An efficient nonconvex reformulation of stagewise convex optimization problems
–Neural Information Processing Systems
Convex optimization problems with staged structure appear in several contexts, including optimal control, verification of deep neural networks, and isotonic regression. Off-the-shelf solvers can solve these problems but may scale poorly. We develop a nonconvex reformulation designed to exploit this staged structure. Our reformulation has only simple bound constraints, enabling solution via projected gradient methods and their accelerated variants.
Neural Information Processing Systems
Oct-3-2025, 00:52:24 GMT