Hi,
I have a question about using time fixed effects in a panel data setting and avoiding dummy variable trap.
I will explain my problem to make the question clearer:
I want to determine what variables drive the speed that a fund manager invests through time. My dependent variable is a time series of "capital that a fund has invested" for every fund. This is at a quarterly frequency and from 2000 to 2017.
Note however that each fund level data time series does not span the whole period. As the funds opened at different points in time (e.g. some were launched in 2000 others in 2001, 2002, etc) the data starts at different points in time.
My concern is twofold: I want to include an explanatory variable which varies through time but is the same for all funds. For example the yearly return of the US stock market index (S&P500) as shown in the model below.
CapInvestedit = ai + b USequityReturnt + g timeEffectst + ei t
As the time fixed effects will be collinear with the US equity returns one of the time effects needs to be dropped when estimating the model with xtreg (see Stata output) (q. Does that mean that I can never use time fixed effects when using this type of explanatory variable (which does not vary across individual but only across time)? Is there any way around this?
Secondly, how can I evaluate how many regressors I can use (degrees of freedom) in panel data settings before I risk overfitting the data? I am concerned that the inclusion of time fixed effects will increase the number of regressors so much that the regression results will not unreliable. See for example comment #10 in the thread below.
https://www.statalist.org/forums/for...nexpected-sign
Thanks
I have a question about using time fixed effects in a panel data setting and avoiding dummy variable trap.
I will explain my problem to make the question clearer:
I want to determine what variables drive the speed that a fund manager invests through time. My dependent variable is a time series of "capital that a fund has invested" for every fund. This is at a quarterly frequency and from 2000 to 2017.
Note however that each fund level data time series does not span the whole period. As the funds opened at different points in time (e.g. some were launched in 2000 others in 2001, 2002, etc) the data starts at different points in time.
My concern is twofold: I want to include an explanatory variable which varies through time but is the same for all funds. For example the yearly return of the US stock market index (S&P500) as shown in the model below.
CapInvestedit = ai + b USequityReturnt + g timeEffectst + ei t
As the time fixed effects will be collinear with the US equity returns one of the time effects needs to be dropped when estimating the model with xtreg (see Stata output) (q. Does that mean that I can never use time fixed effects when using this type of explanatory variable (which does not vary across individual but only across time)? Is there any way around this?
Code:
. xtreg marg_called spx_yoy i.quarter , fe robust note: 176.quarter omitted because of collinearity Fixed-effects (within) regression Number of obs = 99076 Group variable: fundid_fun~e Number of groups = 3663 R-sq: within = 0.0628 Obs per group: min = 1 between = 0.0654 avg = 27.0 overall = 0.0149 max = 68 F(67,3662) = 24.30 corr(u_i, Xb) = -0.2667 Prob > F = 0.0000 (Std. Err. adjusted for 3663 clusters in fundid_fundtype) ------------------------------------------------------------------------------ | Robust marg_called | Coef. Std. Err. t P>|t| [95% Conf. Interval] -------------+---------------------------------------------------------------- spx_yoy | .0021898 .0047615 0.46 0.646 -.0071457 .0115252 | quarter | 165 | .3634196 .2077487 1.75 0.080 -.043895 .7707343 166 | .0673388 .2092053 0.32 0.748 -.3428316 .4775092 167 | -.0017774 .2124482 -0.01 0.993 -.4183059 .4147511 168 | -.2032346 .1689662 -1.20 0.229 -.5345118 .1280426 