用于股票价格预测的在线混合神经网络——以中国市场高频股票交易为例

IF 1.1 Q3 ECONOMICS Econometrics Pub Date : 2023-05-18 DOI:10.3390/econometrics11020013
Chengyu Li, Luyi W. Shen, G. Qian
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引用次数: 2

摘要

时间序列数据表现出低信噪比、非平稳性和非线性,在高频股票交易中很常见,其目标是通过利用价格的微小差异来增加获利的可能性,并快速、大量地进行交易。为此,必须采用一种能够从这些时间序列数据中快速准确预测的交易方法。本文通过整合长短期记忆(LSTM)、门控循环单元(GRU)和变压器三种神经网络深度学习模型,开发了高频交易(HFT)的在线时间序列预测方法;我们将新方法缩写为在线LGT或O-LGT。我们的方法的关键创新在于其高效的存储管理,这使得超快的计算成为可能。具体来说,在计算对近期的预测时,我们只使用以前的交易数据(而不是以前的交易数据本身)和当前的交易数据计算出来的输出。因此,计算只涉及将当前数据更新到进程中。我们通过分析来自中国市场的高频限价订单(LOB)数据来评估O-LGT的性能。结果表明,在大多数情况下,我们的模型与传统的高频交易快速监督学习模型相比,达到了相似的速度和更高的精度。然而,在精度略有牺牲的情况下,O-LGT比中国市场上现有的高精度LOB数据神经网络模型快大约12到64倍。
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Online Hybrid Neural Network for Stock Price Prediction: A Case Study of High-Frequency Stock Trading in the Chinese Market
Time-series data, which exhibit a low signal-to-noise ratio, non-stationarity, and non-linearity, are commonly seen in high-frequency stock trading, where the objective is to increase the likelihood of profit by taking advantage of tiny discrepancies in prices and trading on them quickly and in huge quantities. For this purpose, it is essential to apply a trading method that is capable of fast and accurate prediction from such time-series data. In this paper, we developed an online time series forecasting method for high-frequency trading (HFT) by integrating three neural network deep learning models, i.e., long short-term memory (LSTM), gated recurrent unit (GRU), and transformer; and we abbreviate the new method to online LGT or O-LGT. The key innovation underlying our method is its efficient storage management, which enables super-fast computing. Specifically, when computing the forecast for the immediate future, we only use the output calculated from the previous trading data (rather than the previous trading data themselves) together with the current trading data. Thus, the computing only involves updating the current data into the process. We evaluated the performance of O-LGT by analyzing high-frequency limit order book (LOB) data from the Chinese market. It shows that, in most cases, our model achieves a similar speed with a much higher accuracy than the conventional fast supervised learning models for HFT. However, with a slight sacrifice in accuracy, O-LGT is approximately 12 to 64 times faster than the existing high-accuracy neural network models for LOB data from the Chinese market.
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来源期刊
Econometrics
Econometrics Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
2.40
自引率
20.00%
发文量
30
审稿时长
11 weeks
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