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Optimal parameters estimation and input subset for grey model based on chaotic particle swarm optimization algorithm

机译:基于混沌粒子群算法的灰色模型最优参数估计与输入子集

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摘要

Optimum prediction is a difficult problem, because there are no optimal models for all forecasting problems. In this paper, the authors attempt to find the high precision prediction for grey forecasting model (GM). Considering that chaotic particle swarm optimization algorithm (CPSO) will not get into local optimum and is easy to implement, the paper develops an approach for grey forecasting model, which is particularly suitable for small sample forecasting, based on chaotic particle swarm optimization and optimal input subset which is a new concept. The input subset of traditional time series consists of the whole original data, but the whole original does not always reflect the internal regularity of time series, so the new optimal subset method is proposed to better reflect the internal characters of time series and improve the prediction precision. The numerical simulation result of financial revenue demonstrates that developed algorithm provides very remarkable results compared to traditional grey forecasting model for small dataset forecasting.
机译:最佳预测是一个难题,因为没有针对所有预测问题的最佳模型。在本文中,作者试图找到用于灰色预测模型(GM)的高精度预测。考虑到混沌粒子群优化算法(CPSO)不会陷入局部最优且易于实现,本文基于混沌粒子群优化和最优输入,提出了一种灰色预测模型的方法,特别适用于小样本预测。子集,这是一个新概念。传统时间序列的输入子集包含整个原始数据,但整个原始数据并不总是反映时间序列的内部规律性,因此提出了一种新的最优子集方法,以更好地反映时间序列的内部特征并改善预测精确。财务收入的数值模拟结果表明,与传统的灰色预测模型相比,所开发的算法在小数据集预测方面提供了非常出色的结果。

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