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  • Comparing interaction effects using "nlcom"

    Dear Statalisters,

    In my model, I have two moderation effects which I would like to compare using the nlcom command. The issue is that these are moderations of quadratic terms.

    Let me explain with the example below.

    Code:
    webuse regress, clear
    reg y c.x1##c.x1##c.x2 c.x3##c.x3##c.x2, noomitted
    note: x2 omitted because of collinearity
    
          Source |       SS           df       MS      Number of obs   =       148
    -------------+----------------------------------   F(9, 138)       =     38.99
           Model |  3507.64063         9  389.737848   Prob > F        =    0.0000
        Residual |  1379.27829       138   9.9947702   R-squared       =    0.7178
    -------------+----------------------------------   Adj R-squared   =    0.6994
           Total |  4886.91892       147  33.2443464   Root MSE        =    3.1615
    
    ------------------------------------------------------------------------------
               y |      Coef.   Std. Err.      t    P>|t|     [95% Conf. Interval]
    -------------+----------------------------------------------------------------
              x1 |   -4.65257   13.16276    -0.35   0.724    -30.67935    21.37421
                 |
       c.x1#c.x1 |   .8658995    2.27483     0.38   0.704     -3.63213    5.363929
                 |
              x2 |  -42.47076    101.423    -0.42   0.676    -243.0147    158.0732
                 |
       c.x1#c.x2 |   33.62988   57.65397     0.58   0.561    -80.36953    147.6293
                 |
       c.x1#c.x1#|
            c.x2 |  -5.452162   8.488162    -0.64   0.522    -22.23584    11.33151
                 |
              x3 |  -.0129249   .0033161    -3.90   0.000    -.0194818   -.0063681
                 |
       c.x3#c.x3 |   1.09e-06   5.15e-07     2.11   0.037     6.85e-08    2.10e-06
                 |
       c.x3#c.x2 |  -.0062143   .0130708    -0.48   0.635    -.0320593    .0196308
                 |
       c.x3#c.x3#|
            c.x2 |   1.54e-06   2.51e-06     0.61   0.541    -3.42e-06    6.50e-06
                 |
           _cons |   56.37686   18.93592     2.98   0.003     18.93479    93.81893
    ------------------------------------------------------------------------------
    x2 is the moderating variable. My theoretical hypothesis is about comparing the following beta coefficients:
    _b[c.x1#c.x1#c.x2] and _b[c.x3#c.x3#c.x2]

    In some (management) papers, I have read that simply using the test command (i.e. test _b[c.x1#c.x1#c.x2] = _b[c.x3#c.x3#c.x2]) is not correct because the size of the main effects needs to be considered because a large interaction effect does not necessarily mean that the interaction effect is substantively important. For example, when linear effects are moderated, the following should be used:

    Code:
    webuse regress, clear
    quietly reg y c.x1##c.x2 c.x3##c.x2, noomitted
    nlcom (ratio1: _b[c.x1#c.x2]/_b[x1]) (ratio2: _b[c.x3#c.x2]/_b[x3]), post
    test _b[ratio1] = _b[ratio2]
    In my case, quadratic effects are being moderated. My question is what should one do when two different quadratic effects are being moderated? Can I simply do the following (building on the logic above)?

    Code:
    webuse regress, clear
    quietly reg y c.x1##c.x1##c.x2 c.x3##c.x3##c.x2, noomitted
    nlcom (ratio1: _b[c.x1#c.x1#c.x2]/_b[c.x1#c.x1]) (ratio2: _b[c.x3#c.x3#c.x2]/_b[c.x3#c.x3]), post
    test _b[ratio1] = _b[ratio2]
    There are, however, also other terms involved, i.e. _b[c.x1#c.x2], _b[c.x3#c.x2], _b[x1], and _b[x3].
    Do these terms need to somehow be incorporated in the computations above?
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