Quantum Memory in Support Vector Machines

An Empirical Study

Autores

  • Caio N. Silva CEFET/RJ
  • Demerson N. Gonçalves CEFET/RJ
  • Andrias M. M. Cordeiro CEFET/RJ
  • João T. Dias CEFET/RJ
  • Tharso D. Fernandes UFES

Resumo

Quantum machine learning (QML) uses quantum computing to improve the efficiency of learning. A key approach is quantum memory, which enables the coherent storage and reuse of quantum states during computation. Theoretically, quantum memory can exponentially reduce data requirements by preserving correlations between training instances [1, 3], but its empirical validation remains limited. This work examines its impact on a quantum support vector machine (QSVM), comparing its performance with classical and quantum baselines. [...]

Downloads

Não há dados estatísticos.

Referências

S. Chen, J. Cotler, H.-Y. Huang, and J. Li. “Exponential Separations Between Learning With and Without Quantum Memory”. In: Proc. of the 62nd IEEE Annual Symp. on Foundations of Computer Science (FOCS). IEEE, 2021. doi: 10.1109/FOCS52979.2021.00063.

V. Havlíček, A. D. Córcoles, K. Temme, A. W. Harrow, A. Kandala, J. M. Chow, and J. M. Gambetta. “Supervised learning with quantum-enhanced feature spaces”. In: Nature 567 (2019), pp. 209–212. doi: 10.1038/s41586-019-0980-2.

H.-Y. Huang, M. Broughton, J. Cotler, S. Chen, J. Li, M. Mohseni, H. Neven, R. Babbush, R. Kueng, J. Preskill, and J. R. McClean. “Quantum advantage in learning from experiments”. In: Science 376.6598 (2022), pp. 1182–1186. doi: 10.1126/science.abn7293.

S. McArdle, S. Endo, A. Aspuru-Guzik, S. C. Benjamin, and X. Yuan. “Quantum computational chemistry”. In: Reviews of Modern Physics 92.1 (2020), p. 015003. doi: 10.1103/RevModPhys.92.015003.

J. Preskill. “Quantum computing in the NISQ era and beyond”. In: Quantum 2 (2018), p. 79. doi: 10.22331/q-2018-08-06-79.

Downloads

Publicado

2026-02-13

Edição

Seção

Resumos