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  • #16
    My supervisor was convinced that I should be able to use time fixed effects as there should be enough degrees of freedom, soI run the regression. I am just not exactly sure how to interpret the output. Are the relevant coefficients summarized above, and then what are the year specific coefficients indicating? Thank you in advance!

    This is the regression I run and the output:

    Code:
     xtreg InvWinsor i.CR_POM##i.Tech_Industry Size Profitability i.D, fe
    note: 1.Tech_Industry omitted because of collinearity
    
    Fixed-effects (within) regression               Number of obs      =      5715
    Group variable: GlobalComp~y                    Number of groups   =       777
    
    R-sq:  within  = 0.0302                         Obs per group: min =         1
           between = 0.0083                                        avg =       7.4
           overall = 0.0166                                        max =        29
    
                                                    F(37,4901)         =      4.13
    corr(u_i, Xb)  = -0.4124                        Prob > F           =    0.0000
    
    --------------------------------------------------------------------------------------
               InvWinsor |      Coef.   Std. Err.      t    P>|t|     [95% Conf. Interval]
    ---------------------+----------------------------------------------------------------
                1.CR_POM |   .0178671    .055042     0.32   0.745    -.0900398     .125774
         1.Tech_Industry |          0  (omitted)
                         |
    CR_POM#Tech_Industry |
                    1 1  |   .0604338   .1094199     0.55   0.581    -.1540783    .2749458
                         |
                    Size |  -.6470393    .112147    -5.77   0.000    -.8668976    -.427181
           Profitability |   2.480885   .3963357     6.26   0.000      1.70389    3.257881
                         |
                       D |
                   1982  |  -.5369541   1.960509    -0.27   0.784    -4.380429    3.306521
                   1983  |   -.538144   1.960509    -0.27   0.784    -4.381621    3.305333
                   1984  |  -.1877277   1.960527    -0.10   0.924    -4.031239    3.655784
                   1985  |   .1194069   1.438708     0.08   0.934    -2.701105    2.939919
                   1986  |   .1997108   1.436548     0.14   0.889    -2.616567    3.015989
                   1987  |   .3664296   1.436989     0.25   0.799    -2.450712    3.183572
                   1988  |    .178331   1.437071     0.12   0.901    -2.638972    2.995634
                   1989  |   .1695821   1.437041     0.12   0.906    -2.647662    2.986826
                   1990  |   .0375606   1.437186     0.03   0.979    -2.779968    2.855089
                   1991  |   .3115575   1.437327     0.22   0.828    -2.506248    3.129363
                   1992  |   .3470687   1.437634     0.24   0.809    -2.471339    3.165476
                   1993  |   .3045631   1.437907     0.21   0.832    -2.514378    3.123504
                   1994  |   .4245565   1.438361     0.30   0.768    -2.395277     3.24439
                   1995  |   .4616731   1.438715     0.32   0.748    -2.358853    3.282199
                   1996  |   .4550687   1.438986     0.32   0.752    -2.365988    3.276126
                   1997  |   .6407996   1.438933     0.45   0.656    -2.180154    3.461753
                   1998  |   .3358685   1.439193     0.23   0.815    -2.485595    3.157332
                   1999  |   .4356521   1.439473     0.30   0.762    -2.386359    3.257664
                   2000  |   .5243281   1.439975     0.36   0.716    -2.298668    3.347324
                   2001  |   .2911237   1.439033     0.20   0.840    -2.530025    3.112273
                   2002  |   .4913246    1.43894     0.34   0.733    -2.329642    3.312291
                   2003  |   .5176196   1.439023     0.36   0.719     -2.30351     3.33875
                   2004  |   .8726261   1.439405     0.61   0.544    -1.949254    3.694506
                   2005  |   .7534948   1.439769     0.52   0.601    -2.069097    3.576087
                   2006  |   .7115173   1.440175     0.49   0.621     -2.11187    3.534905
                   2007  |   .7458274   1.440475     0.52   0.605    -2.078149    3.569804
                   2008  |   .2385598   1.440833     0.17   0.869    -2.586119    3.063239
                   2009  |   .4700265   1.441173     0.33   0.744    -2.355318    3.295371
                   2010  |   .9485511   1.441537     0.66   0.511    -1.877507    3.774609
                   2011  |   .6591929    1.44191     0.46   0.648    -2.167596    3.485982
                   2012  |   .5360067    1.44201     0.37   0.710    -2.290979    3.362993
                   2013  |   .8487168   1.442369     0.59   0.556    -1.978974    3.676407
                   2014  |    .407778   1.500747     0.27   0.786    -2.534359    3.349915
                         |
                   _cons |   5.723433    1.74418     3.28   0.001     2.304058    9.142807
    ---------------------+----------------------------------------------------------------
                 sigma_u |  1.3131517
                 sigma_e |  1.3862796
                     rho |  .47292974   (fraction of variance due to u_i)
    --------------------------------------------------------------------------------------
    F test that all u_i=0:     F(776, 4901) =     1.63           Prob > F = 0.0000

    Comment


    • #17
      Originally posted by Clyde Schechter View Post
      A fixed-effects model where a main effect is collinear with the fixed effect is almost the only situation in which it is OK to have an interaction term and omit one of the main effects.
      Apologies for bringing this thread back to life but I have a similar problem and I was interested by this comment. Is there any literature that backs up this statement? I was of the understanding that even in a fixed effects model you need to include all main effects of an interaction term and if one was collinear (e.g. due to time invariance) then you needed to find another method.

      Comment


      • #18
        Elizabete:
        i.D says that years have no significant effect in explaining the variation of yir dependent variable; hence, nothing change across the years (taking 1981 as the reference category).
        However, this result might depend on how did you -xtset- your data.
        As far as I can see that table output, the only relevant predictors in your model are profitability and size.
        I do not know whether this is in line with your expectations and/or more relevant, with what the majority of the literature in your research field claims.
        Kind regards,
        Carlo
        (Stata 19.0)

        Comment

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