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Neuro-symbolic Meta Reinforcement Learning for Trading

Authors :
Harini, S I
Shroff, Gautam
Srinivasan, Ashwin
Faldu, Prayushi
Vig, Lovekesh
Publication Year :
2023

Abstract

We model short-duration (e.g. day) trading in financial markets as a sequential decision-making problem under uncertainty, with the added complication of continual concept-drift. We, therefore, employ meta reinforcement learning via the RL2 algorithm. It is also known that human traders often rely on frequently occurring symbolic patterns in price series. We employ logical program induction to discover symbolic patterns that occur frequently as well as recently, and explore whether using such features improves the performance of our meta reinforcement learning algorithm. We report experiments on real data indicating that meta-RL is better than vanilla RL and also benefits from learned symbolic features.<br />Comment: To appear in Muffin@AAAI'23

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2302.08996
Document Type :
Working Paper