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  • Interaction terms in non-linear model

    Dear Statalist,
    I am running a NB and a ZINB model with an interaction term.
    In particular, I want to evaluate the effect of a given policy on the number of patents. Since I believe that the effect of the policy may be different for developed and developing countries, together with the dummy variable "policy" I added the interaction term "policy* developing country" (instead, I have no dummy for being a developing country since this country characteristic is time invariant, and it is dropped once I add the country FE).
    Now, what I obtain, in terms of IRR, is a coefficient (not statistically significant) of 1.395 for "policy", and a coefficient of 0.494 (statistically significant at the 5% level) for "policy* developing country". If both coefficients were significant, I would have said that having a given policy causes an increase of 39.5% in the number of patents, while this effect reduces by 50.6% for developing countries (for which therefore the effect of the law is 0.395*0.494=19.5%).
    But what can I say if the coefficient for "policy" is not statistically significant, while the one for "policy* developing country" is?
    Thank's
    Simona

  • #2
    Just to be clear, are you saying you have an interaction term in the model without both main effects in the model?

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    • #3
      Yes, because the main effect "being a developing country" is omitted because of country FE...

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      • #4
        I'm posting this just in case: http://www.ats.ucla.edu/stat/stata/f...ain_effect.htm. Sounds like you are already familiar with this kind of thing, about how standard interpretations can change when the model doesn't have main effects too.

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        • #5
          Thank's for the link! This compicates things even more: I was erroneously thinking that loosing one main effect because of FE was like controlling for it...
          May I ask you some help to interprete the results? I have understood I need to rescale them, but it's not clear to me how to do it with an exponential model.
          Here are results I obtain for a simplified NB model, where country FE are not included (so that I can have both main effects- "least_developing" is the same as "poor"):
          weightedp IRR Std. Err. z P>z [95% Conf. Interval]
          law 1.745122 .3688159 2.63 0.008 1.153273 2.640704
          least_developing .0071902 .0012028 -29.50 0.000 .0051802 .0099801
          law_poor .7586166 .2447968 -0.86 0.392 .4030412 1.427892
          _cons 353.8976 51.86221 40.05 0.000 265.5447 471.6476
          while these are the results when one main effect is omitted (always without FE):
          weightedp IRR Std. Err. z P>z [95% Conf. Interval]
          law 7.66305 1.702895 9.16 0.000 4.957313 11.8456
          law_poor .0054546 .0019868 -14.31 0.000 .0026713 .011138
          _cons 80.59382 7.400211 47.80 0.000 67.31991 96.48504
          So, in the first table I see that the effect of the law causes an increase of 75% in the number of patents for developed countries, and (if I am not wrong) the effect for developing countries should be the same (given that "law_poor" is not significant).
          But what about the second table?
          Thank you very much for pointing this out!!

          Comment


          • #6
            Ok, thank's (again) to the help of Statalist I have solved this last problem: although one of the main effect is omitted (because it is time invariant and I have country FE), I can still interprete my results and my coefficients as I was doing (so, no need to rescale them).

            So, the previous question should still make some sense:
            Using a NB model, I obtain a coefficient, in terms of IRR, of 1.395 for "policy", and a coefficient of 0.494 for "policy* developing country".
            However, the coefficient for "policy" is not statistically significant, while the one for "policy* developing country" is statistically significant at the 5% level.
            If both coefficients were significant, I would have said that having the given policy causes an increase of 39.5% in the number of patents, while this effect reduces by 50.6% for developing countries (for which therefore the effect of the law is 0.395*0.494=19.5%).
            But what can I say if the coefficient for "policy" is not statistically significant, while the one for "policy* developing country" is?
            Not having the dummy variable "developing country", I cannot even interprete the interation term as a variation in the effect of being a developing country when the policy is there.

            Thank you again!
            ​Simona

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