小波去噪- resnet CNN和LightGBM方法预测外汇变化率

Yiqi Zhao, Matloob Khushi
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引用次数: 21

摘要

外汇(Forex)是世界上最大的金融市场。外汇市场的日交易量远远高于股票和期货市场。因此,建立外汇预测模型对投资者来说意义重大。在本文中,我们提出了一种基于LightGBM模型的小波去噪- resnet模型来预测外汇价格在五个时间间隔后的变化率,以便有足够的时间执行交易。对所有价格进行小波变换去噪,通过计算技术指标形成30个时间间隔矩阵。通过将矩阵馈送到ResNet中获得图像特征。最后将技术指标和图像特征馈送到LightGBM。我们在5分钟美元兑日元上的实验表明,该模型优于基线模型,MAE: 0.240977 \乘以10^{-3}$ MSE: 0.156 \乘以10^{-6}$和RMSE: 0.395185 \乘以10^{-3}$。未来25分钟后的准确价格预测为对冲基金算法交易提供了机会之窗。该代码可从https://mkhushi.github.io/获得
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wavelet Denoised-ResNet CNN and LightGBM Method to Predict Forex Rate of Change
Foreign Exchange (Forex) is the largest financial market in the world. The daily trading volume of the Forex market is much higher than that of stock and futures markets. Therefore, it is of great significance for investors to establish a foreign exchange forecast model. In this paper, we propose a Wavelet Denoised-ResNet with LightGBM model to predict the rate of change of Forex price after five time intervals to allow enough time to execute trades. All the prices are denoised by wavelet transform, and a matrix of 30 time intervals is formed by calculating technical indicators. Image features are obtained by feeding the maxtrix into a ResNet. Finally, the technical indicators and image features are fed to LightGBM. Our experiments on 5-minutes USDJPY demonstrate that the model outperforms baseline modles with MAE: .240977\times 10^{-3}$ MSE: .156\times 10^{-6}$ and RMSE: .395185\times 10^{-3}$. An accurate price prediction after 25 minutes in future provides a window of opportunity for hedge funds algorithm trading. The code is available from https://mkhushi.github.io/
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