Brain-Inspired Agents for Quantum Reinforcement Learning
Metadatos
Mostrar el registro completo del ítemEditorial
MDPI
Materia
Quantum reinforcement learning Quantum neural networks Quantum spiking neural network
Fecha
2024-04-19Referencia bibliográfica
Andrés, E.; Cuéllar, M.P.; Navarro, G. Brain-Inspired Agents for Quantum Reinforcement Learning. Mathematics 2024, 12, 1230. https://doi.org/10.3390/math12081230
Patrocinador
Project QUANERGY (Ref. TED2021-129360BI00), Ecological and Digital Transition R&D projects call 2022 by MCIN/AEI/10.13039/501100011033 and European Union NextGeneration EU/PRTRResumen
In recent years, advancements in brain science and neuroscience have significantly influenced
the field of computer science, particularly in the domain of reinforcement learning (RL).
Drawing insights from neurobiology and neuropsychology, researchers have leveraged these findings
to develop novel mechanisms for understanding intelligent decision-making processes in the brain.
Concurrently, the emergence of quantum computing has opened new frontiers in artificial intelligence,
leading to the development of quantum machine learning (QML). This study introduces a novel
model that integrates quantum spiking neural networks (QSNN) and quantum long short-term
memory (QLSTM) architectures, inspired by the complex workings of the human brain. Specifically
designed for reinforcement learning tasks in energy-efficient environments, our approach progresses
through two distinct stages mirroring sensory and memory systems. In the initial stage, analogous
to the brain’s hypothalamus, low-level information is extracted to emulate sensory data processing
patterns. Subsequently, resembling the hippocampus, this information is processed at a higher level,
capturing and memorizing correlated patterns. We conducted a comparative analysis of our model
against existing quantum models, including quantum neural networks (QNNs), QLSTM, QSNN
and their classical counterparts, elucidating its unique contributions. Through empirical results, we
demonstrated the effectiveness of utilizing quantum models inspired by the brain, which outperform
the classical approaches and other quantum models in optimizing energy use case. Specifically, in
terms of average, best and worst total reward, test reward, robustness, and learning curve.





