Some notes on extremal discriminant analysis
By
Manjunath B.G., Melanie Frick and Rolf-Dieter Reiss
Abstract
Classical discriminant analysis focusses on Gaussian and nonparametric models
where in the second case the unknown densities are replaced by kernel densities based
on the training sample. In the present article we assume that it suffices to base the
classification on exceedances above higher thresholds, which can be interpreted as
observations in a conditional framework. Therefore, the statistical modeling of
truncated distributions is merely required. In this context, a nonparametric
modeling is not adequate because the kernel method is inaccurate in the
upper tail region. Yet one may deal with truncated parametric distributions
like the Gaussian ones. Our primary aim is to replace truncated Gaussian
distributions by appropriate generalized Pareto distributions and to explore
properties and the relationship of discriminant functions in both models.