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arxiv: 2403.07041 · v4 · pith:TFS23BNInew · submitted 2024-03-11 · 💻 cs.LG · cs.NE

Ant Colony Sampling with GFlowNets for Combinatorial Optimization

classification 💻 cs.LG cs.NE
keywords colonycombinatorialoptimizationdistributionflowgenerativegfacsgflownets
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We present the Generative Flow Ant Colony Sampler (GFACS), a novel meta-heuristic method that hierarchically combines amortized inference and parallel stochastic search. Our method first leverages Generative Flow Networks (GFlowNets) to amortize a \emph{multi-modal} prior distribution over combinatorial solution space that encompasses both high-reward and diversified solutions. This prior is iteratively updated via parallel stochastic search in the spirit of Ant Colony Optimization (ACO), leading to the posterior distribution that generates near-optimal solutions. Extensive experiments across seven combinatorial optimization problems demonstrate GFACS's promising performances.

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