Paper ID: 2502.03086 • Published Feb 5, 2025
Implementing Large Quantum Boltzmann Machines as Generative AI Models for Dataset Balancing
Salvatore Sinno, Markus Bertl, Arati Sahoo, Bhavika Bhalgamiya, Thomas Groß, Nicholas Chancellor
TL;DR
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This study explores the implementation of large Quantum Restricted Boltzmann
Machines (QRBMs), a key advancement in Quantum Machine Learning (QML), as
generative models on D-Wave's Pegasus quantum hardware to address dataset
imbalance in Intrusion Detection Systems (IDS). By leveraging Pegasus's
enhanced connectivity and computational capabilities, a QRBM with 120 visible
and 120 hidden units was successfully embedded, surpassing the limitations of
default embedding tools. The QRBM synthesized over 1.6 million attack samples,
achieving a balanced dataset of over 4.2 million records. Comparative
evaluations with traditional balancing methods, such as SMOTE and
RandomOversampler, revealed that QRBMs produced higher-quality synthetic
samples, significantly improving detection rates, precision, recall, and F1
score across diverse classifiers. The study underscores the scalability and
efficiency of QRBMs, completing balancing tasks in milliseconds. These findings
highlight the transformative potential of QML and QRBMs as next-generation
tools in data preprocessing, offering robust solutions for complex
computational challenges in modern information systems.