Dear David :
I have two questions on De Servigny Chapter 4 on loss given default. May be you can help
(1) You say that Kernel modeling is nonparametric technique. So I think it should not be based on some distribution and just from sample, we should make inference. But you write at the same time that it uses Gaussian PDF for inferring probabilities. I could not get it.
(2) In beta distribution, you said that as standard deviations are large so we must use stochastic recovery rate. Why the presence of large standard erros would make this randomness necessary for recovery rates?
best wishes
Peter
I have two questions on De Servigny Chapter 4 on loss given default. May be you can help
(1) You say that Kernel modeling is nonparametric technique. So I think it should not be based on some distribution and just from sample, we should make inference. But you write at the same time that it uses Gaussian PDF for inferring probabilities. I could not get it.
(2) In beta distribution, you said that as standard deviations are large so we must use stochastic recovery rate. Why the presence of large standard erros would make this randomness necessary for recovery rates?
best wishes
Peter