Tight Guarantees for Cut-Relative Survivable Network Design via a Decomposition Technique
Nikhil Kumar, JJ Nan, and Chaitanya Swamy

TL;DR
This paper introduces a new cut-relative survivable network design problem, develops a novel decomposition technique, and provides a tight 2-approximation algorithm along with hardness results.
Contribution
It defines the cut-relative SNDP, shows its differences from path-relative SNDP, and presents a novel decomposition method to achieve tight approximation guarantees.
Findings
Developed a 2-approximation algorithm for CR-SNDP.
Established hardness results for relative SNDP variants.
Introduced a novel decomposition technique for non-supermodular functions.
Abstract
In the classical \emph{survivable-network-design problem} (SNDP), we are given an undirected graph , non-negative edge costs, and some tuples, where and . We seek a minimum-cost subset such that each - pair remains connected even if any edges fail. It is well-known that SNDP can be equivalently modeled using a weakly-supermodular \emph{cut-requirement function} , where we seek a minimum-cost edge-set containing at least edges across every cut . Recently, Dinitz et al. proposed a variant of SNDP that enforces a \emph{relative} level of fault tolerance with respect to , where the goal is to find a solution that is at least as fault-tolerant as itself. They formalize this in terms of paths and fault-sets, which gives rise to \emph{path-relative SNDP}. Along…
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