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A variable P value rolling Grey forecasting model for Taiwan semiconductor industry production

机译:台湾半导体产业生产的可变P值滚动灰色预测模型

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The semiconductor industry plays an important role in Taiwan's economy. In this paper, we constructed a rolling Grey forecasting model (RGM) to predict Taiwan's annual semiconductor production. The univariate Grey forecasting model (GM) makes forecast of a time series of data without considering possible correlation with any leading indicators. Interestingly, within the RGM there is a constant, P value, which was customarily set to 0.5. We hypothesized that making the P value a variable of time could generate more accurate forecasts. It was expected that the annual semiconductor production in Taiwan should be closely tied with U.S. demand. Hence, we let the P value be determined by the yearly percent change in real gross domestic product (GDP) by U.S. manufacturing industry. This variable P value RGM generated better forecasts than the fixed P value RGM. Nevertheless, the yearly percent change in real GDP by U.S. manufacturing industry is reported after a year ends. It cannot serve as a leading indicator for the same year's U.S. demand. We found out that the correlation between the yearly survey of anticipated industrial production growth rates in Taiwan and the yearly percent changes in real GDP by U.S. manufacturing industry has a correlation coefficient of 0.96. Therefore, we used the former to determine the P value in the RGM, which generated very accurate forecasts.
机译:半导体产业在台湾经济中起着重要作用。在本文中,我们构建了滚动灰色预测模型(RGM)来预测台湾的年度半导体产量。单变量灰色预测模型(GM)可以预测数据的时间序列,而无需考虑与任何领先指标的可能相关性。有趣的是,在RGM中有一个恒定的P值,通常将其设置为0.5。我们假设使P值随时间变化可以生成更准确的预测。预计台湾的年半导体产量应与美国的需求紧密联系在一起。因此,我们让P值由美国制造业的实际国内生产总值(GDP)的年度百分比变化确定。与固定P值RGM相比,此可变P值RGM产生了更好的预测。不过,据报告,一年后美国制造业实际GDP的年变化百分比。它不能作为当年美国需求的领先指标。我们发现,对台湾预期工业生产增长率的年度调查与美国制造业在实际GDP中的年度百分比变化之间的相关系数为0.96。因此,我们使用前者确定RGM中的P值,从而生成非常准确的预测。

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