High-frequency trading requires fast data processing without information lags for precise stock price forecasting. This high-paced stock price forecasting is usually based on vectors that need to be treated as sequential and time-independent signals due to the time irregularities that are inherent in high-frequency trading. A well-documented and tested method that considers these time-irregularities is a type of recurrent neural network, named long short-term memory neural network. This type of neural network is formed based on cells that perform sequential and stale calculations via gates and states without knowing whether their order, within the cell, is optimal. In this paper, we propose a revised and real-time adjusted long short-term memory cell that selects the best gate or state as its final output. Our cell is running under a shallow topology, has a minimal look-back period, and is trained online. This revised cell achieves lower forecasting error compared to other recurrent neural networks for online high-frequency trading forecasting tasks such as the limit order book mid-price prediction as it has been tested on two high-liquid US and two less-liquid Nordic stocks.
翻译:高频交易需要快速处理数据,以实现精确的股价预测,无信息滞后。这种高速股价预测通常基于需要处理为序列和时间独立信号的向量,由于高频交易固有的时间不规则性。文献中一个已被广泛记录和测试的方法是一种称为长短期记忆神经网络的循环神经网络类型。此类型的神经网络基于细胞,通过门和状态执行顺序和陈旧的计算,而不知道其细胞内部的顺序是否最佳。在本文中,我们提出了一个修订的实时调整的长短期记忆细胞,它选择最佳的门或状态作为最终的输出。我们的细胞在浅拓扑结构下运行,具有最小的回溯时间,并进行在线训练。针对在线高频交易预测任务(如买卖盘中间价预测),我们的修订细胞与其他循环神经网络相比实现了更低的预测误差。我们在两个高流动性美国和两个不太流动的北欧股票上进行了测试。