Breaking Through Barren Plateaus: Reinforcement Learning Initializations for Deep Variational Quantum Circuits
Yifeng Peng, Xinyi Li, Zhemin Zhang, Samuel Yen-Chi Chen, Zhiding Liang, Ying Wang

TL;DR
This paper introduces a reinforcement learning-based initialization method for variational quantum algorithms to mitigate barren plateau issues, significantly improving convergence speed and solution quality in quantum machine learning tasks.
Contribution
The paper proposes a novel RL-based initialization strategy for VQAs, enhancing training efficiency and robustness against barren plateaus compared to traditional methods.
Findings
RL initialization improves convergence speed in VQAs
Method enhances solution quality under noise conditions
Multiple RL algorithms achieve comparable performance
Abstract
Variational Quantum Algorithms (VQAs) have gained prominence as a viable framework for exploiting near-term quantum devices in applications ranging from optimization and chemistry simulation to machine learning. However, the effectiveness of VQAs is often constrained by the so-called barren plateau problem, wherein gradients diminish exponentially as system size or circuit depth increases, thereby hindering training. In this work, we propose a reinforcement learning (RL)-based initialization strategy to alleviate the barren plateau issue by reshaping the initial parameter landscape to avoid regions prone to vanishing gradients. In particular, we explore several RL algorithms (Deterministic Policy Gradient, Soft Actor-Critic, and Proximal Policy Optimization, etc.) to generate the circuit parameters (treated as actions) that minimize the VQAs cost function before standard gradient-based…
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