The article presents a controller for economic processes based on the
theory of Bayesian belief nets. The purpose of this controller is to d
etect divergencies between actual state and target state of the proces
s and to output correcting variables with the aim of reaching the targ
et state. First, we introduce Bayesian belief nets as a calculus for r
easoning under uncertainty. Then, we show how to extend this calculus
to cope with vagueness as well, thereby allowing to reason about both,
vagueness and uncertainty, in a common calculus. Reasoning in this co
ntext denotes the exploration of cause-effect relations between vague
and uncertain nodes. On this basis the controller itself is developed,
which consists of the Bayesian belief net (BBN) and its interfaces to
the environment. The interfaces are described by transformation funct
ions from exact (scalar) input quantities into the probabilistic input
s of the net and by the back-transformation of the net's probabilistic
output into exact variables. The applicability of the BBN controller
is shown using a simplified logistics example, demonstrating the compu
ter-based reasoning possibilities for application experts.