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Training Multilayer Perceptron with Genetic Algorithms and Particle Swarm Optimization for Modeling Stock Price Index Prediction

机译:培训多层情感与遗传算法和粒子群优化用于建模股价指数预测

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摘要

Predicting stock market (SM) trends is an issue of great interest among researchers, investors and traders since the successful prediction of SMs’ direction may promise various benefits. Because of the fairly nonlinear nature of the historical data, accurate estimation of the SM direction is a rather challenging issue. The aim of this study is to present a novel machine learning (ML) model to forecast the movement of the Borsa Istanbul (BIST) 100 index. Modeling was performed by multilayer perceptron–genetic algorithms (MLP–GA) and multilayer perceptron–particle swarm optimization (MLP–PSO) in two scenarios considering Tanh (x) and the default Gaussian function as the output function. The historical financial time series data utilized in this research is from 1996 to 2020, consisting of nine technical indicators. Results are assessed using Root Mean Square Error (RMSE), Mean Absolute Percentage Error (MAPE) and correlation coefficient values to compare the accuracy and performance of the developed models. Based on the results, the involvement of the Tanh (x) as the output function, improved the accuracy of models compared with the default Gaussian function, significantly. MLP–PSO with population size 125, followed by MLP–GA with population size 50, provided higher accuracy for testing, reporting RMSE of 0.732583 and 0.733063, MAPE of 28.16%, 29.09% and correlation coefficient of 0.694 and 0.695, respectively. According to the results, using the hybrid ML method could successfully improve the prediction accuracy.
机译:预测股市(SM)趋势是研究人员,投资者和贸易商之间令人兴趣的问题,因为自从对短信的方向的成功预测可能承诺各种利益。由于历史数据的相当非线性性质,准确估计SM方向是一个相当具有挑战性的问题。本研究的目的是提出一种新颖的机器学习(ML)模型,以预测鲍尔斯伊斯坦布尔(BIST)100指数的运动。在考虑Tanh(x)的两种情况下,通过多层的感知 - 遗传算法(MLP-GA)和多层感知算法和多层感知粒子群群群(MLP-PSO)进行建模,以及作为输出函数的默认高斯函数。本研究中使用的历史金融时间序列数据是1996年至2020年,由九个技术指标组成。结果是使用根均方误差(RMSE),平均绝对百分比误差(MAPE)和相关系数值进行评估,以比较开发模型的准确性和性能。基于结果,Tanh(x)的参与为输出函数,显着提高了模型的准确性,与默认高斯函数相比,显着。 MLP-PSO具有群体尺寸125,其次是MLP-GA,具有群体大小50,提供更高的测试精度,报告0.732583和0.733063,Mape分别为0.694和0.695的28.16%,29.09%和相关系数。根据结果​​,使用混合m1方法可以成功提高预测精度。

著录项

  • 期刊名称 Entropy
  • 作者单位
  • 年(卷),期 2020(22),11
  • 年度 2020
  • 页码 1239
  • 总页数 19
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:股票市场;机器学习;多层的感知;财务数据;人工智能;人工神经网络;在线交易;大数据;社会科学数据;进化算法;优化;

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