Back to Search Start Over

Data Cross-Segmentation for Improved Generalization in Reinforcement Learning Based Algorithmic Trading

Authors :
Duvvur, Vikram
Mehta, Aashay
Sun, Edward
Wu, Bo
Chan, Ken Yew
Schneider, Jeff
Publication Year :
2023

Abstract

The use of machine learning in algorithmic trading systems is increasingly common. In a typical set-up, supervised learning is used to predict the future prices of assets, and those predictions drive a simple trading and execution strategy. This is quite effective when the predictions have sufficient signal, markets are liquid, and transaction costs are low. However, those conditions often do not hold in thinly traded financial markets and markets for differentiated assets such as real estate or vehicles. In these markets, the trading strategy must consider the long-term effects of taking positions that are relatively more difficult to change. In this work, we propose a Reinforcement Learning (RL) algorithm that trades based on signals from a learned predictive model and addresses these challenges. We test our algorithm on 20+ years of equity data from Bursa Malaysia.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2307.09377
Document Type :
Working Paper