Financial Markets Prediction with Deep Learning

Jia Wang, Tong Sun, Benyuan Liu, Yu Cao, Degang Wang
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引用次数: 27

Abstract

Financial markets are difficult to predict due to its complex systems dynamics. Although there have been some recent studies that use machine learning techniques for financial markets prediction, they do not offer satisfactory performance on financial returns. We propose a novel one-dimensional convolutional neural networks (CNN) model to predict financial market movement. The customized one-dimensional convolutional layers scan financial trading data through time, while different types of data, such as prices and volume, share parameters (kernels) with each other. Our model automatically extracts features instead of using traditional technical indicators and thus can avoid biases caused by selection of technical indicators and pre-defined coefficients in technical indicators. We evaluate the performance of our prediction model with strictly backtesting on historical trading data of six futures from January 2010 to October 2017. The experiment results show that our CNN model can effectively extract more generalized and informative features than traditional technical indicators, and achieves more robust and profitable financial performance than previous machine learning approaches.
基于深度学习的金融市场预测
金融市场由于其复杂的系统动态而难以预测。尽管最近有一些研究使用机器学习技术进行金融市场预测,但它们在财务回报方面的表现并不令人满意。我们提出了一种新的一维卷积神经网络(CNN)模型来预测金融市场的运动。定制的一维卷积层通过时间扫描金融交易数据,而不同类型的数据,如价格和交易量,彼此共享参数(核)。我们的模型可以自动提取特征,而不是使用传统的技术指标,从而避免了由于技术指标的选择和技术指标中预定义系数带来的偏差。我们对2010年1月至2017年10月六个期货的历史交易数据进行严格的回溯测试,以评估我们的预测模型的性能。实验结果表明,与传统的技术指标相比,我们的CNN模型可以有效地提取更广义和信息丰富的特征,并且比以前的机器学习方法获得更鲁棒和有利可图的财务绩效。
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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