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Structural learning of the Boltzmann machine and its application to life cycle management

机译:玻尔兹曼机的结构学习及其在生命周期管理中的应用

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摘要

The objective of this research is to realise structural learning within a Boltzmann machine (BM), which enables the effective solution of problems defined as mixed integer quadratic programming. Simulation results show that computation time is reduced by up to one-fifth compared to conventional BMs. The computational efficiency of the resulting double-layer BM is approximately expressed as the ratio n divided by N, where n is the number of selected units (neuronsodes) and N is the total number of units. The double-layer BM was applied to efficiently solve a mean-variance problem using mathematical programming with two objectives: the minimisation of risk and the maximisation of expected return. Finally, the effectiveness of our method is illustrated by way of a life cycle management example. The double-layer BM was able to more effectively select results with lower computational overhead. The results also enable us to more easily understand the internal structure of the BM. Using our proposed model, decision makers are able to select the best solution based on their risk preference from the alternative solutions provided by the proposed method.
机译:这项研究的目的是在Boltzmann机器(BM)中实现结构学习,从而有效解决定义为混合整数二次规划的问题。仿真结果表明,与传统BM相比,计算时间最多可减少五分之一。所得双层BM的计算效率近似表示为比率n除以N,其中n是选定单元的数量(神经元/节点),N是单元总数。使用具有两个目标的数学规划,双层BM被用于有效地解决均方差问题:风险最小化和期望收益最大化。最后,通过生命周期管理示例说明了我们方法的有效性。双层BM能够以较低的计算开销更有效地选择结果。结果还使我们能够更轻松地了解BM的内部结构。使用我们提出的模型,决策者能够根据他们的风险偏好,从提出的方法提供的替代解决方案中选择最佳解决方案。

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