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Wrapper ANFIS-ICA method to do stock market timing and feature selection on the basis of Japanese Candlestick

机译:包装器ANFIS-ICA方法在日本烛台的基础上进行股市定时和特征选择

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摘要

Predicting stock prices is an important objective in the financial world. This paper presents a novel forecasting model for stock markets on the basis of the wrapper ANFIS (Adaptive Neural Fuzzy Inference System)-ICA (Imperialist Competitive Algorithm) and technical analysis of Japanese Candlestick. Two approaches of Raw-based and Signal-based are devised to extract the model's input variables with 15 and 24 features, respectively. The correct predictions percentages for periods of 1-6 days with the total number of buy and sell signals are considered as output variables. In proposed model, the ANFIS prediction results are used as a cost function of wrapper model and ICA is used to select the most appropriate features. This novel combination of feature selection not only takes advantage of ICA optimization swiftness, but also the ANFIS prediction accuracy. The emitted buy and sell signals of the model revealed that Signal databases approach gets better results with 87% prediction accuracy and the wrapper features selection obtains 12% improvement in predictive performance regarding to the base study. In addition, since the wrapper-based feature selection models are considerably more time-consuming, our presented wrapper ANFIS-ICA algorithm's results have superiority in time decreasing as well as increasing prediction accuracy as compared to other algorithms such as wrapper Genetic algorithm (GA). (C) 2015 Elsevier Ltd. All rights reserved.
机译:预测股票价格是金融界的重要目标。本文基于包装器ANFIS(自适应神经模糊推理系统)-ICA(帝国主义竞争算法)和日本烛台的技术分析,提出了一种新颖的股票市场预测模型。设计了两种基于Raw和基于Signal的方法来分别提取具有15个和24个特征的模型输入变量。带有购买和出售信号总数的1-6天期间的正确预测百分比被视为输出变量。在提出的模型中,将ANFIS预测结果用作包装模型的成本函数,并使用ICA选择最合适的特征。特征选择的这种新颖组合不仅利用了ICA优化的迅速性,而且还利用了ANFIS预测精度。发出的模型买卖信号显示,信号数据库方法可获得更好的结果,预测准确性为87%,而包装功能选择相对于基础研究而言,可提高12%的预测性能。另外,由于基于包装器的特征选择模型要花费大量时间,因此与其他算法(例如包装器遗传算法(GA))相比,我们提出的包装器ANFIS-ICA算法的结果在减少时间和提高预测精度方面具有优势。 。 (C)2015 Elsevier Ltd.保留所有权利。

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