Like norms, translation invariant functions are a natural and powerful
tool for the separation of sets and scalarization. This book provides an
extensive foundation for their application. It presents in a unified way
new results as well as results which are scattered throughout the
literature. The functions are defined on linear spaces and can be
applied to nonconvex problems. Fundamental theorems for the function
class are proved, with implications for arbitrary extended real-valued
functions. The scope of applications is illustrated by chapters related
to vector optimization, set-valued optimization, and optimization under
uncertainty, by fundamental statements in nonlinear functional analysis
and by examples from mathematical finance as well as from consumer and
production theory.
The book is written for students and researchers in mathematics and
mathematical economics. Engineers and researchers from other disciplines
can benefit from the applications, for example from scalarization
methods for multiobjective optimization and optimal control problems.