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Forecasting Based on High-Order Fuzzy-Fluctuation Trends and Particle Swarm Optimization Machine Learning

机译:基于高阶模糊波动趋势和粒子群优化机器学习的预测

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Most existing fuzzy forecasting models partition historical training time series into fuzzy time series and build fuzzy-trend logical relationship groups to generate forecasting rules. The determination process of intervals is complex and uncertain. In this paper, we present a novel fuzzy forecasting model based on high-order fuzzy-fluctuation trends and the fuzzy-fluctuation logical relationships of the training time series. Firstly, we compare each piece of data with the data of theprevious day in a historical training time series to generate a new fluctuation trend time series (FTTS). Then, we fuzzify the FTTS into a fuzzy-fluctuation time series (FFTS) according to the up, equal, or down range and orientation of the fluctuations. Since the relationship between historical FFTS and the fluctuation trend of the future is nonlinear, a particle swarm optimization (PSO) algorithm is employed to estimate the proportions for the lagged variables of the fuzzy AR (n) model. Finally, we use the acquired parameters to forecast future fluctuations. In order to compare the performance of the proposed model with that of the other models, we apply the proposed method to forecast the Taiwan Stock Exchange Capitalization Weighted Stock Index (TAIEX) time series datasets. The experimental results and the comparison results show that the proposed method can be successfully applied in stock market forecasting or similarkinds of time series. We also apply the proposed method to forecast Shanghai Stock Exchange Composite Index (SHSECI) and DAX30 index to verify its effectiveness and universality.
机译:大多数现有的模糊预测模型将历史训练时间序列划分为模糊时间序列,并建立模糊趋势逻辑关系组以生成预测规则。间隔的确定过程是复杂且不确定的。在本文中,我们提出了一种基于高阶模糊波动趋势和训练时间序列的模糊波动逻辑关系的新型模糊预测模型。首先,我们将每个数据与历史训练时间序列中的前一天数据进行比较,以生成新的波动趋势时间序列(FTTS)。然后,根据波动的向上,相等或向下范围和方向,将FTTS模糊化为模糊波动时间序列(FFTS)。由于历史FFT与未来波动趋势之间的关系是非线性的,因此采用粒子群优化(PSO)算法来估计模糊AR(n)模型的滞后变量的比例。最后,我们使用获取的参数来预测未来的波动。为了比较所提出的模型和其他模型的性能,我们将所提出的方法用于预测台湾证券交易所资本化加权股票指数(TAIEX)时间序列数据集。实验结果和比较结果表明,该方法可以成功地应用于股市预测或类似时间序列中。我们还将所提出的方法用于预测上海证券交易所综合指数(SHSECI)和DAX30指数,以验证其有效性和普遍性。

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