In the frame of this bachelor thesis, density estimation with the sparse grid combination
technique was implemented and integrated into the sparseSpACE framework. The sparse
grid combination technique is used to compute a sparse grid, whereby a specific sequence of
small anisotropic full grids is combined linearly, to tackle the curse of dimensionality. The
usage of mass lumping in the density estimation process is also explored, which still achieves
relatively good results compared to the standard combination method. The density function
is estimated for different data sets using the combination technique and compared with the
full grid solution in regards to different error norms. The test results show that we achieve
a good estimate of the density function while simultaneously reducing the number of grid
points used.
«
In the frame of this bachelor thesis, density estimation with the sparse grid combination
technique was implemented and integrated into the sparseSpACE framework. The sparse
grid combination technique is used to compute a sparse grid, whereby a specific sequence of
small anisotropic full grids is combined linearly, to tackle the curse of dimensionality. The
usage of mass lumping in the density estimation process is also explored, which still achieves
relatively good results compared to the...
»