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Deep deterministic portfolio optimization
Author(s) -
Ayman Chaouki,
Stephen J. Hardiman,
Christian Schmidt,
Emmanuel Sérié,
Joachim de Lataillade
Publication year - 2020
Publication title -
the journal of finance and data science
Language(s) - English
Resource type - Journals
ISSN - 2405-9188
DOI - 10.1016/j.jfds.2020.06.002
Subject(s) - reinforcement learning , computer science , portfolio , trading strategy , artificial intelligence , mathematical optimization , simple (philosophy) , portfolio optimization , mathematics , economics , econometrics , financial economics , philosophy , epistemology
Can deep reinforcement learning algorithms be exploited as solvers for optimal trading strategies? The aim of this work is to test reinforcement learning algorithms on conceptually simple, but mathematically non-trivial, trading environments. The environments are chosen such that an optimal or close-to-optimal trading strategy is known. We study the deep deterministic policy gradient algorithm and show that such a reinforcement learning agent can successfully recover the essential features of the optimal trading strategies and achieve close-to-optimal rewards.

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