High Frequency Trading Strategy for the 30 Year Treasury Bond

Peter Decrem, Sasha Stoikov, Shuo Shen, Jiaxin Yin, Yikai Hua, Tengxiao Li, Zhengyi Fang, Yunze Huang, Colin Basco
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Abstract

We construct new features based on order book data and separate them into three groups, e.g., time-insensitive features, time-sensitive features and cointegration features. For time-insensitive features, we applied serval transformation on imbalance in different levels, and some other features based on order book data. For time-sensitive features, we constructed features with historic information. Besides, we extracted information about deleting and adding order book to construct features on it. For cointegration, we applied linear regression, online regression and Kalman filter to both the treasury data and the corresponding futures data to construct cash and futures cointegration features separately. Then, we predicted the fair-price for each quote given each single feature and combination of features. At last, we designed two smart algorithms to trade 30 Year Treasury Bond given the predicted fair-price. We found that combination features from different groups can help to reduce transaction cost by 95% compared with one tick-size. We believe that the new features we constructed can extract more information from order book, and can be very effective for trading strategies.
30年期国债高频交易策略
我们基于订单数据构建新的特征,并将其分为三组,即时间不敏感特征、时间敏感特征和协整特征。对于时间不敏感的特征,我们对不同层次的不平衡进行了变换,并基于订单数据进行了一些其他特征的变换。对于时间敏感的特征,我们使用历史信息构造特征。此外,我们提取了订单簿的删除和添加信息,构建了订单簿的特征。对于协整,我们对国库数据和相应的期货数据分别应用线性回归、在线回归和卡尔曼滤波,分别构建现金和期货的协整特征。然后,我们预测了给定每个单一特征和特征组合的每个报价的公平价格。最后,我们设计了两种基于公平价格预测的30年期国债交易智能算法。我们发现,来自不同群体的组合特征可以帮助将交易成本降低95%。我们相信我们构建的新特征可以从订单中提取更多的信息,并且可以非常有效地用于交易策略。
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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