uncertaintydriven
Uncertaintydriven is a term used to describe methods and designs that explicitly center uncertainty in decision making, modeling, and optimization. The aim is to quantify, propagate, and manage uncertainty to improve robustness and reliability rather than relying solely on point estimates.
Core ideas include uncertainty quantification, probabilistic modeling, Bayesian inference, and robust optimization. These approaches produce distributions
Common methods encompass Bayesian experimental design, active learning, stochastic optimization, and scenario analysis. They prioritize sampling
Applications span engineering design under variable loads, climate and environmental modeling, financial risk management, healthcare decision
Benefits include improved resilience, safer or more cost-effective outcomes, and transparent risk assessment. Limitations involve computational
The concept relates to uncertainty quantification, probabilistic programming, robust optimization, risk-based design, and decision theory. It