Multitype Integer Monoid Optimization and Applications
Du\v{s}an Knop, Martin Kouteck\'y, Asaf Levin, Matthias Mnich, Shmuel, Onn

TL;DR
This paper introduces Multitype Integer Monoid Optimization (MIMO), a framework for decomposing item multiplicities into configurations with objectives, leading to faster algorithms for scheduling and packing problems.
Contribution
It formalizes the MIMO problem, develops exact algorithms using a novel proximity theorem, and applies these to improve solutions for scheduling and bin packing.
Findings
Developed fast exact algorithms for MIMO with various configurations.
Connected solutions of configuration IPs to their continuous relaxations.
Applied MIMO to improve algorithms for scheduling and bin packing problems.
Abstract
Configuration integer programs (IP) have been key in the design of algorithms for NP-hard high-multiplicity problems since the pioneering work of Gilmore and Gomory [Oper. Res., 1961]. Configuration IPs have a variable for each possible configuration, which describes a placement of items into a location, and whose value corresponds to the number of locations with that placement. In high multiplicity problems items come in types, and are represented succinctly by a vector of multiplicities; solving the configuration IP then amounts to deciding whether the input vector of multiplicities of items of each type can be decomposed into a given number of configurations. We make this implicit notion explicit by observing that the set of all input vectors decomposable into configurations forms a monoid, and solving the configuration IP is the Monoid Decomposition problem. Motivated by…
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Taxonomy
TopicsOptimization and Packing Problems · Scheduling and Optimization Algorithms · Advanced Graph Theory Research
