
Introduction to Econometrics 3rd Edition by James Stock, James Stock
النسخة 3الرقم المعياري الدولي: 978-9352863501
Introduction to Econometrics 3rd Edition by James Stock, James Stock
النسخة 3الرقم المعياري الدولي: 978-9352863501 تمرين 6
This exercise takes up the problem of missing data discussed in Section 9.2. Consider the regression model
where all variables are scalars and the constant term/intercept is omitted for convenience.
a. Suppose that the least assumptions in Key Concept 4.3 are satisfied. Show that the least squares estimator of ß is unbiased and consistent.
b. Now suppose that some of the observations are missing. Let I i , denote a binary random variable that indicates the nonmissing observations; that is, I i = 1 if observation i is not missing and I i = 0 if observation i is missing. Assume that
are i.i.d.
i. Show that the OLS estimator can be written as
ii. Suppose that data are "missing completely at random" in the sense that
where p is a constant. Show that
is unbiased and consistent.
iii. Suppose that the probability that the i th observation is missing depends of X i but not on u i ; that is,
Show that
is unbiased and consistent.
iv. Suppose that the probability that the i th observation is missing depends on both X i and u i ; that is,
Is
unbiased Is
consistent Explain.
c. Suppose that ß = 1 and that X i and u i are mutually independent standard normal random variables [so that both X t and iq are distributed N (0,1)]. Suppose that I i = 1 when Y i 0, but I i = 0 when Y i 0. Is
unbiased Is
consistent Explain.
![This exercise takes up the problem of missing data discussed in Section 9.2. Consider the regression model where all variables are scalars and the constant term/intercept is omitted for convenience. a. Suppose that the least assumptions in Key Concept 4.3 are satisfied. Show that the least squares estimator of ß is unbiased and consistent. b. Now suppose that some of the observations are missing. Let I i , denote a binary random variable that indicates the nonmissing observations; that is, I i = 1 if observation i is not missing and I i = 0 if observation i is missing. Assume that are i.i.d. i. Show that the OLS estimator can be written as ii. Suppose that data are missing completely at random in the sense that where p is a constant. Show that is unbiased and consistent. iii. Suppose that the probability that the i th observation is missing depends of X i but not on u i ; that is, Show that is unbiased and consistent. iv. Suppose that the probability that the i th observation is missing depends on both X i and u i ; that is, Is unbiased Is consistent Explain. c. Suppose that ß = 1 and that X i and u i are mutually independent standard normal random variables [so that both X t and iq are distributed N (0,1)]. Suppose that I i = 1 when Y i 0, but I i = 0 when Y i 0. Is unbiased Is consistent Explain.](https://d2lvgg3v3hfg70.cloudfront.net/SM2686/11eb9b5b_3f75_b59f_bf3e_0b267a0a4703_SM2686_00.jpg)
a. Suppose that the least assumptions in Key Concept 4.3 are satisfied. Show that the least squares estimator of ß is unbiased and consistent.
b. Now suppose that some of the observations are missing. Let I i , denote a binary random variable that indicates the nonmissing observations; that is, I i = 1 if observation i is not missing and I i = 0 if observation i is missing. Assume that
![This exercise takes up the problem of missing data discussed in Section 9.2. Consider the regression model where all variables are scalars and the constant term/intercept is omitted for convenience. a. Suppose that the least assumptions in Key Concept 4.3 are satisfied. Show that the least squares estimator of ß is unbiased and consistent. b. Now suppose that some of the observations are missing. Let I i , denote a binary random variable that indicates the nonmissing observations; that is, I i = 1 if observation i is not missing and I i = 0 if observation i is missing. Assume that are i.i.d. i. Show that the OLS estimator can be written as ii. Suppose that data are missing completely at random in the sense that where p is a constant. Show that is unbiased and consistent. iii. Suppose that the probability that the i th observation is missing depends of X i but not on u i ; that is, Show that is unbiased and consistent. iv. Suppose that the probability that the i th observation is missing depends on both X i and u i ; that is, Is unbiased Is consistent Explain. c. Suppose that ß = 1 and that X i and u i are mutually independent standard normal random variables [so that both X t and iq are distributed N (0,1)]. Suppose that I i = 1 when Y i 0, but I i = 0 when Y i 0. Is unbiased Is consistent Explain.](https://d2lvgg3v3hfg70.cloudfront.net/SM2686/11eb9b5b_3f75_b5a0_bf3e_0366a1c02206_SM2686_11.jpg)
i. Show that the OLS estimator can be written as
