Learning paradigm
Feasible Learning: A Sample-Centric Paradigm
Feasible Learning trains models by solving a feasibility problem that bounds the loss on every training example, rather than optimizing for average performance. It is a sample-centric alternative to ERM for settings where tail behavior and per-example reliability matter.