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  • Significant Hausman p-value but both FE and RE seemingly fail to be the right model

    Hello,

    I am trying to figure out whether using fixed effects would be right for my dataset or not. So I ran Hausman test (all the codes and results posted down below) on Stata 17.0 and got chi^2 value of 6210.82 and pvalue of 0. My understanding of this is that the coefficients from these two methods are different. Based on all the comments I could find on the forum regarding this topic, I also ran xttest0 and xtoverid for looking at evidence of RE and looked at the ftest value given under the basic FE regression model. xttest0 and ftest return pvalue of 1, hence statistically insignificant, and xtoverid results in "Error - saved RE estimates are degenerate (sigma_u=0) and equivalent to pooled OLS".

    Based off of the above results, am I correct in understanding that there seem to be no random effects or fixed effects evidence in my data? In which case, what factors should I consider in choosing the model since the resulting coefficients seem to be not just different but of the opposite signs (for did variable that measures the impact of the reform).

    NOTE: One BIG assumption I did make was treating the dataset I have as unbalanced panel data, since my data is arrest records over a period of ten years comprising of both, individuals that only got arrested once as well as those who were arrested multiple times. Please also let me know if this assumption makes sense or if it is just wrong in which case, I guess I won't have to worry about choosing between the RE and FE models.

    Just FYI:
    Variable recid is an indicator variable that is my outcome of interest (Whether someone recidivated or not).
    Variable NYC is an indicator variable that is 1 for the treatment group and 0 for comparison group.
    Variable period is an indicator variable that is 1 for post-reform years and 0 for pre-reform years.
    Variable did is the interaction variable between NYC and period.

    Code:
    Code:
    xtreg recid NYC period did i.age_at_referral detention female black aian apac others months_disposition crime sentence, fe
    estimates store FE
    xtreg recid NYC period did i.age_at_referral detention female black aian apac others months_disposition crime sentence, re
    estimates store RE
    hausman FE RE
    
    xtreg recid NYC period did age_at_referral detention female priors black aian apac others months_disposition crime sentence, re
    xttest0
    xtreg recid NYC period did age_at_referral detention female priors black aian apac others months_disposition crime sentence, re
    xtoverid
    Results:
    Code:
    . hausman FE RE
    
                     ---- Coefficients ----
                 |      (b)          (B)            (b-B)     sqrt(diag(V_b-V_B))
                 |       FE           RE         Difference       Std. err.
    -------------+----------------------------------------------------------------
          period |    .0269027    -.0145596        .0414623        .0171847
             did |    -.238991     .0205378       -.2595288        .0256904
    age_at_ref~l |
              8  |   -.1536068    -.0183521       -.1352548        .2057408
              9  |    .1111279     .0985027        .0126252        .1947722
             10  |    .0490475     .1266118       -.0775643        .1891517
             11  |   -.0134521     .1561825       -.1696346        .1875792
             12  |   -.0704445     .1710725        -.241517        .1870724
             13  |   -.1514975     .1644222       -.3159198        .1870328
             14  |   -.3365617     .1144997       -.4510614        .1870126
             15  |   -.6916833     .0187925       -.7104757        .1871177
             16  |   -.7965494    -.0019071       -.7946423        .1872656
             17  |   -.6729545       .04075       -.7137045        .1881347
             18  |    -1.00835    -.1171273       -.8912228        .2425487
             19  |   -1.130377    -.1023546       -1.028022        .5112882
             20  |   -1.226667    -.0902022       -1.136464        .5678978
       detention |   -.0180171     .0294451       -.0474622        .0085318
          female |    .1646985     -.061258        .2259566        .2173381
           black |    .0929615     .1006317       -.0076702        .0386526
            aian |    .5187224     .0357863        .4829361        .3063131
            apac |    .4963192     .0196628        .4766565        .2726107
          others |    .1107559     .0459501        .0648059        .0805111
    months_dis~n |   -.0164606    -.0078322       -.0086284        .0007935
           crime |    .2458138     .2228034        .0230104        .0066743
        sentence |   -.1034218    -.0107227       -.0926991        .0041723
    ------------------------------------------------------------------------------
                              b = Consistent under H0 and Ha; obtained from xtreg.
               B = Inconsistent under Ha, efficient under H0; obtained from xtreg.
    
    Test of H0: Difference in coefficients not systematic
    
       chi2(24) = (b-B)'[(V_b-V_B)^(-1)](b-B)
                = 6210.82
    Prob > chi2 =  0.0000
    
    
    . xttest0
    
    Breusch and Pagan Lagrangian multiplier test for random effects
    
            recid[id,t] = Xb + u[id] + e[id,t]
    
            Estimated results:
                             |       Var     SD = sqrt(Var)
                    ---------+-----------------------------
                       recid |   .1515245       .3892615
                           e |   .2083827       .4564896
                           u |          0              0
    
            Test: Var(u) = 0
                                 chibar2(01) =     0.00
                              Prob > chibar2 =   1.0000
    
    
    . xtoverid
    Error - saved RE estimates are degenerate (sigma_u=0) and equivalent to pooled OLS
    r(198);
    
    
    . xtreg recid NYC period did i.age_at_referral detention female black aian apac others months_disposition crime sent
    > ence, fe
    note: NYC omitted because of collinearity.
    note: 21.age_at_referral omitted because of collinearity.
    
