gmdh型神经网络预测金融时间序列:股票市场信息效率研究

L. Jakaite, M. Ciemny, Stanislav Selitskiy, V. Schetinin
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引用次数: 1

摘要

法玛提出了有效市场假说(Efficient Market Hypothesis, EMH)来分析金融市场。特别是EMH理论已经在不同条件下的实际案例中得到了证明,包括金融危机和欺诈。有效市场假说的假设是检验基于回顾性数据设计的模型的预测准确性。这样的预测模型可以以不同的方式设计,这促使我们探索机器学习(ML)方法,以构建提供高预测性能的模型而闻名。在这项研究中,我们提出了一种“深度”学习方法来构建高性能的预测模型。该方法基于数据处理组方法(GMDH), GMDH是一种深度学习范式,能够在给定数据上构建接近最优复杂性的多层神经网络模型。我们表明,开发的gmdh型神经网络在华沙证券交易所数据上优于传统ML方法建立的模型。重要的是,所设计的gmdh型神经网络的复杂性是由神经元的层数和神经元之间的连接来定义的。从预测误差方面比较了各模型的性能。我们报告了所提出方法的预测误差明显小于传统的自回归和“浅”神经网络模型。这最终使我们得出结论,交易者将受益于所提出的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GMDH-type Neural Networks for Predicting Financial Time Series: A Study of Informational Efficiency of Stock Markets
A theory of Efficient Market Hypothesis (EMH) has been introduced by Fama to analyse financial markets. In particular the EMH theory has been proven in real cases under different conditions, including financial crises and frauds. The EMH assumes to examine the prediction accuracy of models designed on retrospective data. Such prediction models could be designed in different ways that motivated us to explore Machine Learning (ML) methods known for building models providing a high prediction performance. In this study we propose a ``deep'' learning method for building high-performance prediction models. The proposed method is based on the Group Method of Data Handling (GMDH) that is the deep learning paradigm capable of building multilayer neural-network models of a near-optimal complexity on given data. We show that the developed GMDH-type neural network has outperformed the models built by the conventional ML methods on the Warsaw Stock Exchange data. It is important that the complexity of the designed GMDH-type neural-networks is defined by the number of layers and connections between neurons. The performances of models were compared in terms of the prediction errors. We report a significantly smaller prediction error of the proposed method than that of the conventional autoregressive and "shallow’’ neural-network models. This finally allows us to conclude that traders will be advantaged by the proposed method.
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