Randomized Rounding for the Largest Simplex Problem
Abstract
The maximum volume -simplex problem asks to compute the -dimensional simplex of maximum volume inside the convex hull of a given set of points in . We give a deterministic approximation algorithm for this problem which achieves an approximation ratio of . The problem is known to be -hard to approximate within a factor of for some constant . Our algorithm also gives a factor approximation for the problem of finding the principal submatrix of a rank positive semidefinite matrix with the largest determinant. We achieve our approximation by rounding solutions to a generalization of the -optimal design problem, or, equivalently, the dual of an appropriate smallest enclosing ellipsoid problem. Our arguments give a short and simple proof of a restricted invertibility principle for determinants.
Cite
@article{arxiv.1412.0036,
title = {Randomized Rounding for the Largest Simplex Problem},
author = {Aleksandar Nikolov},
journal= {arXiv preprint arXiv:1412.0036},
year = {2015}
}