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A neuro-fuzzy based method for TAIEX forecasting

机译:基于神经模糊的Taiex预测方法

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Time series prediction can be widely applied to a variety of fields. Recently, a lot of artificial intelligence (Al) techniques have been exploited in the task of time series prediction. Compared to statistical methods, Al techniques are easier to use for real world data, and their performance can be better. In this paper, we propose a neuro-fuzzy based system for time series prediction. The neuro-fuzzy based system can generate superior performance through the relationship among different features. By partitioning the training data into clusters, fuzzy IF-THEN rules are extracted to form a fuzzy rule-base. Then, a fuzzy network is constructed accordingly and parameters are refined to increase the precision of the fuzzy rule-base by applying a hybrid learning algorithm which combines a recursive singular value decomposition-based least squares estimator and the gradient descent method. We demonstrate the effectiveness of the proposed system by applying it to do prediction for TAIEX stock indices. The experimental results conclude the superiority of the proposed system over other existing systems.
机译:时间序列预测可以广泛应用于各种领域。最近,在时间序列预测的任务中已经利用了许多人工智能(Al)技术。与统计方法相比,AL技术更容易用于现实世界数据,它们的性能可以更好。在本文中,我们提出了一种基于神经模糊的时间序列预测系统。基于神经模糊的系统可以通过不同特征之间的关系产生卓越的性能。通过将训练数据划分为群集,提取模糊IF-DEN规则以形成模糊规则库。然后,相应地构建模糊网络,并通过应用基于递归奇异值分解的最小二乘估计器和梯度下降方法来提高模糊规则基础的参数以提高模糊规则基础的精度。我们通过将其应用于Taiex股票指数进行预测来展示所提出的系统的有效性。实验结果将所提出的系统的优势达到其他现有系统。

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