Quantum-data-driven dynamical transition in quantum learning
Bingzhi Zhang, Junyu Liu, Liang Jiang, Quntao Zhuang

TL;DR
This paper uncovers a quantum-data-driven dynamical transition in quantum neural network training, revealing how data influences convergence and providing a phase diagram with seven distinct dynamics, supported by theory, simulations, and experiments.
Contribution
It introduces a comprehensive phase diagram for QNN dynamics driven by data, identifying bifurcations and convergence classes, and offers theoretical and experimental validation.
Findings
Identifies seven distinct dynamical phases in QNN training.
Reveals the role of data in determining convergence behavior.
Provides theoretical and experimental confirmation of the transition.
Abstract
Quantum neural networks, parameterized quantum circuits optimized under a specific cost function, provide a paradigm for achieving near-term quantum advantage in quantum information processing. Understanding QNN training dynamics is crucial for optimizing their performance, however, the role of quantum data in training for supervised learning such as classification and regression remains unclear. We reveal a quantum-data-driven dynamical transition where the target values and data determine the convergence of the training. Through analytical classification over the fixed points of the dynamical equation, we reveal a comprehensive `phase diagram' featuring seven distinct dynamics originating from a bifurcation with multiple codimension. Perturbative analyses identify both exponential and polynomial convergence class. We provide a non-perturbative theory to explain the transition via…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
