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Predicting the daily return direction of the stock market using hybrid machine learning algorithms

机译:使用混合机器学习算法预测股票市场的每日回报方向

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Big data analytic techniques associated with machine learning algorithms are playing an increasingly important role in various application fields, including stock market investment. However, few studies have focused on forecasting daily stock market returns, especially when using powerful machine learning techniques, such as deep neural networks (DNNs), to perform the analyses. DNNs employ various deep learning algorithms based on the combination of network structure, activation function, and model parameters, with their performance depending on the format of the data representation. This paper presents a comprehensive big data analytics process to predict the daily return direction of the SPDR S&P 500 ETF (ticker symbol: SPY) based on 60 financial and economic features. DNNs and traditional artificial neural networks (ANNs) are then deployed over the entire preprocessed but untransformed dataset, along with two datasets transformed via principal component analysis (PCA), to predict the daily direction of future stock market index returns. While controlling for overfitting, a pattern for the classification accuracy of the DNNs is detected and demonstrated as the number of the hidden layers increases gradually from 12 to 1000. Moreover, a set of hypothesis testing procedures are implemented on the classification, and the simulation results show that the DNNs using two PCA-represented datasets give significantly higher classification accuracy than those using the entire untransformed dataset, as well as several other hybrid machine learning algorithms. In addition, the trading strategies guided by the DNN classification process based on PCA-represented data perform slightly better than the others tested, including in a comparison against two standard benchmarks.
机译:与机器学习算法相关的大数据分析技术在包括股票市场投资在内的各种应用领域中发挥着越来越重要的作用。但是,很少有研究专注于预测每日股票市场收益,尤其是在使用强大的机器学习技术(例如深度神经网络(DNN))进行分析时。 DNN基于网络结构,激活功能和模型参数的组合采用各种深度学习算法,其性能取决于数据表示的格式。本文提出了一个全面的大数据分析过程,以基于60种金融和经济特征来预测SPDR S&P 500 ETF的每日收益方向(股票代码:SPY)。然后,将DNN和传统的人工神经网络(ANN)部署到整个经过预处理但未转换的数据集,以及通过主成分分析(PCA)转换的两个数据集,以预测未来股市指数收益的每日方向。在控制过度拟合的同时,随着隐藏层的数量从12逐渐增加到1000,DNN的分类精度模式得到检测并得到证明。此外,在分类上执行了一组假设测试程序,并模拟了结果结果表明,使用两个PCA表示的数据集的DNN与使用整个未转换的数据集以及其他几种混合机器学习算法的DNN相比,具有更高的分类精度。此外,以PCA表示的数据为基础,由DNN分类过程指导的交易策略的表现略优于其他测试方法,包括与两个标准基准进行比较。

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