LP-based algorithms for multistage minimization problems
Evripidis Bampis, Bruno Escoffier, Alexander Kononov

TL;DR
This paper explores LP-based approximation algorithms for multistage combinatorial optimization problems, introducing a new rounding scheme that achieves improved approximation ratios for several problems including Set Cover, Steiner Tree, and TSP.
Contribution
It develops a novel two-threshold rounding scheme for multistage problems and applies it to obtain new approximation algorithms with better ratios.
Findings
Min Cut remains polynomial-time solvable in multistage setting.
Vertex Cover remains 2-approximable in multistage setting.
New rounding scheme yields improved approximation ratios for Set Cover, Steiner Tree, and TSP.
Abstract
We consider a multistage framework introduced recently where, given a time horizon t=1,2,...,T, the input is a sequence of instances of a (static) combinatorial optimization problem I_1,I_2,...,I_T, (one for each time step), and the goal is to find a sequence of solutions S_1,S_2,...,S_T (one for each time step) reaching a tradeoff between the quality of the solutions in each time step and the stability/similarity of the solutions in consecutive time steps. For several polynomial-time solvable problems, such as Minimum Cost Perfect Matching, the multistage variant becomes hard to approximate (even for two time steps for Minimum Cost Perfect Matching). In this paper, we study the multistage variants of some important discrete minimization problems (including Minimum Cut, Vertex Cover, Set Cover, Prize-Collecting Steiner Tree, Prize-Collecting Traveling Salesman). We focus on the natural…
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