Which copula estimation approach performs better when the empirical data to be modeled has a small sample size?
- Parametric copulas (Gaussian, t-, Gumbel, Clayton, etc), or
- Non-parametric (empirical) copula: histogram, kernel density based approaches that involve binning the samples
What is the nature of the problem that small samples impose on accurate copula estimation? Do the problems of whether parametric or non-parametric (marginal) density estimators spillover to copula estimators?