QUANT-PHETLGJul 18, 2025

Quantum Boltzmann Machines using Parallel Annealing for Medical Image Classification

arXiv:2507.14116v21 citationsh-index: 27QCE
Originality Incremental advance
AI Analysis

This work addresses the cost barrier for applying QBMs to real-world problems like medical image analysis, but it is incremental as it builds on prior parallel annealing methods.

The paper tackles the high computational cost of training Quantum Boltzmann Machines (QBMs) by introducing an improved parallel quantum annealing technique for supervised learning, achieving a 70% speed-up and comparable results to similarly-sized CNNs on medical image classification with fewer epochs.

Exploiting the fact that samples drawn from a quantum annealer inherently follow a Boltzmann-like distribution, annealing-based Quantum Boltzmann Machines (QBMs) have gained increasing popularity in the quantum research community. While they harbor great promises for quantum speed-up, their usage currently stays a costly endeavor, as large amounts of QPU time are required to train them. This limits their applicability in the NISQ era. Following the idea of Noè et al. (2024), who tried to alleviate this cost by incorporating parallel quantum annealing into their unsupervised training of QBMs, this paper presents an improved version of parallel quantum annealing that we employ to train QBMs in a supervised setting. Saving qubits to encode the inputs, the latter setting allows us to test our approach on medical images from the MedMNIST data set (Yang et al., 2023), thereby moving closer to real-world applicability of the technology. Our experiments show that QBMs using our approach already achieve reasonable results, comparable to those of similarly-sized Convolutional Neural Networks (CNNs), with markedly smaller numbers of epochs than these classical models. Our parallel annealing technique leads to a speed-up of almost 70 % compared to regular annealing-based BM executions.

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