Dear Wilmotters',
I would like to come up with a solution to measure the likelihood of two economical scenarios arising simultaneously. For instance, how likely it is that a drop in the S&P 500 will cause a drop in the WTI price?
Of course, correlation is limited and would not fit for that purpose as it will only give me the linear dependency between these risk factors. Instead, I am more thinking about copulas.
Say I have n risk factors. I can graph their (historical) marginal distributions. Assuming a multivariate copula structure (which one???), I can then get the joint distribution of these n factors which is essentially what I am interested in, right?
The problem is, how to choose the copula structure? Is there other solutions, non-parametric, similar to these one? Indeed, if I am not mistaken this approach is parametric as you assume first a parametric (say Gaussian) copula structure that you then fit to your dataset.
Could someone enlighten me on this?
Many thanks in advance.
