Scientific Reports (Sep 2023)

A quantum-inspired probabilistic prime factorization based on virtually connected Boltzmann machine and probabilistic annealing

  • Hyundo Jung,
  • Hyunjin Kim,
  • Woojin Lee,
  • Jinwoo Jeon,
  • Yohan Choi,
  • Taehyeong Park,
  • Chulwoo Kim

DOI
https://doi.org/10.1038/s41598-023-43054-5
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 13

Abstract

Read online

Abstract Probabilistic computing has been introduced to operate functional networks using a probabilistic bit (p-bit), broadening the computational abilities in non-deterministic polynomial searching operations. However, previous developments have focused on emulating the operation of quantum computers similarly, implementing every p-bit with large weight-sum matrix multiplication blocks and requiring tens of times more p-bits than semiprime bits. In addition, operations based on a conventional simulated annealing scheme required a large number of sampling operations, which deteriorated the performance of the Ising machines. Here we introduce a prime factorization machine with a virtually connected Boltzmann machine and probabilistic annealing method, which are designed to reduce the hardware complexity and number of sampling operations. From 10-bit to 64-bit prime factorizations were performed, and the machine offers up to 1.2 × 108 times improvement in the number of sampling operations compared with previous factorization machines, with a 22-fold smaller hardware resource.