169 | -.0529558 .1859052 -0.28 0.776 -.4174438 .3115321 170 | -.4048783 .2090664 -1.94 0.053 -.8147764 .0050198 171 | .0751246 .2536233 0.30 0.767 -.4221323 .5723815 172 | -.2271042 .2259984 -1.00 0.315 -.6701993 .2159909 173 | -.1562853 .1924783 -0.81 0.417 -.5336605 .2210899 174 | -.1072304 .1721214 -0.62 0.533 -.4446936 .2302329 175 | -.1459967 .1656886 -0.88 0.378 -.4708477 .1788544 176 | 0 (omitted) 177 | .5829734 .2048757 2.85 0.004 .1812915 .9846552 178 | .2298571 .1871147 1.23 0.219 -.1370022 .5967164 179 | .2485688 .1906258 1.30 0.192 -.1251745 .6223121 180 | .3328267 .1797579 1.85 0.064 -.0196087 .6852622 181 | .0123119 .1684457 0.07 0.942 -.3179447 .3425685 182 | .0829718 .1741036 0.48 0.634 -.2583779 .4243215 183 | .3220636 .1859411 1.73 0.083 -.0424949 .686622 184 | .0987804 .1728828 0.57 0.568 -.2401757 .4377365 185 | -.0045399 .1704852 -0.03 0.979 -.3387952 .3297155 186 | -.1576511 .1608511 -0.98 0.327 -.4730176 .1577155 187 | .2527712 .1834247 1.38 0.168 -.1068535 .612396 188 | -.1552237 .1745983 -0.89 0.374 -.4975433 .1870959 189 | -.1698568 .1711432 -0.99 0.321 -.5054021 .1656886 190 | -.4140906 .173447 -2.39 0.017 -.7541529 -.0740284 191 | .0017222 .1907655 0.01 0.993 -.372295 .3757394 192 | -.801054 .1569176 -5.10 0.000 -1.108709 -.4933994 193 | -.8747737 .1609558 -5.43 0.000 -1.190346 -.5592018 194 | -.7400855 .1893973 -3.91 0.000 -1.11142 -.3687509 195 | -1.054512 .2637383 -4.00 0.000 -1.571601 -.5374239 196 | -1.379948 .2633164 -5.24 0.000 -1.896209 -.8636866 197 | -1.336222 .2448343 -5.46 0.000 -1.816247 -.8561972 198 | -1.460848 .185791 -7.86 0.000 -1.825112 -1.096583 199 | -1.386937 .1303834 -10.64 0.000 -1.642568 -1.131305 200 | -1.539267 .1863003 -8.26 0.000 -1.90453 -1.174004 201 | -1.267155 .1558174 -8.13 0.000 -1.572653 -.961658 202 | -1.355659 .1289233 -10.52 0.000 -1.608427 -1.10289 203 | -1.132549 .1315177 -8.61 0.000 -1.390405 -.8746941 204 | -1.508157 .1288626 -11.70 0.000 -1.760806 -1.255507 205 | -1.501627 .1281399 -11.72 0.000 -1.75286 -1.250395 206 | -1.429224 .1284764 -11.12 0.000 -1.681116 -1.177331 207 | -1.446775 .1311461 -11.03 0.000 -1.703901 -1.189648 208 | -1.566608 .1274366 -12.29 0.000 -1.816462 -1.316754 209 | -1.703131 .1240032 -13.73 0.000 -1.946253 -1.460009 210 | -1.760753 .1246472 -14.13 0.000 -2.005137 -1.516368 211 | -1.519571 .1308827 -11.61 0.000 -1.776182 -1.262961 212 | -1.910804 .1221832 -15.64 0.000 -2.150357 -1.67125 213 | -1.930304 .132662 -14.55 0.000 -2.190403 -1.670205 214 | -1.916775 .1334156 -14.37 0.000 -2.178351 -1.655199 215 | -1.92109 .1434959 -13.39 0.000 -2.20243 -1.639751 216 | -2.080455 .1322585 -15.73 0.000 -2.339762 -1.821147 217 | -2.005137 .1304181 -15.37 0.000 -2.260836 -1.749437 218 | -2.052398 .1303389 -15.75 0.000 -2.307942 -1.796854 219 | -2.019814 .1253039 -16.12 0.000 -2.265486 -1.774142 220 | -2.149828 .1213671 -17.71 0.000 -2.387782 -1.911875 221 | -2.116326 .1211521 -17.47 0.000 -2.353858 -1.878794 222 | -2.137921 .1286837 -16.61 0.000 -2.39022 -1.885622 223 | -2.177748 .1253641 -17.37 0.000 -2.423538 -1.931957 224 | -2.35278 .1387592 -16.96 0.000 -2.624833 -2.080727 225 | -2.347668 .1304164 -18.00 0.000 -2.603364 -2.091972 226 | -2.373192 .1225429 -19.37 0.000 -2.613451 -2.132933 227 | -2.389172 .120666 -19.80 0.000 -2.625751 -2.152593 228 | -2.611655 .1301455 -20.07 0.000 -2.86682 -2.35649 229 | -2.409805 .1264132 -19.06 0.000 -2.657652 -2.161958 230 | -2.401352 .12628 -19.02 0.000 -2.648938 -2.153766 231 | -2.476485 .1302434 -19.01 0.000 -2.731842 -2.221129 | _cons | 2.660913 .1150825 23.12 0.000 2.43528 2.886545 -------------+---------------------------------------------------------------- sigma_u | 2.6434856 sigma_e | 2.7854585 rho | .47386677 (fraction of variance due to u_i) ------------------------------------------------------------------------------
https://www.statalist.org/forums/for...nexpected-sign
Thanks
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