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An Intelligence Optimized Rolling Grey Forecasting Model Fitting to Small Economic Dataset

机译:一种智能优化滚动灰色预测模型,适用于小型经济数据集

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Grey system theory has been widely used to forecast the economic data that are often highly nonlinear, irregular, and nonstationary. The size of these economic datasets is often very small. Many models based on grey system theory could be adapted to various economic time series data. However, some of these models did not consider the impact of recent data or the effective model parameters that can improve forecast accuracy. In this paper, we proposed the PRGM(1,1) model, a rolling mechanism based grey model optimized by the particle swarm optimization, in order to improve the forecast accuracy. The experiment shows that PRGM(1,1) gets much better forecast accuracy among other widely used grey models on three actual economic datasets.
机译:灰色系统理论已被广泛用于预测通常高度非线性,不规则和非间平的经济数据。这些经济数据集的大小通常很小。基于灰色系统理论的许多模型可以适应各种经济时序数据。但是,其中一些模型没有考虑最近数据的影响或可以提高预测准确性的有效模型参数。在本文中,我们提出了PRGM(1,1)模型,由粒子群优化的基于轧制机构的灰色模型,以提高预测精度。实验表明,PRGM(1,1)在三个实际的经济数据集中获得了其他广泛使用的灰色模型的预测准确性。

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