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Publication

DisQu: investigating the impact of disorder in quantum generative models

Yannick Werner; Jasmin Frkatovic; Vitor Fortes Rey; Matthias Tschöpe; Sungho Suh; Paul Lukowicz; Nikolaos Palaiodimopoulos; Maximilian Kiefer-Emmanouilidis
In: 2025 International Joint Conference on Neural Networks (IJCNN). International Joint Conference on Neural Networks (IJCNN), Pages 1-8, IEEE, 2025.

Abstract

Disordered Quantum many-body Systems (DQS) and Quantum Neural Networks (QNN) have many structural features in common. However, a DQS is essentially an initialized QNN with random weights, often leading to non-random outcomes. In this work, we emphasize the possibilities of random processes being a deceptive quantum-generating model effectively hidden in a QNN. When we choose weights in a QNN randomly the unitarity property of quantum gates is unchanged. As we show, this can lead to memory effects with multiple consequences on the learnability and trainability of QNN one would not expect from a classical neural network with random weights. This phenomenon may lead to a fundamental misunderstanding of the capabilities of common quantum generative models, where the generation of new samples is essentially averaging over random outputs. While we suggest that DQS can be effectively used for tasks like image augmentation, we draw the attention that overly simple datasets are often used to show the generative capabilities of quantum models, potentially leading to overestimation of their effectiveness.