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Training Saturation in Layerwise Quantum Approximate Optimisation

Quantum Physics 2021-09-22 v1 Disordered Systems and Neural Networks Machine Learning

Abstract

Quantum Approximate Optimisation (QAOA) is the most studied gate based variational quantum algorithm today. We train QAOA one layer at a time to maximize overlap with an nn qubit target state. Doing so we discovered that such training always saturates -- called \textit{training saturation} -- at some depth pp^*, meaning that past a certain depth, overlap can not be improved by adding subsequent layers. We formulate necessary conditions for saturation. Numerically, we find layerwise QAOA reaches its maximum overlap at depth p=np^*=n. The addition of coherent dephasing errors to training removes saturation, recovering robustness to layerwise training. This study sheds new light on the performance limitations and prospects of QAOA.

Keywords

Cite

@article{arxiv.2106.13814,
  title  = {Training Saturation in Layerwise Quantum Approximate Optimisation},
  author = {E. Campos and D. Rabinovich and V. Akshay and J. Biamonte},
  journal= {arXiv preprint arXiv:2106.13814},
  year   = {2021}
}

Comments

7 pages; RevTEX