Improving reinforcement learning algorithms: towards optimal learning rate policies

11/06/2019
by   Othmane Mounjid, et al.
0

This paper investigates to what extent we can improve reinforcement learning algorithms. Our study is split in three parts. First, our analysis shows that the classical asymptotic convergence rate O(1/√(N)) is pessimistic and can be replaced by O((log(N)/N)^β) with 1/2≤β≤ 1 and N the number of iterations. Second, we propose a dynamic optimal policy for the choice of the learning rate (γ_k)_k≥ 0 used in stochastic algorithms. We decompose our policy into two interacting levels: the inner and the outer level. In the inner level, we present the PASS algorithm (for "PAst Sign Search") which, based on a predefined sequence (γ^o_k)_k≥ 0, constructs a new sequence (γ^i_k)_k≥ 0 whose error decreases faster. In the outer level, we propose an optimal methodology for the selection of the predefined sequence (γ^o_k)_k≥ 0. Third, we show empirically that our selection methodology of the learning rate outperforms significantly standard algorithms used in reinforcement learning (RL) in the three following applications: the estimation of a drift, the optimal placement of limit orders and the optimal execution of large number of shares.

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