Quantum Active Learning
Yongcheng Ding, Yue Ban, Mikel Sanz, Jos\'e D. Mart\'in-Guerrero, Xi Chen

TL;DR
This paper introduces Quantum Active Learning (QAL), a method that reduces labeling costs in quantum machine learning by selecting the most informative samples using uncertainty estimation, leveraging symmetry and equivariant neural networks.
Contribution
The paper proposes a novel QAL framework that employs symmetry-aware quantum neural networks to improve few-shot learning in quantum machine learning models.
Findings
QAL achieves comparable performance to fully labeled datasets with less than 7% labeled samples.
QAL's effectiveness varies depending on sampling strategies and problem settings.
Random sampling can sometimes outperform QAL in certain scenarios.
Abstract
Quantum machine learning, as an extension of classical machine learning that harnesses quantum mechanics, facilitates effiient learning from data encoded in quantum states. Training a quantum neural network typically demands a substantial labeled training set for supervised learning. Human annotators, often experts, provide labels for samples through additional experiments, adding to the training cost. To mitigate this expense, there is a quest for methods that maintain model performance over fully labeled datasets while requiring fewer labeled samples in practice, thereby extending few-shot learning to the quantum realm. Quantum active learning estimates the uncertainty of quantum data to select the most informative samples from a pool for labeling. Consequently, a QML model is supposed to accumulate maximal knowledge as the training set comprises labeled samples selected via sampling…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture
