Efficient Dimensionality Reduction Strategies for Quantum Reinforcement Learning
Metadata
Show full item recordEditorial
Institute of Electrical and Electronics Engineers (IEEE)
Materia
Energy efficiency Quantum neural networks Quantum encoding
Date
2023-09-28Referencia bibliográfica
E. Andrés, M. P. Cuéllar and G. Navarro, "Efficient Dimensionality Reduction Strategies for Quantum Reinforcement Learning," in IEEE Access, vol. 11, pp. 104534-104553, 2023, doi: 10.1109/ACCESS.2023.3318173
Sponsorship
Project Quanergy under Grant TED2021-129360B-I00; Ecological and Digital Transition Research and Development Projects Call 2022 funded by MCIN/AEI/10.13039/501100011033 and European Union NextGenerationEU/PRTR; Research and Development Projects Call 2020, Ministry of Science and Innovation, Spain, under Project PID2020-112495RB-C21Abstract
Quantum neural networks constitute one of the most promising applications of Quantum Machine
Learning, as they leverage both the capabilities of classical neural networks and the unique advantages of
quantum mechanics. Moreover, quantum mechanics has demonstrated its ability to detect atypical patterns
in data that are challenging for classical approaches to recognize. However, despite their potential, there
are still open questions such as barren plateau phenomenon and the challenges of scalability and the curse
of dimensionality, which become particularly relevant in Reinforcement Learning (RL) when working in
environments with high-dimensional state and action spaces. This study delves into the critical realm of
representing classical data as quantum states, a topic of keen interest across the scientific community. The
aim is to construct streamlined circuits for efficient execution on quantum computers and simulators using
minimal qubits and entanglement gates to evade barren plateau phenomena and reducing computational
times. Our investigation examines and validates the efficacy of three strategies for data management and
dimensionality reduction in real-world, large-scale environments for Quantum Reinforcement Learning,
particularly in energy efficiency scenarios. The techniques encompass amplitude encoding, linear layer
preprocessing, and data reuploading, supplemented by trainable parameters. This research sheds light
on the potential of quantum machine learning in enhancing real-world environments, including energy
efficiency scenarios and showcases the capabilities of quantum neural networks in the reinforcement learning
landscape.