Comparing Unsupervised Layers in Neural Networks for Financial Time Series Prediction

Asmaa Mahdi, Tillman Weyde, D. Al-Jumeily
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Abstract

In this study, we propose and compare neural network models that use unsupervised layers for the prediction of financial time series. We compare the novel FL-RBM and FL-SMIA-RMB models that integrate a Restricted Boltzmann Machine (RBM) and the self-organizing layer of the Selforganized Multi-Layer Network using the Immune Algorithm (SMIA) with the FL-SMIA network and a standard MLP. We aim to investigate the performance of unsupervised learning in comparison to purely supervised and other mixed models. The FL-RBM model combines the products of raw input features (the Functional Link, FL), with the Restricted Boltzmann Machine RBM as a self-organizing first hidden layer, while the FL-SMIA model uses the Immune Algorithm on the first layer. The FLSMIA- RBM model, combines both self-organizing layers with a back-propagation network. The results show that the FL-SMIA model outperforms the FL-RBM, the FL-SMIA-RBM and the MLP as measured by Annualized Return (AR) in one-day-ahead prediction on exchange rates time series. In terms of volatility, the FL-SMIA and MLP perform similarly.
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金融时间序列预测中神经网络无监督层的比较
在本研究中,我们提出并比较了使用无监督层预测金融时间序列的神经网络模型。我们将基于免疫算法(SMIA)的自组织多层网络的限制玻尔兹曼机(RBM)和自组织层与FL-SMIA网络和标准MLP相结合的新颖FL-RBM和FL-SMIA- rmb模型进行了比较。我们的目标是研究无监督学习与纯监督和其他混合模型的性能。FL-RBM模型将原始输入特征(Functional Link, FL)的产物与受限玻尔兹曼机(Restricted Boltzmann Machine RBM)结合起来作为自组织的第一隐藏层,而FL- smia模型在第一层使用免疫算法。FLSMIA- RBM模型结合了两个自组织层和一个反向传播网络。结果表明,FL-SMIA模型在汇率时间序列的1天前预测中优于FL-RBM、FL-SMIA- rbm和基于年化收益率(AR)的MLP。就波动性而言,FL-SMIA和MLP的表现相似。
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