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  • Interpretation of marginal effects after interaction

    Dear all,

    I am using OLS with an interaction term between A (I001_umk) and B (Förderung_values) and want to interpret the marginal effects of A at different values of B. My output is below. My question is: what does it mean that the marginal effect at the (second and) third level is insignificant?

    Thank you in advance!

    HTML Code:
    . regress FS09_01 c.Förderung_values i.I001_umk c.Förderung_values#i.I001_umk Genehmigung Unterstützung Anerkennung ib3.Gruppe, vce(robust)
    
    Linear regression                               Number of obs     =        802
                                                    F(8, 793)         =      26.02
                                                    Prob > F          =     0.0000
                                                    R-squared         =     0.2051
                                                    Root MSE          =     27.586
    
    ---------------------------------------------------------------------------------------------
                                |               Robust
                        FS09_01 | Coefficient  std. err.      t    P>|t|     [95% conf. interval]
    ----------------------------+----------------------------------------------------------------
               Förderung_values |   .2497609   .0257975     9.68   0.000     .1991215    .3004003
                                |
                       I001_umk |
                   Information  |   12.96504   3.472688     3.73   0.000     6.148291    19.78178
                                |
    I001_umk#c.Förderung_values |
                   Information  |  -.0901888   .0358205    -2.52   0.012    -.1605031   -.0198745
                                |
                    Genehmigung |   7.325913   1.942806     3.77   0.000     3.512263    11.13956
                  Unterstützung |   8.188154   1.955397     4.19   0.000     4.349788    12.02652
                    Anerkennung |   1.646449   1.950454     0.84   0.399    -2.182215    5.475113
                                |
                         Gruppe |
                     Bauträger  |   12.32666    3.07673     4.01   0.000     6.287167    18.36616
                Organisationen  |    6.80456   2.102073     3.24   0.001     2.678274    10.93085
                                |
                          _cons |   32.82964   3.206492    10.24   0.000     26.53542    39.12385
    ---------------------------------------------------------------------------------------------
    
    . margins, dydx(I001_umk) at(Förderung_values = (50 100 150))
    
    Average marginal effects                                   Number of obs = 802
    Model VCE: Robust
    
    Expression: Linear prediction, predict()
    dy/dx wrt:  1.I001_umk
    1._at: Förderung_values =  50
    2._at: Förderung_values = 100
    3._at: Förderung_values = 150
    
    ------------------------------------------------------------------------------
                 |            Delta-method
                 |      dy/dx   std. err.      t    P>|t|     [95% conf. interval]
    -------------+----------------------------------------------------------------
    0.I001_umk   |  (base outcome)
    -------------+----------------------------------------------------------------
    1.I001_umk   |
             _at |
              1  |   8.455598   2.229939     3.79   0.000     4.078318    12.83288
              2  |   3.946158   2.073945     1.90   0.057    -.1249127    8.017229
              3  |  -.5632816   3.169451    -0.18   0.859    -6.784788    5.658225
    ------------------------------------------------------------------------------
    Note: dy/dx for factor levels is the discrete change from the base level.

  • #2
    For example if Fördering_values equals 50:

    The null-hypothesis is than: The effect of I001_umk equals 0 if Fördering_values is 50. We (barely) cannot reject that hypotheis at the 5% level.
    ---------------------------------
    Maarten L. Buis
    University of Konstanz
    Department of history and sociology
    box 40
    78457 Konstanz
    Germany
    http://www.maartenbuis.nl
    ---------------------------------

    Comment


    • #3
      Maarten Buis
      Dear Maarten, thank you for your reply! I understand now. However I assume you meant the case of Fördering_values being 100, since at 50 we can reject the null hypothesis if I understand correctly (?).

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