English

Quantum Circuit Training with Growth-Based Architectures

Quantum Physics 2024-11-26 v1 Machine Learning

Abstract

This study introduces growth-based training strategies that incrementally increase parameterized quantum circuit (PQC) depth during training, mitigating overfitting and managing model complexity dynamically. We develop three distinct methods: Block Growth, Sequential Feature Map Growth, and Interleave Feature Map Growth, which add reuploader blocks to PQCs adaptively, expanding the accessible frequency spectrum of the model in response to training needs. This approach enables PQCs to achieve more stable convergence and generalization, even in noisy settings. We evaluate our methods on regression tasks and the 2D Laplace equation, demonstrating that dynamic growth methods outperform traditional, fixed-depth approaches, achieving lower final losses and reduced variance between runs. These findings underscore the potential of growth-based PQCs for quantum scientific machine learning (QSciML) applications, where balancing expressivity and stability is essential.

Keywords

Cite

@article{arxiv.2411.16560,
  title  = {Quantum Circuit Training with Growth-Based Architectures},
  author = {Callum Duffy and Smit Chaudhary and Gergana V. Velikova},
  journal= {arXiv preprint arXiv:2411.16560},
  year   = {2024}
}

Comments

14 pages, 8 figures

R2 v1 2026-06-28T20:11:44.064Z