In this paper we present a neural network for nonmetric multidimensional scaling. In our approach, the monotone transformation
that is a part of every nonmetric scaling algorithm is performed by a special feedforward neural network with a modified backpropagation
algorithm. Contrary to traditional methods, we thus explicitly model the monotone transformation by a special purpose neural
network. The architecture of the new network and the derivation of the learning rule are given, as well as some experimental
results. The experimental results are positive.