
Introductory Econometrics: A Modern Approach 6th Edition by Jeffrey M Wooldridge
Edition 6ISBN: 130527010X
Introductory Econometrics: A Modern Approach 6th Edition by Jeffrey M Wooldridge
Edition 6ISBN: 130527010X(i) Consider the simple regression model y = ?0 + ?1x + u under the first four Gauss Markov assumptions. For some function g(x), for example g(x) = x2 or g(x) = log(1 + x2), define zt = g(x1). Define a slope estimator as
Show that ?1 is linear and unbiased. Remember, because E(u|x) = 0, you can treat both x. and zt as nonrandom in your derivation.
(ii) Add the homoskedasticity assumption, MLR.5. Show that
(iii) Show directly that, under the Gauss-Markov assumptions, Var(r1) 1 is the OLS estimator. [Hint: The Cauchy-Schwartz inequality in Appendix B implies that
notice that we can drop x from the sample covariance.]
Step 1 of 3
(i)
For simplicity, define
; this is not quite the sample covariance between z and x because it is not divided by n – 1, but will only be used to simplify the notation. Then write
as:
This is clearly a linear function of the yi. Take the weights to be
. To show unbiasedness, as usual plug
into this equation, and simplify:
Use the fact that
always. Now
is a function of the zi and xi and the expected value of each ui is zero conditional on all zi and xi in the sample. Therefore, conditional on these values:
Because E(ui) = 0 for all i.
Step 2 of 3
Step 3 of 3
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Other![<blockquote> (i) Consider the simple regression model y = ?<span class=sub>0</span> + ?<span class=sub>1</span>x + u under the first four Gauss Markov assumptions. For some function g(x), for example g(x) = x2 or g(x) = log(1 + x2), define zt = g(x1). Define a slope estimator as Show that ?<span class=sub>1</span> is linear and unbiased. Remember, because E(u|x) = 0, you can treat both x. and zt as nonrandom in your derivation. (ii) Add the homoskedasticity assumption, MLR.5. Show that (iii) Show directly that, under the Gauss-Markov assumptions, Var(r1)<var(s1), where= ?<span= class=sub> 1 is the OLS estimator. [Hint: The Cauchy-Schwartz inequality in Appendix B implies that </var(s1),> notice that we can drop x from the sample covariance.] </blockquote>](https://d2lvgg3v3hfg70.cloudfront.net/SMCC2709/221c6631_1dc7_4a17_8083_6921dbbddcc1_SMCC2709_11.jpg)
![<blockquote> (i) Consider the simple regression model y = ?<span class=sub>0</span> + ?<span class=sub>1</span>x + u under the first four Gauss Markov assumptions. For some function g(x), for example g(x) = x2 or g(x) = log(1 + x2), define zt = g(x1). Define a slope estimator as Show that ?<span class=sub>1</span> is linear and unbiased. Remember, because E(u|x) = 0, you can treat both x. and zt as nonrandom in your derivation. (ii) Add the homoskedasticity assumption, MLR.5. Show that (iii) Show directly that, under the Gauss-Markov assumptions, Var(r1)<var(s1), where= ?<span= class=sub> 1 is the OLS estimator. [Hint: The Cauchy-Schwartz inequality in Appendix B implies that </var(s1),> notice that we can drop x from the sample covariance.] </blockquote>](https://d2lvgg3v3hfg70.cloudfront.net/SMCC2709/b22eb843_7afc_4637_80b7_8ec3a253e241_SMCC2709_11.jpg)
![<blockquote> (i) Consider the simple regression model y = ?<span class=sub>0</span> + ?<span class=sub>1</span>x + u under the first four Gauss Markov assumptions. For some function g(x), for example g(x) = x2 or g(x) = log(1 + x2), define zt = g(x1). Define a slope estimator as Show that ?<span class=sub>1</span> is linear and unbiased. Remember, because E(u|x) = 0, you can treat both x. and zt as nonrandom in your derivation. (ii) Add the homoskedasticity assumption, MLR.5. Show that (iii) Show directly that, under the Gauss-Markov assumptions, Var(r1)<var(s1), where= ?<span= class=sub> 1 is the OLS estimator. [Hint: The Cauchy-Schwartz inequality in Appendix B implies that </var(s1),> notice that we can drop x from the sample covariance.] </blockquote>](https://d2lvgg3v3hfg70.cloudfront.net/SMCC2709/e6f3b500_9298_4b5f_9220_200e534089a9_SMCC2709_11.jpg)

