QiVC-Net: Quantum-Inspired Variational Convolutional Network, with Application to Biosignal Classification
Amin Golnari, Jamileh Yousefi, Reza Moheimani, Saeid Sanei

TL;DR
QiVC-Net introduces a quantum-inspired convolutional framework that enhances biosignal classification by modeling structured uncertainty, achieving state-of-the-art results without increasing computational complexity.
Contribution
This paper presents the QiVC framework with a novel quantum-inspired weight rotation mechanism, applied in a neural network for biosignal classification, demonstrating improved robustness and accuracy.
Findings
Achieves 97.84% and 97.89% accuracy on benchmark datasets.
Introduces a parameter-free, uncertainty-aware convolutional layer.
Demonstrates robustness in noisy, variable biosignal data.
Abstract
This work introduces the quantum-inspired variational convolution (QiVC) framework, a novel learning paradigm that integrates principles of probabilistic inference, variational optimization, and quantum-inspired transformations within convolutional architectures. The central innovation of QiVC lies in its quantum-inspired rotated ensemble (QiRE) mechanism. QiRE performs differentiable low-dimensional subspace rotations of convolutional weights, analogously to quantum state evolution. This approach enables structured uncertainty modeling while preserving the intrinsic geometry of the parameter space, resulting in more expressive, stable, and uncertainty-aware representations. To demonstrate its practical potential, the concept is instantiated in a QiVC-based convolutional network (QiVC-Net) and evaluated in the context of biosignal classification, focusing on phonocardiogram (PCG)…
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Taxonomy
TopicsPhonocardiography and Auscultation Techniques · Machine Learning in Healthcare · COVID-19 diagnosis using AI
