On the set multi-cover problem in geometric settings
Chandra Chekuri, Kenneth L. Clarkson, et al.
SCG 2009
We develop a continuous-time framework based on multiplicative weight updates to approximately solve continuous optimization problems. The framework allows for a simple and modular analysis for a variety of problems involving convex constraints and concave or submodular objective functions. The continuous-time framework avoids the cumbersome technical details that are typically necessary in actual algorithms. We also show that the continuous-time algorithms can be converted into implementable algorithms via a straightforward discretization process. Using our framework and additional ideas we obtain significantly faster algorithms compared to previously known algorithms to maximize the multilinear relaxation of a monotone or non-monotone submodular set function subject to linear packing constraints.
Chandra Chekuri, Kenneth L. Clarkson, et al.
SCG 2009
Chandra Chekuri, Jan Vondrák, et al.
ACM-SIAM 2011
Yaron Singer, Jan Vondrák
NeurIPS 2015
Shaddin Dughmi, Jan Vondrák
FOCS 2011