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An improved Stacking framework for stock index prediction by leveraging tree-based ensemble models and deep learning algorithms

机译:通过利用基于树的集合模型和深度学习算法来改进股票指数预测的改进堆栈框架

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Stock price index is an essential component of financial systems and indicates the economic performance in the national level. Even if a small improvement in its forecasting performance will be highly profitable and meaningful. This manuscript input technical features together with macroeconomic indicators into an improved Stacking framework for predicting the direction of the stock price index in respect of the price prevailing some time earlier, if necessary, a month. Random forest (RF), extremely randomized trees (ERT), extreme gradient boosting (XGBoost) and light gradient boosting machine (LightGBM), which pertain to the tree-based algorithms, and recurrent neural networks (RNN), bidirectional RNN, RNN with long short-term memory (LSTM) and gated recurrent unit (GRU) layer, which pertain to the deep learning algorithms, are stacked as base classifiers in the first layer. Cross-validation method is then implemented to iteratively generate the input for the second level classifier in order to prevent overfitting. In the second layer, logistic regression, as well as its regularized version, are employed as meta-classifiers to identify the unique learning pattern of the base classifiers. Empirical results over three major U.S. stock indices indicate that our improved Stacking method outperforms state-of-the-art ensemble learning algorithms and deep learning models, achieving a higher level of accuracy, F-score and AUC value. Besides, another contribution in our research paper is the design of a Lasso (least absolute shrinkage and selection operator) based meta-classifier that is capable of automatically weighting/selecting the optimal base learners for the forecasting task. Our findings provide an integrated Stacking framework in the financial area. (C) 2019 Elsevier B.V. All rights reserved.
机译:股票价格指数是金融系统的重要组成部分,并表明国家一级的经济表现。即使其预测性能的少量改善将是高度有利可图和有意义的。本手稿将技术特征与宏观经济指标一起进入改进的堆叠框架,以预测股价指数的方向,以便在迄今为止的价格普遍存在,如有必要,一个月。随机森林(rf),极其随机的树木(ert),极端梯度升压(xgboost)和光梯度升压机(Lightgbm),其涉及基于树的算法和经常性神经网络(RNN),双向RNN,RNN与深度学习算法有关的长短期存储器(LSTM)和门控复发单元(GRU)层被堆叠为第一层中的基本分类器。然后实现交叉验证方法以迭代地生成第二级分类器的输入,以防止过度拟合。在第二层中,Logistic回归以及其正则化版本被用作元分类器,以识别基本分类器的独特学习模式。经验结果在三个主要的美国股票指数中表明我们改进的堆叠方法优于最先进的集合学习算法和深度学习模型,实现了更高的精度,F分和AUC值。此外,我们的研究论文中的另一个贡献是基于套索(最小绝对收缩和选择运营商)的META分类器的设计,其能够自动加权/选择预测任务的最佳基础学习者。我们的调查结果提供了金融区的一体化堆叠框架。 (c)2019 Elsevier B.v.保留所有权利。

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