4.5 Article

Markovian Quantum Neuroevolution for Machine Learning

Journal

PHYSICAL REVIEW APPLIED
Volume 16, Issue 4, Pages -

Publisher

AMER PHYSICAL SOC
DOI: 10.1103/PhysRevApplied.16.044039

Keywords

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Funding

  1. start-up fund from Tsinghua University [53330300320]
  2. National Natural Science Foundation of China [12075128]
  3. Shanghai Qi Zhi Institute

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Neuroevolution is a field that constructs artificial neural networks using evolutionary algorithms inspired by the evolution of brains in nature. A quantum neuroevolution algorithm has been introduced in this paper to autonomously find near-optimal quantum neural networks for different machine-learning tasks. The algorithm establishes a one-to-one mapping between quantum circuits and directed graphs, simplifying the task of finding appropriate gate sequences to searching suitable paths in the corresponding graph as a Markovian process.
Neuroevolution, a field that draws inspiration from the evolution of brains in nature, harnesses evolutionary algorithms to construct artificial neural networks. It bears a number of intriguing capabilities that are typically inaccessible to gradient-based approaches, including optimizing neural-network architectures, hyperparameters, and even learning the training rules. In this paper, we introduce a quantum neuroevolution algorithm that autonomously finds near-optimal quantum neural networks for different machine-learning tasks. In particular, we establish a one-to-one mapping between quantum circuits and directed graphs, and reduce the problem of finding the appropriate gate sequences to a task of searching suitable paths in the corresponding graph as a Markovian process. We benchmark the effectiveness of the introduced algorithm through concrete examples including classifications of real-life images and symmetry-protected topological states. Our results showcase the vast potential of neuroevolution algorithms in quantum architecture search, which would boost the exploration towards quantum-learning advantage with noisy intermediate-scale quantum devices.

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