Back to Search Start Over

Reinforcement Learning with Algorithms from Probabilistic Structure Estimation

Authors :
Epperlein, Jonathan P.
Overko, Roman
Zhuk, Sergiy
King, Christopher
Bouneffouf, Djallel
Cullen, Andrew
Shorten, Robert
Publication Year :
2021

Abstract

Reinforcement learning (RL) algorithms aim to learn optimal decisions in unknown environments through experience of taking actions and observing the rewards gained. In some cases, the environment is not influenced by the actions of the RL agent, in which case the problem can be modeled as a contextual multi-armed bandit and lightweight myopic algorithms can be employed. On the other hand, when the RL agent's actions affect the environment, the problem must be modeled as a Markov decision process and more complex RL algorithms are required which take the future effects of actions into account. Moreover, in practice, it is often unknown from the outset whether or not the agent's actions will impact the environment and it is therefore not possible to determine which RL algorithm is most fitting. In this work, we propose to avoid this difficult decision entirely and incorporate a choice mechanism into our RL framework. Rather than assuming a specific problem structure, we use a probabilistic structure estimation procedure based on a likelihood-ratio (LR) test to make a more informed selection of learning algorithm. We derive a sufficient condition under which myopic policies are optimal, present an LR test for this condition, and derive a bound on the regret of our framework. We provide examples of real-world scenarios where our framework is needed and provide extensive simulations to validate our approach.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2103.08241
Document Type :
Working Paper