基于最优因果路径的统计套利:标普500高频数据研究

Statistical arbitrage with optimal causal paths on high-frequency data of the S&P 500

Quantitative Finance · 2018
被引 45 · 同刊同年前 8%
ABS 3

中文导读

提出最优因果路径算法,用于标普500成分股分钟级数据,识别股票配对并生成交易信号,年化收益54.98%,夏普比率3.57,优于传统方法。

Abstract

This paper develops the optimal causal path algorithm and applies it within a fully-fledged statistical arbitrage framework to minute-by-minute data of the S&P 500 constituents from 1998 to 2015. Specifically, the algorithm efficiently determines the optimal non-linear mapping and the corresponding lead–lag structure between two time series. Afterwards, this study explores the use of optimal causal paths as a means for identifying promising stock pairs and for generating buy and sell signals. For this purpose, the established trading strategy exploits information about the leading stock to predict future returns of the following stock. The value-add of the proposed framework is assessed by benchmarking it with variants relying on classic similarity measures and a buy-and-hold investment in the S&P 500 index. In the empirical back-testing study, the trading algorithm generates statistically and economically significant returns of 54.98% p.a. and an annualized Sharpe ratio of 3.57 after transaction costs. Returns are well superior to the benchmark approaches and do not load on any common sources of systematic risk. The strategy outperforms in the context of cryptocurrencies even in recent times due to the fact that stock returns contain substantial information about the future bitcoin returns.

统计套利高频交易投资策略金融计量股票配对交易