Depth profiling has been performed by using Auger electron
spectrometry and X-ray photoelectron spectrometry in combination
with Ar-ion sputtering. The data obtained by both surface-analytical
methods have been evaluated by means of factor analysis and partly by
applying artificial neural network in order to determine the compositional
layering of different thin-films such as TiNx on Ti,
Cr2O3/CrN sandwich layer, and copper
oxide on Cu. Both multivariate statistical methods applied to
the same data sets lead to results that agree well within
statistical deviations provided that the structure of the
artificial neural network is constructed appropriate to the
actual problem.