In the frame of this thesis the sparse grid combination technique was used to expand
the density estimation based approach to classification in the SG++ framework. Thanks
to the independence of the component grids, it was possible to implement much faster
dimensional adaptive refinements. While the old implementation had to refit the whole
grid after each refinement step, now just the additionally added components have to be
fitted. The thesis contains the theoretical background, a description, and an evaluation
of the implementation.
«
In the frame of this thesis the sparse grid combination technique was used to expand
the density estimation based approach to classification in the SG++ framework. Thanks
to the independence of the component grids, it was possible to implement much faster
dimensional adaptive refinements. While the old implementation had to refit the whole
grid after each refinement step, now just the additionally added components have to be
fitted. The thesis contains the theoretical background, a descript...
»