    Fixed-effects (within) regression               Number of obs     =    161,743
    Group variable: id                              Number of groups  =    118,539
    
    R-squared:                                      Obs per group:
         Within  = 0.1911                                         min =          1
         Between = 0.0273                                         avg =        1.4
         Overall = 0.0700                                         max =         15
    
                                                    F(24,43180)       =     424.98
    corr(u_i, Xb) = -0.5813                         Prob > F          =     0.0000
    
    ------------------------------------------------------------------------------------
                 recid | Coefficient  Std. err.      t    P>|t|     [95% conf. interval]
    -------------------+----------------------------------------------------------------
                   NYC |          0  (omitted)
                period |   .0269027   .0173667     1.55   0.121    -.0071363    .0609417
                   did |   -.238991   .0260089    -9.19   0.000     -.289969   -.1880131
                       |
       age_at_referral |
                Eight  |  -.1536068   .2149489    -0.71   0.475    -.5749107    .2676971
                 Nine  |   .1111279   .2032296     0.55   0.585    -.2872059    .5094618
                  Ten  |   .0490475   .1972719     0.25   0.804    -.3376093    .4357042
               Eleven  |  -.0134521   .1955004    -0.07   0.945    -.3966365    .3697324
               Twelve  |  -.0704445   .1949255    -0.36   0.718    -.4525022    .3116131
             Thirteen  |  -.1514975   .1948625    -0.78   0.437    -.5334317    .2304366
             Fourteen  |  -.3365617   .1948357    -1.73   0.084    -.7184433    .0453199
              Fifteen  |  -.6916833   .1949336    -3.55   0.000    -1.073757   -.3096098
              Sixteen  |  -.7965494   .1950866    -4.08   0.000    -1.178923   -.4141761
            Seventeen  |  -.6729545   .1959731    -3.43   0.001    -1.057065   -.2888435
             Eighteen  |   -1.00835     .25363    -3.98   0.000     -1.50547   -.5112305
             Nineteen  |  -1.130377     .52072    -2.17   0.030    -2.150998   -.1097555
               Twenty  |  -1.226667   .5863565    -2.09   0.036    -2.375936   -.0773969
           Twenty-one  |          0  (omitted)
                       |
             detention |  -.0180171   .0094018    -1.92   0.055    -.0364448    .0004107
                female |   .1646985   .2173474     0.76   0.449    -.2613066    .5907036
                 black |   .0929615   .0387051     2.40   0.016     .0170987    .1688242
                  aian |   .5187224   .3066442     1.69   0.091     -.082306    1.119751
                  apac |   .4963192   .2728258     1.82   0.069    -.0384246    1.031063
                others |   .1107559   .0806555     1.37   0.170    -.0473305    .2688423
    months_disposition |  -.0164606   .0008344   -19.73   0.000    -.0180961   -.0148252
                 crime |   .2458138   .0070391    34.92   0.000     .2320171    .2596106
              sentence |  -.1034218   .0045597   -22.68   0.000     -.112359   -.0944846
                 _cons |   .5407805    .207441     2.61   0.009     .1341921    .9473688
    -------------------+----------------------------------------------------------------
               sigma_u |  .34941011
               sigma_e |  .45105891
                   rho |  .37502868   (fraction of variance due to u_i)
    ------------------------------------------------------------------------------------
    F test that all u_i=0: F(118538, 43180) = 0.50               Prob > F = 1.0000
    Thank you,
    Tessie
    Last edited by Tessie Krishna; 08 Nov 2022, 12:28. Reason: Added tags.

  • #2
    Hi Tessie,

    Just run two way fixed effects, as a rule. Assumptions made by random effects are completely implausible. If you want to study the effects of a time-invariant variable, the relationship you find will probably not be causal without a valid instrument but you may want to run correlated random effects, as in Wooldridge (2010).

    How many clusters (units) do you have? How many sources of variation do you have?

    Comment


    • #3
      Originally posted by Maxence Morlet View Post
      Hi Tessie,

      Just run two way fixed effects, as a rule. Assumptions made by random effects are completely implausible. If you want to study the effects of a time-invariant variable, the relationship you find will probably not be causal without a valid instrument but you may want to run correlated random effects, as in Wooldridge (2010).

      How many clusters (units) do you have? How many sources of variation do you have?
      Hi Maxence,

      Thank you for your quick response. In terms of clusters, if I use individuals (since it is recommended to cluster around panel identifier) I get around 118,000+ clusters. Instead, if I use the various courts as clusters (since 6 belonged to treatment group while others did not), I have about 76 clusters. I am afraid I am not sure what you mean by sources of variation. Could you elaborate on that a bit please?

      Thanks again,
      Tessie

      Comment

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