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AN OPTIMAL MULTI-VARIABLE GREY MODEL FOR LOGISTICS DEMAND FORECAST

机译:物流需求预测的最优多变量灰色模型

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摘要

The grey system theory, which has been extensively used in many areas, is appropriate for forecasting. It is necessary to put forward new models or algorithms to improve its performance, especially for forecast accuracy. In the forecast process of grey model, the size of data sample and the number of variables can affect forecast accuracy. In this paper, we first put forward a new method to choose optimal forecast variable number and data sample size for multi-variable grey model. Then we establish an optimal multivariable grey model, in which the goal function is the minimum fitting relative error; and one constraint is data sample constraint, and the other is variable number constraint. Finally, we give the algorithm. Case studies of logistics demand forecast indicate that the model can solve the problem of factor choice and data sample size determination with high accuracy, and can fully utilize the sample information.
机译:灰色系统理论已在许多领域得到广泛应用,适用于预测。有必要提出新的模型或算法来改善其性能,特别是对于预测准确性。在灰色模型的预测过程中,数据样本的大小和变量的数量会影响预测的准确性。在本文中,我们首先提出了一种为多变量灰色模型选择最优预测变量数和数据样本量的新方法。然后建立一个最优的多元灰色模型,其目标函数为最小拟合相对误差。一个约束是数据样本约束,另一个约束是可变数约束。最后,我们给出算法。物流需求预测的案例研究表明,该模型可以高精度地解决因素选择和数据样本量确定的问题,可以充分利用样本信息。

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