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首页> 外文期刊>Applied Soft Computing >A bat-neural network multi-agent system (BNNMAS) for stock price prediction: Case study of DAX stock price
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A bat-neural network multi-agent system (BNNMAS) for stock price prediction: Case study of DAX stock price

机译:蝙蝠神经网络多智能体系统(BNNMAS)预测股价:DAX股价案例研究

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摘要

Creating an intelligent system that can accurately predict stock price in a robust way has always been a subject of great interest for many investors and financial analysts. Predicting future trends of financial markets is more remarkable these days especially after the recent global financial crisis. So traders who access to a powerful engine for extracting helpful information throw raw data can meet the success. In this paper we propose a new intelligent model in a multi-agent framework called bat-neural network multi-agent system (BNNMAS) to predict stock price. The model performs in a four layer multi-agent framework to predict eight years of DAX stock price in quarterly periods. The capability of BNNMAS is evaluated by applying both on fundamental and technical DAX stock price data and comparing the outcomes with the results of other methods such as genetic algorithm neural network (GANN) and some standard models like generalized regression neural network (GRNN), etc. The model tested for predicting DAX stock price a period of time that global financial crisis was faced to economics. The results show that BNNMAS significantly performs accurate and reliable, so it can be considered as a suitable tool for predicting stock price specially in a long term periods. (C) 2015 Elsevier B.V. All rights reserved.
机译:创建一个可以可靠地准确预测股票价格的智能系统一直是许多投资者和金融分析师关注的主题。如今,尤其是在最近的全球金融危机之后,对金融市场的未来趋势进行预测变得尤为重要。因此,使用强大的引擎来提取有用信息的交易者可以将原始数据抛出来,从而获得成功。在本文中,我们提出了一种称为蝙蝠神经网络多智能体系统(BNNMAS)的多智能体框架中的新智能模型,以预测股票价格。该模型在四层多主体框架中执行,以预测每个季度八年的DAX股票价格。通过应用基本和技术DAX股票价格数据并将结果与​​其他方法(例如遗传算法神经网络(GANN)和一些标准模型,例如广义回归神经网络(GRNN))的结果进行比较,来评估BNNMAS的能力。该模型用于预测DAX股价在一段时间内的全​​球金融危机对经济学的影响。结果表明,BNNMAS的表现准确,可靠,因此可以被认为是特别适合长期预测股价的合适工具。 (C)2015 Elsevier B.V.保留所有权利。

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