Hi, I´m running negative binomial regressions on two models. Model 1 is made on five independent variables (IV), and model 2 of two IV. Four of the five IV in model 1 are actually made from one of the IV in model 2; one IV in model 2 are the total profit (four sub-profits combined), and the four IV in model 1 is those four parts which in total gives the one IV in model 2. The fifth IV in model 1, and the second IV in model 2, are the same. The thing is thus that; when running the same IV (lets call it 'migration') in respectively model 1 (up against the four parts) and in model 2 (up against the total of the four parts) then I would expect to get the same p-value for 'migration', as it is the same in both models, which further should be two ways of running the same, but instead the 'migration' IV is significant in one of the models, but not in the other. I would think the p-value for the 'migration' IV should be the same - at least either significant or not in both...!? I would like to use both models, to thus give respectively a kind of macro and micro perspective on same factors, although I this way find it hard to conclude on 'migration' being significant or not... Can someone please help me understand what I do not seem to quite get in my tired head...? (Please look at the attached pictures). Despite it is a bit complex to write in few words, I hope I made it understandable what I mean...!?

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