利用机器学习对巴西股市进行金融时间序列分析

F. G. D. C. Ferreira, A. Gandomi, R. N. Cardoso
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引用次数: 1

摘要

最近技术发展的深刻变化使复杂的计算技术得以应用于股票市场的建模和预测价格变动。在此背景下,本文比较了不同机器学习分类器在预测未来金融资产价格走势趋势方面的表现,此外还进行了股票市场交易模拟,以评估将预测视为买卖信号的交易策略所提供的财务收益。本文考虑了5个单一分类器,3个使用决策树作为弱分类器的集成分类器和4个结合其他8个分类器的集成分类器,以及2个基准分类器。仿真使用了最佳分类器,并将其效率与买入并持有策略进行了比较。结果表明,卷积神经网络的精度超过了其他分类器,仿真表明,使用分类作为交易策略可以减少获得更大收益的可能性,同时也避免了巨大的损失,降低了投资风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Financial time-series analysis of Brazilian stock market using machine learning
The recent profound changes in technological development have allowed the application of complex computational techniques for modeling and predicting price movements in the Stock Market. In this context, this paper compares the performance of different Machine Learning classifiers in predicting the trend of future financial asset price movements, in addition to performing the stock market trading simulation to assess financial gains provided by the trading strategy that considers the predictions as buying and selling signals. The paper considers five single classifiers, three ensemble classifiers that use Decision Tree as weak classifiers and four ensemble classifiers that combine the eight other classifiers, in addition to two benchmark classifiers. The simulation uses the best classifier and compares its efficiency with the buy and hold strategy. Results show that the precision of the Convolutional Neural Network surpasses that of the other classifiers and the simulation indicates that the use of classification as a trading strategy can reduce the potential for greater gains, but also avoids large losses, reducing the risk of investment.
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