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JIMAT - Journal of Multiscale Materials Informatics - Vol. 2 Issue. 1 (2025)

Layerwise Quantum Training: A Progressive Strategy for Mitigating Barren Plateaus in Quantum Neural Networks

Harun Al Azies, Muhamad Akrom,



Abstract

Barren plateaus (BP) remain a core challenge in training quantum neural networks (QNN), where gradient vanishing hinders convergence. This paper proposes a layerwise quantum training (LQT) strategy, which trains parameterized quantum circuits (PQC) incrementally by optimizing each layer separately. Our approach avoids deep circuit initialization by gradually constructing the QNN. Experimental results demonstrate that LQT mitigates the onset of barren plateaus and enhances convergence rates compared to conventional and residual-based QNN, rendering it a scalable alternative for Noisy Intermediate-Scale Quantum (NISQ)-era quantum devices.







DOI :


Sitasi :

0

PISSN :

EISSN :

3047-5724

Date.Create Crossref:

17-Jul-2025

Date.Issue :

14-Jun-2025

Date.Publish :

14-Jun-2025

Date.PublishOnline :

14-Jun-2025



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Resource :

Open

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