This book presents the theory and methods of flexible and generalized
uncertainty optimization. Particularly, it describes the theory of
generalized uncertainty in the context of optimization modeling. The
book starts with an overview of flexible and generalized uncertainty
optimization. It covers uncertainties that are both associated with lack
of information and are more general than stochastic theory, where
well-defined distributions are assumed. Starting from families of
distributions that are enclosed by upper and lower functions, the book
presents construction methods for obtaining flexible and generalized
uncertainty input data that can be used in a flexible and generalized
uncertainty optimization model. It then describes the development of the
associated optimization model in detail. Written for graduate students
and professionals in the broad field of optimization and operations
research, this second edition has been revised and extended to include
more worked examples and a section on interval multi-objective mini-max
regret theory along with its solution method.