4.6 Article

Analyzing the barren plateau phenomenon in training quantum neural networks with the ZX-calculus

Journal

QUANTUM
Volume 5, Issue -, Pages -

Publisher

VEREIN FORDERUNG OPEN ACCESS PUBLIZIERENS QUANTENWISSENSCHAF
DOI: 10.22331/q-2021-06-04-466

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Funding

  1. NSFC [11688101]
  2. NKRDP [2018YFA0306702]

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This paper proposes a general scheme to analyze the gradient vanishing phenomenon in training quantum neural networks using the ZX-calculus. By representing integrations as ZX-diagrams and computing them with the ZX-calculus, the barren plateau phenomenon is studied on four concrete quantum neural networks with different structures. It is found that there are barren plateaus for hardware efficient ansatz and MPS-inspired ansatz, while no barren plateau exists for QCNN ansatz and tree tensor network ansatz.
In this paper, we propose a general scheme to analyze the gradient vanishing phenomenon, also known as the barren plateau phenomenon, in training quantum neural networks with the ZX-calculus. More precisely, we extend the barren plateaus theorem from unitary 2-design circuits to any parameterized quantum circuits under certain reasonable assumptions. The main technical contribution of this paper is representing certain integrations as ZX-diagrams and computing them with the ZX-calculus. The method is used to analyze four concrete quantum neural networks with different structures. It is shown that, for the hardware efficient ansatz and the MPS-inspired ansatz, there exist barren plateaus, while for the QCNN ansatz and the tree tensor network ansatz, there exists no barren plateau.

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