This article is a small survey and
pioneering as a starting point for a longer research project: to
utilize generalized semi-infinite optimization for purposes of
prediction. Firstly, it reflects the analytical and inverse (intrinsic) behaviour of generalized semi-infinite
optimization problems P(f,h,g,u,v) and presents
interpretations of them from the viewpoint of anticipatory
systems. These differentiable problems admit an infinite set
Y(x) of inequality constraints y, which depends on the
state x. Under suitable assumptions, we present global stability properties of the feasible set and corresponding structural stability properties of the entire optimization
problem. The achieved results are a
basis of algorithm design.
In the course of explanation, the
perturbational approach gives rise to reconstructions. By
studying three applications of generalized semi-infinite
optimization, secondly, we interpret these aspects of inverse
problems in the sense of prediction. The three anticipatory
systems are: (i) Reverse Chebychev approximation, where we
describe a given system by a neighbouring easier one as long as
possible under some error tolerance. We begin by a motivating
problem from chemical engineering and turn then to time-dependent
systems. (ii) Time-minimal or -maximal optimization
problems, where we want to pull or push the time-horizon of some
process to present time or into the future. We mention global
warming and turn to further kinds of biosystems. (iii) Computational biology, where we are concerned with prediction and
stability of DNA microarray gene-expression patterns.