Econometric Analysis of Panel Data

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Econometric Analysis of Panel Data
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Econometric Analysis of Panel Data William Greene Department of Economics Stern School of Business

Econometric Analysis of Panel Data 4. Fixed Effects

Thomas Plümper and Vera Troeger Political Analysis, 2007 Efficient Estimation of Time Invariant and Rarely Changing Variables in Finite Sample Panel Analyses with Unit Fixed Effects Thomas Plümper and Vera Troeger Political Analysis, 2007

Introduction: The Pledge [T]he FE model … does not allow the estimation of time invariant variables. A second drawback of the FE model … results from its inefficiency in estimating the effect of variables that have very little within variance. This article discusses a remedy to the related problems of estimating time invariant and rarely changing variables in FE models with unit effects

The Model

Fixed Effects Vector Decomposition Step 1: Compute the fixed effects regression to get the “estimated unit effects.” “We run this FE model with the sole intention to obtain estimates of the unit effects, αi.

Step 2 Regress ai on zi and compute residuals

Step 3 Regress yit on the constants, X, Z and h using ordinary least squares.

The Turn: Based on Cornwell and Rupert namelist ; x = exp,wks,occ,ind,south,smsa,union ; z = fem,ed,blk $ (1) Step 1. regress ; lhs=lwage;rhs=x,z;panel;fixed;pds=7 $ create ; uhi = alphafe(_stratum) $ (2) Step 2 regress ; lhs = uhi ; rhs = one,z ; res = hi $ (3) Step 3. regress ; lhs = lwage ; rhs = one,x,z,hi $

The Turn: Setup Step 1 These 3 variables have no within group variation. FEM ED BLK F.E. estimates are based on a generalized inverse. --------+--------------------------------------------------------- | Standard Prob. Mean LWAGE| Coefficient Error z z>|Z| of X EXP| .09663*** .00119 81.13 .0000 19.8538 WKS| .00114* .00060 1.88 .0600 46.8115 OCC| -.02496* .01390 -1.80 .0724 .51116 IND| .02042 .01558 1.31 .1899 .39544 SOUTH| -.00091 .03457 -.03 .9791 .29028 SMSA| -.04581** .01955 -2.34 .0191 .65378 UNION| .03411** .01505 2.27 .0234 .36399 FEM| .000 .....(Fixed Parameter)..... .11261 ED| .000 .....(Fixed Parameter)..... 12.8454 BLK| .000 .....(Fixed Parameter)..... .07227

The Turn: Setup Step 2 --------+--------------------------------------------------------- | Standard Prob. Mean UHI| Coefficient Error z z>|Z| of X Constant| 2.88090*** .07172 40.17 .0000 FEM| -.09963** .04842 -2.06 .0396 .11261 ED| .14616*** .00541 27.02 .0000 12.8454 BLK| -.27615*** .05954 -4.64 .0000 .07227

The Turn: Setup Step 3 --------+--------------------------------------------------------- | Standard Prob. Mean LWAGE| Coefficient Error z z>|Z| of X Constant| 2.88090*** .03282 87.78 .0000 EXP| .09663*** .00061 157.53 .0000 19.8538 WKS| .00114*** .00044 2.58 .0098 46.8115 OCC| -.02496*** .00601 -4.16 .0000 .51116 IND| .02042*** .00479 4.26 .0000 .39544 SOUTH| -.00091 .00510 -.18 .8590 .29028 SMSA| -.04581*** .00506 -9.06 .0000 .65378 UNION| .03411*** .00521 6.55 .0000 .36399 FEM| -.09963*** .00767 -13.00 .0000 .11261 ED| .14616*** .00122 120.19 .0000 12.8454 BLK| -.27615*** .00894 -30.90 .0000 .07227 HI| 1.00000*** .00670 149.26 .0000 -.103D-13

The Prestige Step 1 Step 3 Step 2