![This exercise takes up the problem of missing data discussed in Section 9.2. Consider the regression model where all variables are scalars and the constant term/intercept is omitted for convenience. a. Suppose that the least assumptions in Key Concept 4.3 are satisfied. Show that the least squares estimator of ß is unbiased and consistent. b. Now suppose that some of the observations are missing. Let I i , denote a binary random variable that indicates the nonmissing observations; that is, I i = 1 if observation i is not missing and I i = 0 if observation i is missing. Assume that are i.i.d. i. Show that the OLS estimator can be written as ii. Suppose that data are missing completely at random in the sense that where p is a constant. Show that is unbiased and consistent. iii. Suppose that the probability that the i th observation is missing depends of X i but not on u i ; that is, Show that is unbiased and consistent. iv. Suppose that the probability that the i th observation is missing depends on both X i and u i ; that is, Is unbiased Is consistent Explain. c. Suppose that ß = 1 and that X i and u i are mutually independent standard normal random variables [so that both X t and iq are distributed N (0,1)]. Suppose that I i = 1 when Y i 0, but I i = 0 when Y i 0. Is unbiased Is consistent Explain.](https://d2lvgg3v3hfg70.cloudfront.net/SM2686/11eb9b5b_3f75_b5a1_bf3e_95f5cdd8639b_SM2686_00.jpg)
ii. Suppose that data are "missing completely at random" in the sense that
![This exercise takes up the problem of missing data discussed in Section 9.2. Consider the regression model where all variables are scalars and the constant term/intercept is omitted for convenience. a. Suppose that the least assumptions in Key Concept 4.3 are satisfied. Show that the least squares estimator of ß is unbiased and consistent. b. Now suppose that some of the observations are missing. Let I i , denote a binary random variable that indicates the nonmissing observations; that is, I i = 1 if observation i is not missing and I i = 0 if observation i is missing. Assume that are i.i.d. i. Show that the OLS estimator can be written as ii. Suppose that data are missing completely at random in the sense that where p is a constant. Show that is unbiased and consistent. iii. Suppose that the probability that the i th observation is missing depends of X i but not on u i ; that is, Show that is unbiased and consistent. iv. Suppose that the probability that the i th observation is missing depends on both X i and u i ; that is, Is unbiased Is consistent Explain. c. Suppose that ß = 1 and that X i and u i are mutually independent standard normal random variables [so that both X t and iq are distributed N (0,1)]. Suppose that I i = 1 when Y i 0, but I i = 0 when Y i 0. Is unbiased Is consistent Explain.](https://d2lvgg3v3hfg70.cloudfront.net/SM2686/11eb9b5b_3f75_b5a2_bf3e_0dc2d0b98a68_SM2686_11.jpg)
![This exercise takes up the problem of missing data discussed in Section 9.2. Consider the regression model where all variables are scalars and the constant term/intercept is omitted for convenience. a. Suppose that the least assumptions in Key Concept 4.3 are satisfied. Show that the least squares estimator of ß is unbiased and consistent. b. Now suppose that some of the observations are missing. Let I i , denote a binary random variable that indicates the nonmissing observations; that is, I i = 1 if observation i is not missing and I i = 0 if observation i is missing. Assume that are i.i.d. i. Show that the OLS estimator can be written as ii. Suppose that data are missing completely at random in the sense that where p is a constant. Show that is unbiased and consistent. iii. Suppose that the probability that the i th observation is missing depends of X i but not on u i ; that is, Show that is unbiased and consistent. iv. Suppose that the probability that the i th observation is missing depends on both X i and u i ; that is, Is unbiased Is consistent Explain. c. Suppose that ß = 1 and that X i and u i are mutually independent standard normal random variables [so that both X t and iq are distributed N (0,1)]. Suppose that I i = 1 when Y i 0, but I i = 0 when Y i 0. Is unbiased Is consistent Explain.](https://d2lvgg3v3hfg70.cloudfront.net/SM2686/11eb9b5b_3f75_b5a3_bf3e_359f15b3ccc9_SM2686_11.jpg)
iii. Suppose that the probability that the i th observation is missing depends of X i but not on u i ; that is,
