Intelligent financial time series forecasting: A complex neuro-fuzzy approach with multi-swarm intelligence

Chunshien Li, Tai-Wei Chiang
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引用次数: 157

Abstract

Financial investors often face an urgent need to predict the future. Accurate forecasting may allow investors to be aware of changes in financial markets in the future, so that they can reduce the risk of investment. In this paper, we present an intelligent computing paradigm, called the Complex Neuro-Fuzzy System (CNFS), applied to the problem of financial time series forecasting. The CNFS is an adaptive system, which is designed using Complex Fuzzy Sets (CFSs) whose membership functions are complex-valued and characterized within the unit disc of the complex plane. The application of CFSs to the CNFS can augment the adaptive capability of nonlinear functional mapping, which is valuable for nonlinear forecasting. Moreover, to optimize the CNFS for accurate forecasting, we devised a new hybrid learning method, called the HMSPSO-RLSE, which integrates in a hybrid way the so-called Hierarchical Multi-Swarm PSO (HMSPSO) and the wellknown Recursive Least Squares Estimator (RLSE). Three examples of financial time series are used to test the proposed approach, whose experimental results outperform those of other methods.
金融时间序列智能预测:一种多群智能的复杂神经模糊方法
金融投资者往往面临着预测未来的迫切需要。准确的预测可以让投资者意识到未来金融市场的变化,从而降低投资风险。在本文中,我们提出了一种智能计算范式,称为复杂神经模糊系统(CNFS),应用于金融时间序列预测问题。CNFS是一种利用复模糊集(CFSs)设计的自适应系统,其隶属函数是复值的,并在复平面的单位圆盘内表征。将CFSs应用于CNFS可以增强非线性泛函映射的自适应能力,对非线性预测具有重要意义。此外,为了优化CNFS的准确预测,我们设计了一种新的混合学习方法,称为HMSPSO-RLSE,它以混合的方式集成了所谓的分层多群粒子群算法(HMSPSO)和著名的递归最小二乘估计器(RLSE)。用三个金融时间序列实例对该方法进行了验证,实验结果优于其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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