High-frequency stock return prediction using state-of-the-art deep learning models

IF 0.6 Q4 BUSINESS, FINANCE
Sichong Chen
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引用次数: 0

Abstract

Determining stock price movements is a challenging problem because stock prices are often influenced by multiple factors such as economic, political, business, and human behavior. In this paper, we will attempt different modeling methods for two types of data, a total of 40 Dow Jones Industrial Index components, to verify the effectiveness of daily and high-frequency data for stock price prediction. Furthermore, we will attempt to validate the performance of LSTM model in stock price prediction, and also try to improve its performance by incorporating an attention mechanism. We assume that adding an attention layer to LSTM model would improve model performance in our data sets, especially in high-frequency data, since the data set would contain a huge amount of noise. Our results indicate that the simple LSTM performs better than the attention-based LSTM for both data types of prediction tasks with a benchmark of the number of stock prediction outcomes that outperform the number of those in other model, which is 24 out 40 stocks, which refutes our initial assumptions and does not validate whether adding attention mechanism is useful for solving the shallow layers and gradient vanishing problem and thus improving the LSTM model performance.
高频股票收益预测使用最先进的深度学习模型
确定股价走势是一个具有挑战性的问题,因为股价往往受到经济、政治、商业和人类行为等多种因素的影响。在本文中,我们将尝试对两类数据的不同建模方法,共40个道琼斯工业指数成分,以验证每日和高频数据对股价预测的有效性。此外,我们将尝试验证LSTM模型在股价预测中的性能,并尝试通过引入注意力机制来提高其性能。我们假设,在LSTM模型中添加注意力层将提高我们数据集中的模型性能,尤其是在高频数据中,因为数据集将包含大量噪声。我们的结果表明,对于两种数据类型的预测任务,简单的LSTM都比基于注意力的LSTM表现得更好,股票预测结果的数量基准优于其他模型中的数量,即40只股票中的24只,这反驳了我们最初的假设,并且没有验证添加注意力机制是否有助于解决浅层和梯度消失问题,从而提高LSTM模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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