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MicroCloud Hologram Inc. Releases Next-Generation Quantum Convolutional Neural Network Multi-Class Classification Technology, Driving Quantum Machine Learning Towards Practicalization
Prnewswireยท2025-11-14 16:30

Core Viewpoint - MicroCloud Hologram Inc. has launched a multi-class classification method based on Quantum Convolutional Neural Network (QCNN) using hybrid quantum-classical learning, showcasing the potential of quantum computing in artificial intelligence and addressing limitations of traditional computing architectures [1][12]. Technology Development - The new technology addresses bottlenecks in classical neural networks, particularly in computing power, energy consumption, and model complexity, as data scales and classification categories expand [2][10]. - The core of the technology is a multi-class classification model that integrates quantum convolutional neural networks with a hybrid quantum-classical optimization framework, utilizing the TensorFlow Quantum platform [3][9]. Model Design - HOLO introduced a quantum perceptron model that leverages quantum state evolution and measurement, enhancing feature extraction through quantum gates, which allows for high-dimensional feature mappings [4][9]. - The model optimizes circuit complexity and improves expressive power by reducing redundant gate operations and enhancing entanglement structures [4][9]. Training Mechanism - The hybrid quantum-classical learning mechanism significantly improves training efficiency and model convergence speed by combining quantum state encoding with classical optimization algorithms [5][12]. - The training process involves quantum circuits encoding input samples, producing measurement results that are normalized and used to update quantum circuit parameters iteratively [5][8]. Experimental Results - Experimental results indicate that HOLO's quantum convolutional neural network achieves accuracy comparable to classical convolutional networks in four-class classification tasks, validating the feasibility of quantum neural networks for practical applications [6][12]. Industry Context - The technology is positioned to address challenges in various fields such as computer vision, medical image analysis, and natural language processing, where traditional deep learning methods face limitations due to high energy consumption and long training times [10][12]. - HOLO's quantum convolutional neural network method aims to reduce computational complexity and leverage future advancements in quantum hardware for significant breakthroughs in computing power [10][11]. Future Prospects - The technology lays the groundwork for broader applications of quantum machine learning, with expectations for expansion into large-scale image recognition and real-time video processing as quantum hardware advances [11][12]. - HOLO plans to further optimize quantum circuits and explore multi-layer quantum convolutional networks combined with deep residual structures in future research [11].