Ensembling and Dynamic Asset Selection for Risk-Controlled Statistical Arbitrage | IEEE Journals & Magazine | IEEE Xplore

Ensembling and Dynamic Asset Selection for Risk-Controlled Statistical Arbitrage


This article proposes a statistical arbitrage trading strategy with two key elements: a heterogeneous ensemble of regression algorithms for asset return prediction and a ...

Abstract:

In recent years, machine learning algorithms have been successfully employed to leverage the potential of identifying hidden patterns of financial market behavior and, co...Show More

Abstract:

In recent years, machine learning algorithms have been successfully employed to leverage the potential of identifying hidden patterns of financial market behavior and, consequently, have become a land of opportunities for financial applications such as algorithmic trading. In this paper, we propose a statistical arbitrage trading strategy with two key elements: an ensemble of regression algorithms for asset return prediction, followed by a dynamic asset selection. More specifically, we construct an extremely heterogeneous ensemble ensuring model diversity by using state-of-the-art machine learning algorithms, data diversity by using a feature selection process, and method diversity by using individual models for each asset, as well models that learn cross-sectional across multiple assets. Then, their predictive results are fed into a quality assurance mechanism that prunes assets with poor forecasting performance in the previous periods. We evaluate the approach on historical data of component stocks of the S&P500 index. By performing an in-depth risk-return analysis, we show that this setup outperforms highly competitive trading strategies considered as baselines. Experimentally, we show that the dynamic asset selection enhances overall trading performance both in terms of return and risk. Moreover, the proposed approach proved to yield superior results during both financial turmoil and massive market growth periods, and it showed to have general application for any risk-balanced trading strategy aiming to exploit different asset classes.
This article proposes a statistical arbitrage trading strategy with two key elements: a heterogeneous ensemble of regression algorithms for asset return prediction and a ...
Published in: IEEE Access ( Volume: 9)
Page(s): 29942 - 29959
Date of Publication: 12 February 2021
Electronic ISSN: 2169-3536

Funding Agency:


References

References is not available for this document.