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  • Including time fixed effects in a first differences model

    Hello everyone.

    I have a question regarding including time fixed effects in a (cross section fixed effects) model where all variables are specified in differences:

    So what is the case here: I have 2 models:
    - model (1) which includes a quarterly differenced dependent variable, an lagged independent variable, quarterly differenced company specific control variables (which thus differs between companies and over time) and time series control variables specified in first differences as well (for instance the federal funds rate, gdp, infaltion etc which are the same for companies but change over time).

    - model (2) which is the same as model (1) except that model (2) includes time fixed effects and thus excludes all the time serie variables.

    The problem is that my variable of interest is changing in significance between the models. In model (1) it is significant, in model (2) it is not. Regardles of the change in significance, I wonder if the inclusion of time fixed effects (which are time dummies ofcourse) in a model where almost every variable is specified in first differenced values, is correct? In model (1) all time serie variables are specified in first differences as well, while in model (2) when including time fixed effects these time fixed effects are specified in level values. Can this lead to problems and thus maybe explain the change in significance of my variable of interest?

    If so, is there a solution for this? I thought about including the difference in time fixed effects instead of the time fixed effects but how can I do this?

    Below I provide the regression output of the two models. Note that Hqualitybank is my variable of interest. Crisidummy, fedfundchange tedspreadchange and changeinflation are time series variables.

    Model (1)
    Code:
    . areg marketliq L.Hqualitybank Hbank_Crisis  Dsize Dnim  Dracr Dloanstoassets Ddepositsloans L.Crisisdummy changefe
    > dfund changetedspread changeinflation,absorb(gvkey) r
    
    Linear regression, absorbing indicators           Number of obs   =       3466
                                                      F(  11,   3346) =      15.77
                                                      Prob > F        =     0.0000
                                                      R-squared       =     0.1672
                                                      Adj R-squared   =     0.1375
                                                      Root MSE        =     0.0161
    
    ---------------------------------------------------------------------------------
                    |               Robust
          marketliq |      Coef.   Std. Err.      t    P>|t|     [95% Conf. Interval]
    ----------------+----------------------------------------------------------------
       Hqualitybank |
                L1. |  -.0020248   .0011106    -1.82   0.068    -.0042023    .0001527
                    |
       Hbank_Crisis |   .0015005   .0017691     0.85   0.396    -.0019681    .0049692
              Dsize |   .0403292   .0092174     4.38   0.000     .0222568    .0584015
               Dnim |  -.0006059    .001441    -0.42   0.674    -.0034312    .0022194
              Dracr |   .0010526   .0005251     2.00   0.045     .0000231    .0020822
     Dloanstoassets |  -.1695018   .0248656    -6.82   0.000    -.2182552   -.1207485
     Ddepositsloans |   .0132289   .0026041     5.08   0.000     .0081231    .0183346
                    |
        Crisisdummy |
                L1. |   .0004759   .0012866     0.37   0.711    -.0020466    .0029984
                    |
      changefedfund |   -.000846    .000841    -1.01   0.314    -.0024949    .0008028
    changetedspread |  -.0000108   .0009142    -0.01   0.991    -.0018033    .0017817
    changeinflation |   .0008102   .0008076     1.00   0.316    -.0007732    .0023937
              _cons |  -.0006858   .0009363    -0.73   0.464    -.0025216      .00115
    ----------------+----------------------------------------------------------------
              gvkey |   absorbed                                     (109 categories)
    Model (2)

    Code:
    areg marketliq L.Hqualitybank  Dsize Dnim  Dracr Dloanstoassets Ddepositsloans i.datum,absorb(gvkey) r
    
    Linear regression, absorbing indicators           Number of obs   =       3520
                                                      F(  60,   3351) =       5.93
                                                      Prob > F        =     0.0000
                                                      R-squared       =     0.1970
                                                      Adj R-squared   =     0.1568
                                                      Root MSE        =     0.0159
    
