Developing Arbitrage Strategy in High-frequency Pairs Trading with Filterbank CNN Algorithm

Yu-Ying Chen, Wei-Lun Chen, Szu-Hao Huang
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引用次数: 14

Abstract

Pairs trading is a statistical arbitrage strategy, which selects a set of assets with similar performance and produces profits during these asset prices far away from rational equilibrium. Once this phenomenon exists, traders can earn the spread by longing the underperforming asset and shorting the outperforming asset. This paper proposed a novel intelligent high-frequency pairs trading system in Taiwan Stock Index Futures (TX) and Mini Index Futures (MTX) market based on deep learning techniques. This research utilized the improved time series visualization method to transfer historical volatilities with different time frames into 2D images which are helpful in capturing arbitrage signals. Moreover, this research improved convolutional neural networks (CNN) model by combining the financial domain knowledge and filterbank mechanism. We proposed Filterbank CNN to extract high-quality features by replacing the random-generating filters with the arbitrage knowledge filters. In summary, the accuracy is enhanced through the proposed method, and it proves that the integrated information technology and financial knowledge could create the better pairs trading system.
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用Filterbank CNN算法开发高频对交易套利策略
配对交易是一种统计套利策略,它选择一组具有相似表现的资产,并在这些资产价格远离理性均衡时产生利润。一旦这种现象存在,交易者就可以通过做多表现不佳的资产和做空表现较好的资产来赚取差价。本文提出了一种基于深度学习技术的台湾股指期货与迷你股指期货智能高频对交易系统。本研究利用改进的时间序列可视化方法,将不同时间框架的历史波动率转换为二维图像,有助于捕获套利信号。此外,本研究将金融领域知识与滤波器库机制相结合,对卷积神经网络(CNN)模型进行了改进。我们提出了Filterbank CNN,通过用套利知识过滤器代替随机生成过滤器来提取高质量的特征。综上所述,该方法提高了交易的准确性,证明了信息技术与金融知识的结合可以创建更好的配对交易系统。
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Proceedings: 2018 IEEE International Conference on Agents (ICA) Identifying safety properties guaranteed in changed environment at runtime A Cyclical Social Learning Strategy for Robust Convention Emergence Copyright Efficient Task Allocation with Communication Delay Based on Reciprocal Teams
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