When testing n - 1 hypotheses ve, sus a simple alternative the corresp
onding generalized Neyman Pearson (GNP) tests provide an optimal solut
ion from a theoretical point of view. However, the practical merit of
these tests depends heavily on its simplicity. When the sample space i
s completely ordered the most simplest tests are monotone, i.e., rough
ly speaking, the critical region consists in the union of at most [n/2
] intervals (here [x] denotes the smallest integer less than or equal
to x). We show that the existence of monotone GNP-tests in a dominated
family of distributions implies that each selection of n densities co
nstitute a weak Tchebycheff-system of order n. These experiments are d
enoted as weak Tchebycheff-experiments. In particular, we show I-hat u
nder mild topological assumptions on the parameter space weak Tchebych
eff-experiments are Sign regular, provided continuous versions of the
densities exist. Further we determine the topological structure of the
sample and the parameter space of Tchebycheff-experiments. Various ex
amples of sign regular experiments on the real line and the circle are
discussed. Finally, applications to distributions of directional data
and complete class theorems are given. In particular, we indicate how
this concept can be applied successfully to describe the shape of GNP
-tests although the densities are not sign regular.