    --------------------------------------------------------------------------------
                   |               Robust
         marketliq |      Coef.   Std. Err.      t    P>|t|     [95% Conf. Interval]
    ---------------+----------------------------------------------------------------
      Hqualitybank |
               L1. |  -.0011879   .0010839    -1.10   0.273    -.0033132    .0009373
                   |
             Dsize |   .0407307   .0093138     4.37   0.000     .0224694    .0589919
              Dnim |  -.0006563    .001413    -0.46   0.642    -.0034268    .0021142
             Dracr |   .0010838   .0005156     2.10   0.036     .0000729    .0020947
    Dloanstoassets |  -.1695913    .025276    -6.71   0.000    -.2191492   -.1200334
    Ddepositsloans |   .0130058   .0025313     5.14   0.000     .0080427    .0179689
                   |
             datum |
              166  |  -.0030757   .0025847    -1.19   0.234    -.0081435    .0019921
              167  |  -.0021623   .0022103    -0.98   0.328    -.0064959    .0021713
              168  |  -.0121513   .0027694    -4.39   0.000    -.0175812   -.0067213
              169  |  -.0002611   .0016995    -0.15   0.878    -.0035933     .003071
              170  |   -.005769   .0023909    -2.41   0.016    -.0104568   -.0010813
              171  |  -.0066018   .0022936    -2.88   0.004    -.0110989   -.0021047
              172  |  -.0074842   .0020371    -3.67   0.000    -.0114783   -.0034902
              173  |  -.0041743   .0020196    -2.07   0.039    -.0081341   -.0002145
              174  |   -.005192   .0022203    -2.34   0.019    -.0095452   -.0008388
              175  |  -.0034753   .0019002    -1.83   0.068     -.007201    .0002504
              176  |  -.0057363   .0019598    -2.93   0.003    -.0095788   -.0018938
              177  |  -.0027455   .0022995    -1.19   0.233     -.007254     .001763
              178  |  -.0038011   .0020494    -1.85   0.064    -.0078193    .0002172
              179  |   -.010387   .0029895    -3.47   0.001    -.0162485   -.0045255
              180  |  -.0029657    .001898    -1.56   0.118     -.006687    .0007557
              181  |  -.0028134   .0019581    -1.44   0.151    -.0066525    .0010258
              182  |  -.0029773    .001826    -1.63   0.103    -.0065574    .0006028
              183  |  -.0030122   .0021308    -1.41   0.158      -.00719    .0011657
              184  |  -.0043154    .001977    -2.18   0.029    -.0081917   -.0004391
              185  |  -.0026042   .0017746    -1.47   0.142    -.0060836    .0008753
              186  |  -.0036521   .0020552    -1.78   0.076    -.0076816    .0003774
              187  |  -.0031441   .0020323    -1.55   0.122    -.0071288    .0008407
              188  |  -.0047417    .002174    -2.18   0.029    -.0090042   -.0004793
              189  |  -.0014614   .0016814    -0.87   0.385    -.0047581    .0018353
              190  |  -.0043103   .0020354    -2.12   0.034    -.0083011   -.0003196
              191  |  -.0044737    .002333    -1.92   0.055     -.009048    .0001005
              192  |  -.0024166   .0019312    -1.25   0.211    -.0062031    .0013698
              193  |   -.003139   .0020809    -1.51   0.132    -.0072191     .000941
              194  |   .0012382   .0027618     0.45   0.654    -.0041768    .0066533
              195  |   .0005749   .0039964     0.14   0.886    -.0072608    .0084105
              196  |  -.0006183   .0037055    -0.17   0.867    -.0078835    .0066469
              197  |  -.0089042   .0027313    -3.26   0.001    -.0142594   -.0035489
              198  |  -.0039918   .0033183    -1.20   0.229    -.0104979    .0025143
              199  |   .0003562   .0027968     0.13   0.899    -.0051274    .0058398
              200  |  -.0011279   .0026736    -0.42   0.673    -.0063699    .0041141
              201  |  -.0073056   .0031635    -2.31   0.021    -.0135081    -.001103
              202  |  -.0075308    .002753    -2.74   0.006    -.0129285   -.0021332
              203  |  -.0050696   .0032805    -1.55   0.122    -.0115015    .0013624
              204  |   .0018842   .0031378     0.60   0.548     -.004268    .0080364
              205  |  -.0008211   .0029858    -0.28   0.783    -.0066752     .005033
              206  |   -.005311   .0034661    -1.53   0.126    -.0121069     .001485
              207  |   -.006523   .0034758    -1.88   0.061     -.013338     .000292
              208  |  -.0075814   .0029472    -2.57   0.010    -.0133598    -.001803
              209  |   .0003005   .0024702     0.12   0.903    -.0045428    .0051438
              210  |  -.0064785   .0020873    -3.10   0.002     -.010571    -.002386
              211  |   .0023475   .0024646     0.95   0.341    -.0024848    .0071797
              212  |  -.0058786    .002446    -2.40   0.016    -.0106743   -.0010829
              213  |  -.0002821   .0025935    -0.11   0.913    -.0053672    .0048029
              214  |    .004341   .0024769     1.75   0.080    -.0005153    .0091973
              215  |  -.0042247   .0023808    -1.77   0.076    -.0088926    .0004432
              216  |  -.0009571   .0026356    -0.36   0.717    -.0061246    .0042105
              217  |  -.0058652   .0023668    -2.48   0.013    -.0105058   -.0012246
              218  |  -.0014492   .0023614    -0.61   0.539    -.0060791    .0031807
              219  |   -.001878   .0024527    -0.77   0.444    -.0066869     .002931
                   |
             _cons |    .003573   .0014693     2.43   0.015     .0006922    .0064538
    ---------------+----------------------------------------------------------------
             gvkey |   absorbed                                     (109 categories)

    If I am not clear about specific things or have to provide more information; please let me know. I am both quite new to Stata as well making uses of a forum.