![This exercise takes up the problem of missing data discussed in Section 9.2. Consider the regression model where all variables are scalars and the constant term/intercept is omitted for convenience. a. Suppose that the least assumptions in Key Concept 4.3 are satisfied. Show that the least squares estimator of ß is unbiased and consistent. b. Now suppose that some of the observations are missing. Let I i , denote a binary random variable that indicates the nonmissing observations; that is, I i = 1 if observation i is not missing and I i = 0 if observation i is missing. Assume that are i.i.d. i. Show that the OLS estimator can be written as ii. Suppose that data are missing completely at random in the sense that where p is a constant. Show that is unbiased and consistent. iii. Suppose that the probability that the i th observation is missing depends of X i but not on u i ; that is, Show that is unbiased and consistent. iv. Suppose that the probability that the i th observation is missing depends on both X i and u i ; that is, Is unbiased Is consistent Explain. c. Suppose that ß = 1 and that X i and u i are mutually independent standard normal random variables [so that both X t and iq are distributed N (0,1)]. Suppose that I i = 1 when Y i 0, but I i = 0 when Y i 0. Is unbiased Is consistent Explain.](https://d2lvgg3v3hfg70.cloudfront.net/SM2686/11eb9b5b_3f75_dcb4_bf3e_e521c77fb5ba_SM2686_11.jpg)
![This exercise takes up the problem of missing data discussed in Section 9.2. Consider the regression model where all variables are scalars and the constant term/intercept is omitted for convenience. a. Suppose that the least assumptions in Key Concept 4.3 are satisfied. Show that the least squares estimator of ß is unbiased and consistent. b. Now suppose that some of the observations are missing. Let I i , denote a binary random variable that indicates the nonmissing observations; that is, I i = 1 if observation i is not missing and I i = 0 if observation i is missing. Assume that are i.i.d. i. Show that the OLS estimator can be written as ii. Suppose that data are missing completely at random in the sense that where p is a constant. Show that is unbiased and consistent. iii. Suppose that the probability that the i th observation is missing depends of X i but not on u i ; that is, Show that is unbiased and consistent. iv. Suppose that the probability that the i th observation is missing depends on both X i and u i ; that is, Is unbiased Is consistent Explain. c. Suppose that ß = 1 and that X i and u i are mutually independent standard normal random variables [so that both X t and iq are distributed N (0,1)]. Suppose that I i = 1 when Y i 0, but I i = 0 when Y i 0. Is unbiased Is consistent Explain.](https://d2lvgg3v3hfg70.cloudfront.net/SM2686/11eb9b5b_3f75_dcb5_bf3e_fb6d137f8bfb_SM2686_11.jpg)
iv. Suppose that the probability that the i th observation is missing depends on both X i and u i ; that is,
![This exercise takes up the problem of missing data discussed in Section 9.2. Consider the regression model where all variables are scalars and the constant term/intercept is omitted for convenience. a. Suppose that the least assumptions in Key Concept 4.3 are satisfied. Show that the least squares estimator of ß is unbiased and consistent. b. Now suppose that some of the observations are missing. Let I i , denote a binary random variable that indicates the nonmissing observations; that is, I i = 1 if observation i is not missing and I i = 0 if observation i is missing. Assume that are i.i.d. i. Show that the OLS estimator can be written as ii. Suppose that data are missing completely at random in the sense that where p is a constant. Show that is unbiased and consistent. iii. Suppose that the probability that the i th observation is missing depends of X i but not on u i ; that is, Show that is unbiased and consistent. iv. Suppose that the probability that the i th observation is missing depends on both X i and u i ; that is, Is unbiased Is consistent Explain. c. Suppose that ß = 1 and that X i and u i are mutually independent standard normal random variables [so that both X t and iq are distributed N (0,1)]. Suppose that I i = 1 when Y i 0, but I i = 0 when Y i 0. Is unbiased Is consistent Explain.](https://d2lvgg3v3hfg70.cloudfront.net/SM2686/11eb9b5b_3f75_dcb6_bf3e_97e5d815a6ba_SM2686_11.jpg)
![This exercise takes up the problem of missing data discussed in Section 9.2. Consider the regression model where all variables are scalars and the constant term/intercept is omitted for convenience. a. Suppose that the least assumptions in Key Concept 4.3 are satisfied. Show that the least squares estimator of ß is unbiased and consistent. b. Now suppose that some of the observations are missing. Let I i , denote a binary random variable that indicates the nonmissing observations; that is, I i = 1 if observation i is not missing and I i = 0 if observation i is missing. Assume that are i.i.d. i. Show that the OLS estimator can be written as ii. Suppose that data are missing completely at random in the sense that where p is a constant. Show that is unbiased and consistent. iii. Suppose that the probability that the i th observation is missing depends of X i but not on u i ; that is, Show that is unbiased and consistent. iv. Suppose that the probability that the i th observation is missing depends on both X i and u i ; that is, Is unbiased Is consistent Explain. c. Suppose that ß = 1 and that X i and u i are mutually independent standard normal random variables [so that both X t and iq are distributed N (0,1)]. Suppose that I i = 1 when Y i 0, but I i = 0 when Y i 0. Is unbiased Is consistent Explain.](https://d2lvgg3v3hfg70.cloudfront.net/SM2686/11eb9b5b_3f75_dcb7_bf3e_8b31611b8f1c_SM2686_11.jpg)
