3091 bbt405 msin0116 com107/com113 mark5826 sit120 comp9021 eco2101 eeen40700 cs253 ece3114 ecmm447 chns3000 math377 itd102 comp9444 comp(2041|9044) econ0060 econ7230 mgt001371 ecs-323 cs6250 mgdi60012 mdia2012 comm221001 comm5000 ma1008 engl642 econ241 com333 math367 mis201 nbs-7041x meek16104 econ2003 comm1190 mbas902 comp-1027 dpst1091 comp7315 eppd1033 m06 ee3025 msci231 bb113/bbs1063 fc709 comp3425 comp9417 econ42915 cb9101 math1102e chme0017 fc307 mkt60104 5522usst litr1-uc6201.200 ee1102 cosc2803 math39512 omp9727 int2067/int5051 bsb151 mgt253 fc021 babs2202 mis2002s phya21 18-213 cege0012 mdia1002 math38032 mech5125 07 cisc102 mgx3110 cs240 11175 fin3020s eco3420 ictten622 comp9727 cpt111 de114102d mgm320h5s bafi1019 math21112 efim20036 mn-3503 fins5568 110.807 bcpm000028 info6030 bma0092 bcpm0054 math20212 ce335 cs365 cenv6141 ftec5580 math2010 ec3450 comm1170 ecmt1010 csci-ua.0480-003 econ12-200 ib3960 ectb60h3f cs247—assignment tk3163 ics3u ib3j80 comp20008 comp9334 eppd1063 acct2343 cct109 isys1055/3412 math350-real math2014 eec180 stat141b econ2101 msinm014/msing014/msing014b fit2004 comp643 bu1002 cm2030
联系我们
EMail: 99515681@qq.com
QQ: 99515681
留学生作业帮-留学生的知心伴侣!
工作时间:08:00-21:00
python代写
微信客服:codinghelp
站长地图