Approximation Algorithms for Stochastic Minimum Norm Combinatorial Optimization
Sharat Ibrahimpur, Chaitanya Swamy

TL;DR
This paper introduces a framework for approximation algorithms in stochastic minimum-norm combinatorial optimization, addressing problems with random costs and broad objective functions, and applies it to load balancing and spanning tree problems.
Contribution
It develops a general approach for stochastic minimum-norm optimization, connecting it to expected Top-ell norms and providing algorithms for load balancing and spanning tree problems.
Findings
Established a structural connection to expected Top-ell norms.
Developed algorithms for stochastic load balancing and spanning tree.
Circumvented non-separability issues in Top-ell norms.
Abstract
Motivated by the need for, and growing interest in, modeling uncertainty in data, we introduce and study {\em stochastic minimum-norm optimization}. We have an underlying combinatorial optimization problem where the costs involved are {\em random variables} with given distributions; each feasible solution induces a random multidimensional cost vector, and given a certain objective function, the goal is to find a solution (that does not depend on the realizations of the costs) that minimizes the expected objective value. For instance, in stochastic load balancing, jobs with random processing times need to be assigned to machines, and the induced cost vector is the machine-load vector. Recently, in the deterministic setting, Chakrabarty and Swamy \cite{ChakrabartyS19a} considered a fairly broad suite of objectives, wherein we seek to minimize the -norm of the cost vector under a given…
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