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首页> 外文期刊>International Journal of Intelligent Computing and Cybernetics >A quantum-inspired evolutionary hybrid intelligent approach for stock market prediction
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A quantum-inspired evolutionary hybrid intelligent approach for stock market prediction

机译:一种基于量子启发的进化混合智能方法进行股票市场预测

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摘要

Purpose - The purpose of this paper is to present a new quantum-inspired evolutionary hybrid intelligent (QIEHI) approach, in order to overcome the random walk dilemma for stock market prediction. Design/methodology/approach - The proposed QIEHI method is inspired by the Takens' theorem and performs a quantum-inspired evolutionary search for the minimum necessary dimension (time lags) embedded in the problem for determining the characteristic phase space that generates the financial time series phenomenon. The approach presented in this paper consists of a quantum-inspired intelligent model composed of an artificial neural network (ANN) with a modified quantum-inspired evolutionary algorithm (MQIEA), which is able to evolve the complete ANN architecture and parameters (pruning process), the ANN training algorithm (used to further improve the ANN parameters supplied by the MQIEA), and the most suitable time lags, to better describe the time series phenomenon. Findings - This paper finds that, initially, the proposed QIEHI method chooses the better prediction model, then it performs a behavioral statistical test to adjust time phase distortions that appear in financial time series. Also, an experimental analysis is conducted with the proposed approach using six real-word stock market times series, and the obtained results are discussed and compared, according to a group of relevant performance metrics, to results found with multilayer perception networks and the previously introduced time-delay added evolutionary forecasting method. Originality/value - The paper usefully demonstrates how the proposed QIEHI method chooses the best prediction model for the times series representation and performs a behavioral statistical test to adjust time phase distortions that frequently appear in financial time series.
机译:目的-本文的目的是提出一种新的量子启发式进化混合智能(QIEHI)方法,以克服股票市场预测中的随机游走困境。设计/方法/方法-拟议的QIEHI方法受到Takens定理的启发,并进行了量子启发式进化搜索,以寻找嵌入问题中的最小必要维(时间滞后),以确定产生金融时间序列的特征相空间。现象。本文提出的方法包括一个由量子神经启发的智能模型,该模型由人工神经网络(ANN)和改进的量子启发进化算法(MQIEA)组成,该模型能够进化完整的ANN架构和参数(修剪过程) ,ANN训练算法(用于进一步改善MQIEA提供的ANN参数)和最合适的时滞,以更好地描述时间序列现象。发现-本文发现,首先,提出的QIEHI方法选择了更好的预测模型,然后执行行为统计测试以调整出现在金融时间序列中的时间相位失真。此外,使用提议的方法使用六个实词股票市场时间序列进行了实验分析,并且根据一组相关的性能指标,对所得结果进行了讨论和比较,并将其与多层感知网络和先前介绍的结果进行了比较时延增加进化预测方法。原创性/价值-本文有用地说明了所提出的QIEHI方法如何为时间序列表示选择最佳预测模型,并执行行为统计测试以调整在金融时间序列中经常出现的时间相位失真。

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