Consider the following nonlinear regression model: š‘¦ š‘” = š›¼ š‘„ š‘” š›½ + šœ€ š‘” Assume i.i.d. data and š”¼ [ šœ€ š‘” | š‘„ š‘” ] = 0 . To estimate š›¼ and š›½ by GMM, we use the following moment conditions: š”¼ [ š‘¦ š‘” āˆ’ š›¼ š‘„ š‘” š›½ ] = 0 š”¼ [ ( š‘¦ š‘” āˆ’ š›¼ š‘„ š‘” š›½ ) š‘„ š‘” ] = 0 We have an i.i.d. sample with š‘‡ = 1000 observations, with āˆ‘ š‘” = 1 š‘‡ š‘„ š‘” = 1000 and āˆ‘ š‘” = 1 š‘‡ š‘„ š‘” 2 = 4000 . We obtain point estimates š›¼ Ģ‚ = 1 and š›½ Ģ‚ = 2 . To compute the variance of the estimates, we need to estimate the matrix š›¤ 0 , š›¤ Ģ‚ 0 = [ š›¤ Ģ‚ 11 š›¤ Ģ‚ 12 š›¤ Ģ‚ 21 š›¤ Ģ‚ 22 ] Then, the value š›¤ Ģ‚ 11 is: å•é”¹é€‰ę‹©é¢˜

A

š›¤ Ģ‚ 11 = āˆ’ 4

B

š›¤ Ģ‚ 11 = 4000

C

There is not enough information to compute š›¤ Ģ‚ 11 .

D

š›¤ Ģ‚ 11 = āˆ’ 1

E

š›¤ Ģ‚ 11 = 1000

ē™»å½•å³åÆęŸ„ēœ‹å®Œę•“ē­”ę”ˆ

ęˆ‘ä»¬ę”¶å½•äŗ†å…Øēƒč¶…50000é“ēœŸå®žåŽŸé¢˜äøŽčÆ¦ē»†č§£ęž,ēŽ°åœØē™»å½•,ē«‹å³čŽ·å¾—ē­”ę”ˆć€‚

ē±»ä¼¼é—®é¢˜

Consider the following nonlinear regression model: š‘¦ š‘” = š›¼ š‘„ š‘” š›½ + šœ€ š‘” Assume i.i.d. data and š”¼ [ šœ€ š‘” | š‘„ š‘” ] = 0 . To estimate š›¼ and š›½ by GMM, we need two moment conditions. Choose the best answer below.

Consider the following nonlinear regression model: š‘¦ š‘” = š›¼ š‘„ š‘” š›½ + šœ€ š‘” Assume i.i.d. data and š”¼ [ šœ€ š‘” | š‘„ š‘” ] = 0 . To estimate š›¼ and š›½ by GMM, we chose among the following moment conditions: š”¼ [ š‘¦ š‘” āˆ’ š›¼ š‘„ š‘” š›½ ] = 0 š”¼ [ ( š‘¦ š‘” āˆ’ š›¼ š‘„ š‘” š›½ ) š‘„ š‘” ] = 0 š”¼ [ ( š‘¦ š‘” āˆ’ š›¼ š‘„ š‘” š›½ ) 1 š‘„ š‘” ] = 0 Choose the most appropriate answer below:

Consider the following nonlinear regression model: š‘¦ š‘– = š›¼ + š›½ š‘„ š‘– + šœ€ š‘– , Assume i.i.d. data and š”¼ [ šœ€ š‘– | š‘„ š‘– ] = 0 . To estimate š›¼ and š›½ by GMM, we use the two theoretical moment conditions š”¼ [ š‘¦ š‘– āˆ’ š›¼ āˆ’ š›½ š‘„ š‘– ] = 0 š”¼ [ ( š‘¦ š‘– āˆ’ š›¼ āˆ’ š›½ š‘„ š‘– ) š‘„ š‘– ] = 0 To compute the variance of the GMM estimator we need the matrices š›¤ 0 and š›· 0 .

Consider the following linear regression model: š‘¦ š‘– = š›¼ + š›½ š‘„ š‘– + š›¾ š‘„ š‘– 2 + šœ€ š‘– , Assume i.i.d. data and š”¼ [ šœ€ š‘– | š‘„ š‘– ] = 0 . To estimate š›¼ , š›½ and š›¾ by GMM, we use the three theoretical moment conditions š”¼ [ š‘¦ š‘– āˆ’ š›¼ āˆ’ š›½ š‘„ š‘– āˆ’ š›¾ š‘„ š‘– 2 ] = 0 š”¼ [ ( š‘¦ š‘– āˆ’ š›¼ āˆ’ š›½ š‘„ š‘– āˆ’ š›¾ š‘„ š‘– 2 ) š‘„ š‘– ] = 0 š”¼ [ ( š‘¦ š‘– āˆ’ š›¼ āˆ’ š›½ š‘„ š‘– āˆ’ š›¾ š‘„ š‘– 2 ) š‘„ š‘– 2 ] = 0 To compute the variance of the GMM estimator we need the matrices š›¤ 0 and š›· 0 .

ę›“å¤šē•™å­¦ē”Ÿå®žē”Øå·„å…·

åŠ å…„ęˆ‘ä»¬ļ¼Œē«‹å³č§£é” ęµ·é‡ēœŸé¢˜ äøŽ ē‹¬å®¶č§£ęžļ¼Œč®©å¤ä¹ åæ«äŗŗäø€ę­„ļ¼