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Design and Analysis of Modern Quantum Neural Network Architectures for Intelligent Systems

Lakshmi Chandrakanth KasireddyPrabhakara Rao KapulaB.V. Raju Institute of Technology, Vishnupur, IndiaDineshkumar RajendranOld Dominion University, USANeha BharaniIPS Academy, Indore, IndiaSrikanth PulipetiMPSTME SVKMs NMIMS University, Shirpur, IndiaIslombek KhushvaktovTashkent State University of Economics, Tashkent, Uzbekistan
ABI

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Quantum neural networks (QNNs) offer a principled pathway for integrating quantum computation with machine learning through superposition- and entanglement-based representations. This chapter proposes an architecture-aware design and evaluation framework for modern QNNs, emphasizing robustness and system feasibility alongside predictive performance. Multiple architecturesvariational QNNs, quantum convolutional neural networks, tensor-network hybrids, and fully quantum models—are assessed under a unified protocol. Experimental analysis shows that the proposed architecture-search–guided QNN achieves 91.8% classification accuracy and an F1-score of 0.914, outperforming fixed-template variational QNNs by approximately 5.6 percentage points. Under depolarizing noise with probability p = 0.10, the proposed model retains 85.3% accuracy, whereas baseline QNNs fall below 80%. Moreover, circuit depth is reduced by nearly 25% relative to standard variational designs, leading to faster convergence (42 epochs vs. 57 epochs).

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