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A Fuzzy-Decomposition Grey Modeling Procedure for Management Decision Analysis

机译:管理决策分析模糊分解灰色建模程序

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摘要

To cope with the increasingly fierce market competition environment, enterprises need to quickly respond to business issues and maintain business advantages, which require timely and correct decisions. In this context, the general mathematical modeling method may cause overfitting phenomenon when using small data sets, so it is difficult to ensure good analysis performance. Therefore, it is significant for enterprises to use limited samples to analyze and forecast. Over the past few decades, the grey model and its extensions have been shown to be effective tools for processing small data sets. To further enforce the effectiveness of data uncertainty processing, a fuzzy-decomposition modeling procedure for grey models is developed. Specifically, Latent Information (LI) function is employed to decompose the initial series into three subseries; next, the three subseries are used to build three grey models and create the estimated values of the three subseries; finally, the weighted average method is applying to combine the estimated values of the three subseries into a single final predicted value. After the actual test on the monthly demand data of the thin-film transistor liquid crystal display panels, the proposed fuzzy-decomposition modeling procedure can result in good prediction outcomes and is thus an appropriate decision analysis tool for managers.
机译:为了应对日益激烈的市场竞争环境,企业需要快速应对业务问题并保持业务优势,需要及时和正确的决策。在这种情况下,一般数学建模方法可能导致使用小数据集时的过度拟合现象,因此很难确保良好的分析性能。因此,企业使用有限的样品来分析和预测是重要的。在过去的几十年中,灰色模型及其扩展已被证明是处理小型数据集的有效工具。为了进一步执行数据不确定性处理的有效性,开发了一种用于灰色模型的模糊分解建模过程。具体地,采用潜在信息(Li)函数来将初始系列分解为三个子系;接下来,三个子系用于构建三个灰色模型,并创建三个子系列的估计值;最后,加权平均方法申请将三个子系的估计值与单个最终预测值组合。在对薄膜晶体管液晶显示面板的月度需求数据的实际测试之后,所提出的模糊分解建模程序可能导致良好的预测结果,因此是管理者的适当决策分析工具。

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