A Bayesian network based solution scheme for the constrained Stochastic On-line Equi-Partitioning Problem

CoRR(2018)

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摘要
A number of intriguing decision scenarios revolve around partitioning a collection of objects to optimize some application specific objective function. This problem is generally referred to as the Object Partitioning Problem (OPP) and is known to be NP-hard. We here consider a particularly challenging version of OPP, namely, the Stochastic On-line Equi-Partitioning Problem (SO-EPP). In SO-EPP, the target partitioning is unknown and has to be inferred purely from observing an on-line sequence of object pairs. The paired objects belong to the same partition with probability p and to different partitions with probability 1 − p , with p also being unknown. As an additional complication, the partitions are required to be of equal cardinality. Previously, only heuristic sub-optimal solution strategies have been proposed for SO- EPP. In this paper, we propose the first Bayesian solution strategy. In brief, the scheme that we propose, BN-EPP, is founded on a Bayesian network representation of SO-EPP problems. Based on probabilistic reasoning, we are not only able to infer the underlying object partitioning with superior accuracy. We are also able to simultaneously infer p , allowing us to accelerate learning as object pairs arrive. Furthermore, our scheme is the first to support a wide range of constraints on the partitioning (Constrained SO-EPP). Being Bayesian, BN-EPP provides superior performance compared to existing solution schemes. We additionally introduce Walk-BN-EPP, a novel WalkSAT inspired algorithm for solving large scale BN-EPP problems. Finally, we provide a BN-EPP based solution to the problem of order picking, a representative real-life application of BN-EPP.
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关键词
Bayesian networks,Equipartitioning,Bayesian reasoning and modelling,Thompson sampling,Warehouse optimization,Stochastic optimization
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