The stock market prediction has been a traditional yet complex problem researched within diverse research areas and application domains due to its non-linear, highly volatile and complex nature. Existing surveys on stock market prediction often focus on traditional machine learning methods instead of deep learning methods. Deep learning has dominated many domains, gained much success and popularity in recent years in stock market prediction. This motivates us to provide a structured and comprehensive overview of the research on stock market prediction focusing on deep learning techniques. We present four elaborated subtasks of stock market prediction and propose a novel taxonomy to summarize the state-of-the-art models based on deep neural networks from 2011 to 2022. In addition, we also provide detailed statistics on the datasets and evaluation metrics commonly used in the stock market. Finally, we highlight some open issues and point out several future directions by sharing some new perspectives on stock market prediction.
翻译:股票市场预测是一个传统而复杂的问题,由于其非线性、高度波动和复杂性质,在不同的研究领域和应用领域进行了研究。关于股票市场预测的现有调查往往侧重于传统机器学习方法,而不是深层学习方法。深层学习在很多领域占据主导地位,近年来在股票市场预测中取得了很大成功和受欢迎。这促使我们以深层学习技术为重点,对股票市场预测研究进行有条理和全面的概述。我们提出了四项详细阐述的股票市场预测次级任务,并提出了一个新的分类方法,以总结2011年至2022年基于深层神经网络的最新模型。此外,我们还提供关于股票市场常用数据集和评价指标的详细统计数据。最后,我们通过分享关于股票市场预测的一些新观点,突出强调了一些未决问题,并指出了今后的若干方向。