Skip to yearly menu bar Skip to main content


Poster

Approximating Concavely Parameterized Optimization Problems

Joachim Giesen · Jens K Mueller · Sören Laue · Sascha Swiercy

Harrah’s Special Events Center 2nd Floor

Abstract: We consider an abstract class of optimization problems that are parameterized concavely in a single parameter, and show that the solution path along the parameter can always be approximated with accuracy ε>0 by a set of size O(1/ε). A lower bound of size Ω(1/ε) shows that the upper bound is tight up to a constant factor. We also devise an algorithm that calls a step-size oracle and computes an approximate path of size O(1/ε). Finally, we provide an implementation of the oracle for soft-margin support vector machines, and a parameterized semi-definite program for matrix completion.

Live content is unavailable. Log in and register to view live content