I don't know if it is a good idea to post my question in MathOverflow instead of Mathexchange. But it seems to me that it is more appropriate to post my question in MathOverflow.
By definition, copula is a special case of subcopula, in which the domain of the function is $[0;1]^n$.
So, as for me, subcopula is more general and it can be used to model a wider variety of type of variables whereas copula is mainly used to model continuous random variables.
However, in the literature, I have seen very little article that talk about subcopula modelling as well as its inference/estimation from the data.
Could you please explain me why sub copula is very less used while it is more general ? And what is the main technical constraint in the inference/estimation of sub copula ?
Thank you very much for your help!