Forecasting of future stock prices using neural networks and genetic algorithms

S. Mitilineos, Panayiotis G. Artikis
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引用次数: 2

Abstract

Neural networks are a well established and widely used class of machine learning tools for classification and clustering that have been successfully applied to time-series analysis and prediction. On the other hand, genetic algorithms have been used in the literature for a vast range of optimisation problems ranging from electromagnetic optimisation to mechanical design, industrial control and genetic engineering. In this work, we propose to use the former in predicting future values of a time-series of particular interest, i.e., the future values of stock market indices. Based on a large body of work that is present in the literature, we develop, test and present a set of neural networks for predicting future stock market index values. Furthermore, we evaluate the use of modified GAs as a stand-alone tool for prediction, but also the use of GAs as neural network training and optimising tools. We also test two benchmark time-series extrapolation techniques based on linear regression. The proposed stock market prediction tools are fine-tuned and applied to a number of stock market index time-series and numerical results are presented demonstrating their superiority compared to standard benchmark techniques.
利用神经网络和遗传算法预测未来股票价格
神经网络是一种成熟且广泛使用的机器学习工具,用于分类和聚类,已成功应用于时间序列分析和预测。另一方面,遗传算法已在文献中用于广泛的优化问题,从电磁优化到机械设计,工业控制和遗传工程。在这项工作中,我们建议使用前者来预测特定兴趣时间序列的未来值,即股票市场指数的未来值。基于文献中存在的大量工作,我们开发,测试并提出了一套用于预测未来股票市场指数值的神经网络。此外,我们评估了将改进的GAs作为独立预测工具的使用,以及将GAs作为神经网络训练和优化工具的使用。我们还测试了两种基于线性回归的基准时间序列外推技术。本文提出的股票市场预测工具经过微调并应用于多个股票市场指数时间序列,并给出了与标准基准技术相比的数值结果。
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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