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Financial time series forecasting with deep learning : A systematic literature review: 2005-2019

机译:深度学习的金融时间系列预测:系统文献综述:2005-2019

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Financial time series forecasting is undoubtedly the top choice of computational intelligence for finance researchers in both academia and the finance industry due to its broad implementation areas and substantial impact. Machine Learning (ML) researchers have created various models, and a vast number of studies have been published accordingly. As such, a significant number of surveys exist covering ML studies on financial time series forecasting. Lately, Deep Learning (DL) models have appeared within the field, with results that significantly outperform their traditional ML counterparts. Even though there is a growing interest in developing models for financial time series forecasting, there is a lack of review papers that solely focus on DL for finance. Hence, the motivation of this paper is to provide a comprehensive literature review of DL studies on financial time series forecasting implementation. We not only categorized the studies according to their intended forecasting implementation areas, such as index, forex, and commodity forecasting, but we also grouped them based on their DL model choices, such as Convolutional Neural Networks (CNNs), Deep Belief Networks (DBNs), and Long-Short Term Memory (LSTM). We also tried to envision the future of the field by highlighting its possible setbacks and opportunities for the benefit of interested researchers. (C) 2020 Elsevier B.V. All rights reserved.
机译:金融时序预测无疑是学术界融资研究人员的计算智能,因为其广泛的实施领域和融资行业为基础。机器学习(ML)研究人员创造了各种型号,因此已相应地发布了广泛的研究。因此,存在大量的调查,涵盖了关于金融时间序列预测的ML研究。最近,深度学习(DL)模型出现在该领域内,结果结果显着优于其传统的ML对应物。尽管对用于金融时序预测的发展模式越来越兴趣,但缺乏审查表格仅关注金融的DL。因此,本文的动机是为金融时序序列预测实施的DL研究提供全面的文献综述。我们不仅根据其预期的预测实施领域对研究进行了分类,例如指数,外汇和商品预测,但我们还根据其DL模型选择进行分组,例如卷积神经网络(CNNS),深度信仰网络(DBNS )和长期记忆(LSTM)。我们还试图通过突出可能的挫折和机会,为感兴趣的研究人员的利益而突出可能的挫折和机会来设想该领域的未来。 (c)2020 Elsevier B.V.保留所有权利。

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