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Prediction Model Selection and Spare Parts Ordering Policy for Efficient Support of Maintenance and Repair of Equipment

机译:有效支持设备维护和维修的预测模型选择和备件订购策略

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The prediction model selection problem via variable subset selection is one of the most pervasive model selection problems in statistical applications. Often referred to as the problem of subset selection, it arises when one wants to model the relationship between a variable of interest and a subset of potential explanatory variables or predictors, but there is uncertainty about which subset to use. Several papers have dealt with various aspects of the problem but it appears that the typical regression user has not benefited appreciably. One reason for the lack of resolution of the problem is the fact that it has not been well defined. Indeed, it is apparent that there is not a single problem, but rather several problems for which different answers might be appropriate. The intent of this paper is not to give specific answers but merely to present a new simple multiplicative variable selection criterion based on the parametrically penalized residual sum of squares, which performs consistently well across a wide variety of variable selection problems. This criterion allows one to select a subset model for prediction of a demand for spare parts, in support of maintenance and repair of equipment. The past data of prediction errors are used at each stage to determine an adaptive spare parts ordering policy for a providing an adequate yet efficient supply of spare parts. In order to optimize the adaptive spare parts ordering policy at each stage under parametric uncertainty, the invariant embedding technique is used. Practical utility of the proposed approach is demonstrated by examples.
机译:通过变量子集选择的预测模型选择问题是统计应用中最普遍的模型选择问题之一。通常被称为子集选择的问题,当人们想要对感兴趣的变量与潜在的解释变量或预测变量的子集之间的关系进行建模时出现,但是却不确定使用哪个子集。几篇论文讨论了该问题的各个方面,但是看起来典型的回归用户并没有明显受益。缺乏解决问题的原因之一是尚未明确定义这一事实。确实,很明显,这不是一个单一的问题,而是几个可能需要不同答案的问题。本文的目的不是给出具体的答案,而只是提出一种基于参数惩罚残差平方和的新的简单乘法变量选择准则,该准则在各种各样的变量选择问题中始终表现良好。这一标准允许人们选择一个子集模型来预测备件需求,以支持设备的维护和修理。在每个阶段都使用过去的预测误差数据来确定自适应备件订购策略,以提供足够而有效的备件供应。为了在参数不确定的情况下优化每个阶段的自适应备件订购策略,使用了不变嵌入技术。实例证明了所提出方法的实用性。

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