    Thank you in advance for your help,

    YH
    Last edited by YH jordaan; 06 Feb 2016, 11:19.

  • #2
    What do I have to provide to get responses/feedback on my opening post?

    Comment


    • #3
      Roughly speaking, if people think they can almost or partially answer your question, they will do so.

      Lack of a reply means usually too busy, not interested, don't do that kind of thing, or don't understand what you want.

      Advice on bumping (mostly, please don't) in http://www.statalist.org/forums/foru...-similar-topic
      Last edited by Nick Cox; 07 Feb 2016, 08:08.

      Comment


      • #4
        YH (the usual kind reminder about re-registering with real full names applies and adds to Nick's sound remarks) wrote:

        Note that Hqualitybank is my variable of interest... In model (1) it is significant, in model (2) it is not...
        Although I'm not a significance fan, from the results you posted, it does not seem so (model 1: p=0,068; model 2: p=0.273).

        Comparing adjusted R-squared, model #2 seems to perform slightly better that model #1; however, which one is more in line with the recommendations reported in the literature of your research field, I can't say.
        Kind regards,
        Carlo
        (Stata 19.0)

        Comment


        • #5
          Echoing Carlo's deprecation of significance testing, notice that in each model, your coefficient for Hqualitybank falls comfortably within the 95% confidence interval of the other, and in absolute terms, the difference in values is pretty small. So, really the two models aren't saying much different about the effect of this variables.

          That said, in general, when adding time fixed effects to a model substantially changes the results of a key variable, the implication is that the effect of that variable is confounded with time-based shocks to the outcome variable. (In a smaller data set it could also just mean overfitting of noise, but your data set is large enough to accommodate this many variables without much risk of that.)

          Comment


          • #6
            Originally posted by Nick Cox View Post
            Roughly speaking, if people think they can almost or partially answer your question, they will do so.

            Lack of a reply means usually too busy, not interested, don't do that kind of thing, or don't understand what you want.

            Advice on bumping (mostly, please don't) in http://www.statalist.org/forums/foru...-similar-topic

            This is something I completely understand of course. However, because of the fact that in previous topics of me, I failed to present all the complete information, I thought that this was also the case here. That is why I asked this question.

            Comment


            • #7
              Originally posted by Carlo Lazzaro View Post
              YH (the usual kind reminder about re-registering with real full names applies and adds to Nick's sound remarks) wrote:



              Although I'm not a significance fan, from the results you posted, it does not seem so (model 1: p=0,068; model 2: p=0.273).

              Comparing adjusted R-squared, model #2 seems to perform slightly better that model #1; however, which one is more in line with the recommendations reported in the literature of your research field, I can't say.

              Thanks for your feedback Carlo Lazzaro . YH are the first letters of my first and second name, thats why I registered that way. If I can change this to my full first name and surname, I will do this.

              Comment


              • #8
                Originally posted by Clyde Schechter View Post
                Echoing Carlo's deprecation of significance testing, notice that in each model, your coefficient for Hqualitybank falls comfortably within the 95% confidence interval of the other, and in absolute terms, the difference in values is pretty small. So, really the two models aren't saying much different about the effect of this variables.

                That said, in general, when adding time fixed effects to a model substantially changes the results of a key variable, the implication is that the effect of that variable is confounded with time-based shocks to the outcome variable. (In a smaller data set it could also just mean overfitting of noise, but your data set is large enough to accommodate this many variables without much risk of that.)

                Thanks Clyde Schechter . Regarding the fact that the two coeficients dont differ much in absolute values you are of course absolutetly right. But at least for me, it was even more surprising that the p-value did change (so) much. In my opinion this was a bit strange and that is why I decided to ask a question about it.

                Comment


                • #9
                  YH:
                  I'm perfectly fine with first letters; I was just wondering if I should address you as he or she in future posts.
                  Kind regards,
                  Carlo
                  (Stata 19.0)

                  Comment

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