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:在高頻交易中,精確的股價預測需要快速的數據處理,並且不能出現信息延遲。這種高速的股價預測通常基於需要被視為序列和時間無關信號的向量,因為高頻交易中存在時間不規則性。一種被廣泛證明和測試的方法是一種循環神經網絡,名為長短期記憶神經網絡。該類神經網絡基於單元,通過閘和狀態執行序列和死板計算,而不知道它們在單元內的排序是否最優。在本文中,我們提出了一種修訂後的、實時調整的長短期記憶單元,它選擇最佳門或狀態作為其最終輸出。我們的單元運行在一個淺層拓撲下,具有最小的回顧期,並在線上進行訓練。這種改進的單元在線上高頻交易預測任務中實現了比其他循環神經網絡更低的預測誤差,例如在兩個高流動性的美國股票和兩個不太流動的北歐股票上進行了測試。