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arxiv: 1604.00377 · v1 · pith:RQ6F2U7Inew · submitted 2016-04-01 · 💻 cs.AI

Reinforcement learning based local search for grouping problems: A case study on graph coloring

classification 💻 cs.AI
keywords groupingproblemscoloringlearninglocalreinforcementsearchapproach
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Grouping problems aim to partition a set of items into multiple mutually disjoint subsets according to some specific criterion and constraints. Grouping problems cover a large class of important combinatorial optimization problems that are generally computationally difficult. In this paper, we propose a general solution approach for grouping problems, i.e., reinforcement learning based local search (RLS), which combines reinforcement learning techniques with descent-based local search. The viability of the proposed approach is verified on a well-known representative grouping problem (graph coloring) where a very simple descent-based coloring algorithm is applied. Experimental studies on popular DIMACS and COLOR02 benchmark graphs indicate that RLS achieves competitive performances compared to a number of well-known coloring algorithms.

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