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A hybrid support vector machines and logistic regression approach for forecasting intermittent demand of spare parts

机译:混合支持向量机和逻辑回归方法预测零件的间歇性需求

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Owing to demand characteristics of spare part, demand forecasting for spare parts is especially difficult. Based on the properties of spare part demand, we develop a hybrid forecasting approach, which can synthetically evaluate autocorrelation of demand time series and the relationship of explanatory variables with demand of spare part. In the described approach, support vector machines (SVMs) are adapted to forecast occurrences of nonzero demand of spare part, and a hybrid mechanism for integrating the SVM forecast results and the relationship of occurrence of nonzero demand with explanatory variables is proposed. Using real data sets of 30 kinds of spare parts from a petrochemical enterprise in China, we show that our method produces more accurate forecasts of distribution of lead-time demands of spare parts than do current methods across almost all the lead times. (c) 2006 Elsevier Inc. All rights reserved.
机译:由于备件的需求特性,对备件的需求预测尤其困难。基于备件需求的性质,我们开发了一种混合预测方法,可以综合评估需求时间序列的自相关以及解释变量与备件需求的关系。在所描述的方法中,支持向量机(SVM)适用于预测备件非零需求的发生,并提出了一种混合机制,用于将SVM预测结果和非零需求的发生与解释变量的关系进行集成。使用来自中国石化企业的30种备品备件的真实数据集,我们证明,与当前方法在几乎所有提前期相比,我们的方法可生成更准确的备件备货时间需求分布预测。 (c)2006 Elsevier Inc.保留所有权利。

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