I have dependent variable with four categories, I am running a gologit regression and I have to explain the resulting coefficients in an intuitive manner. I understand that the latter are *almost* the same as the ones that I would get if I ran many binary logistic regressions. However, there the differences arise "because the gologit model estimates all the parameters simultaneously whereas the separate logistic regressions estimate them one cumulative logit at a time", (Williams; 2016)1. I think that I would have no problem explaining the coefficients just as the result of binary regressions, but I don't get how to explain the intuition of estimating "all parameters simultaneously". Can someone help me?
1https://www3.nd.edu/~rwilliam/rwpubs/UnderstandingGologit2016.pdf
1https://www3.nd.edu/~rwilliam/rwpubs/UnderstandingGologit2016.pdf
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