AI RESEARCH

Quantum Hierarchical Reinforcement Learning via Variational Quantum Circuits

arXiv CS.LG

ArXi:2605.03434v1 Announce Type: new Reinforcement learning is one of the most challenging learning paradigms where efficacy and efficiency gains are extremely valuable. Hierarchical reinforcement learning is a variant that leverages temporal abstraction to structure decision-making. While parametrized quantum computations have shown success in non-hierarchical reinforcement learning, whether these advantages adapt to hierarchical decision-making remains a critical open question. In this work, we develop a hybrid hierarchical agent based on the option-critic architecture.