LiePrune: Lie Group and Quantum Geometric Dual Representation for One-Shot Structured Pruning of Quantum Neural Networks
Published:Dec 10, 2025 09:43
•1 min read
•ArXiv
Analysis
This article introduces LiePrune, a novel method for pruning quantum neural networks. The approach leverages Lie groups and quantum geometric dual representations to achieve one-shot structured pruning. The use of these mathematical concepts suggests a sophisticated and potentially efficient approach to optimizing quantum neural network architectures. The focus on 'one-shot' pruning implies a streamlined process, which could significantly reduce computational costs. The source being ArXiv indicates this is a pre-print, so peer review is pending.
Key Takeaways
- •Introduces LiePrune, a new method for pruning quantum neural networks.
- •Employs Lie groups and quantum geometric dual representations.
- •Focuses on one-shot structured pruning for efficiency.
- •Published on ArXiv, indicating it's a pre-print.
Reference
“The article's core innovation lies in its use of Lie groups and quantum geometric dual representations for pruning.”