minmaxx
Minmaxx is a term used in optimization and decision theory to denote a family of methods that integrate min and max operations to address decisions under uncertainty. The core idea is to choose decisions that perform well across the worst-case outcomes, while allowing for variants that consider other extreme scenarios. The term is not tied to a single standard formulation; its definition and scope vary by field and author.
Origins and usage: The concept traces its roots to the classical minimax principle in game theory and
Methodology: In a typical minmaxx problem, an objective function is optimized against the most adverse realization
Applications: Minmaxx concepts appear in supply chain design under demand variability, finance for worst-case risk budgeting,
Representative variants: minmaxx with regret, interval-based minmaxx, stochastic-minmax hybrids, and multi-objective minmaxx. Each variant seeks to
Criticism: Critics note that strict worst-case optimization can be overly conservative, and practical use often requires
See also: minimax, robust optimization, interval analysis, decision theory, game theory.