使用机器学习技术预测股票市场价格走势

Ibtissam Medarhri, Mohamed Hosni, Najib Nouisser, F. Chakroun, Khalid Najib
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引用次数: 1

摘要

由于金融股票市场的不稳定性,准确预测股指的未来值是一项非常困难的任务。事实上,准确的预测有助于经纪人在买卖股票时做出适当的决定。为此,建立了六种机器学习(ML)技术,即:支持向量回归(SVR), k近邻(Knn),决策树(dt),随机森林,人工神经网络(mlp),深度学习技术,以预测标准普尔500指数组成部分的五家公司的未来收盘价和标准普尔500指数的收盘价。我们使用了十几年的数据和六个新生成的变量作为我们使用的模型的输入,这些模型使用两个性能指标进行评估,并使用网格搜索优化技术构建。结果表明,没有最好的机器学习技术可以用来预测给定股票价格的趋势。然而,所有构建的技术都产生了非常有希望的性能,并且属于神经网络家族的MLP和LSTM技术可以被认为是最好的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Stock Market Price Movement using Machine Learning Techniques
Accurately predicting upcoming values of stock market index is a very difficult task due to instability of financial stock markets. In fact, an accurate prediction helps brokers to make adequate decision on buying or selling stock. Toward this aim, six Machine Learning (ML) techniques namely: Support Vector Regression (SVR), K-nearest Neighbor (Knn), Decision trees (DTs), Random Forest, Artificial Neural Networks (MLPs), Deep learning technique, were built to predict the future closing price for five companies that are part of the S&P500 index and the closing price of S&P500 index. Teen years of data and six new generated variables were used as inputs for our used models, which were assessed using two performance metrics and build using the grid search optimization technique. The results show that there is no best ML technique that may adopted to predict the trends of a given stock price. However, all the constructed techniques yield a very promising performance, and that the MLP and LSTM techniques, which belong to ANN family, may be considered as best techniques.
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