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Resource Allocation Optimization in 5G Networks Using Variational Quantum Regressor

Param Pathak, Vidhi Oad, Aditya Prajapati, Nouhaila Innan

202414 citationsDOI

Abstract

Quantum Machine Learning (QML) is a powerful tool for addressing complex telecommunications challenges. As 5G technology continues to evolve, our research provides a roadmap for integrating QML into the resource allocation framework, potentially improving the efficiency and performance of 5G networks. Through the application of the Variational Quantum Regressor (VQR), our study demonstrates the potential for quantum models to enhance predictive accuracy in resource allocation scenarios. Our VQR accurately aligns predicted quantum states with their intended targets, thereby reducing discrepancies. Such precision in regression analysis, particularly in the context of 5G networks, represents a significant breakthrough. A key highlight of our algorithm is its ability to substantially reduce the mean squared error to an impressively low value of 0.0081, indicating near-perfect prediction accuracy. This innovative approach is set against the backdrop of the evolving landscape of communication networks and computational systems, where the challenge of resource allocation is increasingly pronounced due to the rising demand for bandwidth-intensive and computation-heavy services.

Topics & Concepts

Computer scienceResource allocationQuantumMathematical optimizationResource management (computing)Distributed computingComputer networkMathematicsQuantum mechanicsPhysicsQuantum Computing Algorithms and ArchitectureQuantum-Dot Cellular AutomataOptical Network Technologies