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Fuzzy Time Series Model Based On Probabilistic Approach And Rough Set Rule Induction For Empirical Research In Stock Markets

机译:基于概率和粗糙集规则归纳的模糊时间序列模型在股市中的实证研究

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摘要

This study proposes a hybrid fuzzy time series model with two advanced methods, cumulative probability distribution approach (CPDA) and rough set rule induction, to forecast stock markets. To improve forecasting accuracy, three refining processes of fuzzy time series are provided in the proposed model: (1) using CPDA to discretize the observations in training datasets based on the characteristics of data distribution, (2) generating rules (fuzzy logical relationships) by rough set algorithm and (3) producing forecasting results based on rule support values from rough set algorithm. To verify the forecasting performance of the proposed model in detail, two empirical stock markets (TAIEX and NYSE) are used as evaluating databases; two other methodologies, proposed by Chen and Yu, are used as comparison models, and two different evaluation methods (moving windows) are used. The proposed model shows a greatly improved performance in stock market forecasting compared to other fuzzy time series models.
机译:这项研究提出了一种混合模糊时间序列模型,该模型具有两种先进的方法,即累积概率分布法(CPDA)和粗糙集规则归纳法,可以预测股市。为了提高预测精度,该模型提供了三个模糊时间序列的细化过程:(1)使用CPDA根据数据分布的特征离散化训练数据集中的观测值;(2)通过以下方法生成规则(模糊逻辑关系):粗糙集算法;(3)根据来自粗糙集算法的规则支持值生成预测结果。为了详细验证所提出模型的预测性能,使用了两个经验股票市场(TAIEX和NYSE)作为评估数据库。 Chen和Yu提出的另外两种方法用作比较模型,并使用两种不同的评估方法(移动窗口)。与其他模糊时间序列模型相比,所提出的模型显示出股票市场预测中的性能大大提高。

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