![This exercise takes up the problem of missing data discussed in Section 9.2. Consider the regression model where all variables are scalars and the constant term/intercept is omitted for convenience. a. Suppose that the least assumptions in Key Concept 4.3 are satisfied. Show that the least squares estimator of ß is unbiased and consistent. b. Now suppose that some of the observations are missing. Let I i , denote a binary random variable that indicates the nonmissing observations; that is, I i = 1 if observation i is not missing and I i = 0 if observation i is missing. Assume that are i.i.d. i. Show that the OLS estimator can be written as ii. Suppose that data are missing completely at random in the sense that where p is a constant. Show that is unbiased and consistent. iii. Suppose that the probability that the i th observation is missing depends of X i but not on u i ; that is, Show that is unbiased and consistent. iv. Suppose that the probability that the i th observation is missing depends on both X i and u i ; that is, Is unbiased Is consistent Explain. c. Suppose that ß = 1 and that X i and u i are mutually independent standard normal random variables [so that both X t and iq are distributed N (0,1)]. Suppose that I i = 1 when Y i 0, but I i = 0 when Y i 0. Is unbiased Is consistent Explain.](https://d2lvgg3v3hfg70.cloudfront.net/SM2686/11eb9b5b_3f76_03c8_bf3e_53c565fe243b_SM2686_11.jpg)
c. Suppose that ß = 1 and that X i and u i are mutually independent standard normal random variables [so that both X t and iq are distributed N (0,1)]. Suppose that I i = 1 when Y i 0, but I i = 0 when Y i 0. Is
![This exercise takes up the problem of missing data discussed in Section 9.2. Consider the regression model where all variables are scalars and the constant term/intercept is omitted for convenience. a. Suppose that the least assumptions in Key Concept 4.3 are satisfied. Show that the least squares estimator of ß is unbiased and consistent. b. Now suppose that some of the observations are missing. Let I i , denote a binary random variable that indicates the nonmissing observations; that is, I i = 1 if observation i is not missing and I i = 0 if observation i is missing. Assume that are i.i.d. i. Show that the OLS estimator can be written as ii. Suppose that data are missing completely at random in the sense that where p is a constant. Show that is unbiased and consistent. iii. Suppose that the probability that the i th observation is missing depends of X i but not on u i ; that is, Show that is unbiased and consistent. iv. Suppose that the probability that the i th observation is missing depends on both X i and u i ; that is, Is unbiased Is consistent Explain. c. Suppose that ß = 1 and that X i and u i are mutually independent standard normal random variables [so that both X t and iq are distributed N (0,1)]. Suppose that I i = 1 when Y i 0, but I i = 0 when Y i 0. Is unbiased Is consistent Explain.](https://d2lvgg3v3hfg70.cloudfront.net/SM2686/11eb9b5b_3f76_03c9_bf3e_512f72fd25c4_SM2686_11.jpg)
![This exercise takes up the problem of missing data discussed in Section 9.2. Consider the regression model where all variables are scalars and the constant term/intercept is omitted for convenience. a. Suppose that the least assumptions in Key Concept 4.3 are satisfied. Show that the least squares estimator of ß is unbiased and consistent. b. Now suppose that some of the observations are missing. Let I i , denote a binary random variable that indicates the nonmissing observations; that is, I i = 1 if observation i is not missing and I i = 0 if observation i is missing. Assume that are i.i.d. i. Show that the OLS estimator can be written as ii. Suppose that data are missing completely at random in the sense that where p is a constant. Show that is unbiased and consistent. iii. Suppose that the probability that the i th observation is missing depends of X i but not on u i ; that is, Show that is unbiased and consistent. iv. Suppose that the probability that the i th observation is missing depends on both X i and u i ; that is, Is unbiased Is consistent Explain. c. Suppose that ß = 1 and that X i and u i are mutually independent standard normal random variables [so that both X t and iq are distributed N (0,1)]. Suppose that I i = 1 when Y i 0, but I i = 0 when Y i 0. Is unbiased Is consistent Explain.](https://d2lvgg3v3hfg70.cloudfront.net/SM2686/11eb9b5b_3f76_03ca_bf3e_4d829a53cf2d_SM2686_11.jpg)
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a) If the least squares assumptions are ...
Introduction to Econometrics 3rd Edition by James Stock, James Stock
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