Optimizing Quantum Support Vector Machines using ZX-Calculus

- 322462
Abstract
Favorite this paper
How to cite this paper?
Abstract

Quantum Support Vector Machines (QSVM) employ quantum kernels for classification tasks. This study explores circuit optimization techniques using ZX-Calculus to reduce the computational cost of QSVM implementations while preserving classification accuracy. By applying ZX-diagram rewriting techniques, we achieve an average 82% reduction in gate count and 91.3% reduction in circuit depth, with maximum reductions of 87% and 95%, respectively. Despite these simplifications, accuracy remains stable at 0.900, except for a minor drop to 0.867 in specific configurations. These results show that ZX-Calculus simplifies QSVM circuits, reducing resource overhead without affecting predictive performance.  

Share your ideas or questions with the authors!

Did you know that the greatest stimulus in scientific and cultural development is curiosity? Leave your questions or suggestions to the author!

Sign in to interact

Have a question or suggestion? Share your feedback with the authors!

Institutions
  • 1 CEFET/RJ, Petrópolis
  • 2 Centro Federal de Educação Tecnológica Celso Suckow da Fonseca (Cefet/RJ)
  • 3 Universidade Federal do Espírito Santo - UFES
Track
  • ST12 - Optimization
Keywords
Quantum Machine Learning
QSVM
ZX-Calculus
Circuit Optimization
Quantum Kernels