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首页> 外文期刊>Journal of industrial and management optimization >SPARSE PROBABILISTIC BOOLEAN NETWORK PROBLEMS: A PARTIAL PROXIMAL-TYPE OPERATOR SPLITTING METHOD
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SPARSE PROBABILISTIC BOOLEAN NETWORK PROBLEMS: A PARTIAL PROXIMAL-TYPE OPERATOR SPLITTING METHOD

机译:稀疏概率布尔网络问题:局部近邻算子分裂方法

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摘要

The sparse probabilistic Boolean network (SPBN) model has been applied in various fields of industrial engineering and management. The goal of this model is to find a sparse probability distribution based on a given transition-probability matrix and a set of Boolean networks (BNs). In this paper, a partial proximal-type operator splitting method is proposed to solve a separable minimization problem arising from the study of the SPBN model. All the subproblem-solvers of the proposed method do not involve matrix multiplication, and consequently the proposed method can be used to deal with large-scale problems. The global convergence to a critical point of the proposed method is proved under some mild conditions. Numerical experiments on some real probabilistic Boolean network problems show that the proposed method is effective and efficient compared with some existing methods.
机译:稀疏概率布尔网络(SPBN)模型已应用于工业工程和管理的各个领域。该模型的目标是基于给定的转移概率矩阵和一组布尔网络(BN)找到稀疏的概率分布。为了解决SPBN模型研究中出现的可分离性最小化问题,本文提出了一种局部近邻型算子分裂方法。该方法的所有子问题求解器都不涉及矩阵乘法,因此,该方法可用于处理大规模问题。在某些温和条件下证明了该方法的全局收敛性。对一些实际的概率布尔网络问题的数值实验表明,与现有方法相比,该方法是有效的。

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