Journal of Finance and Data Science (Nov 2020)

Deep deterministic portfolio optimization

  • Ayman Chaouki,
  • Stephen Hardiman,
  • Christian Schmidt,
  • Emmanuel Sérié,
  • Joachim de Lataillade

Journal volume & issue
Vol. 6
pp. 16 – 30

Abstract

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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.

Keywords