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Quantum Machine Learning Models

K. A. JayabalajiS. Venkata AnandVignan Institute of Information and Technology, IndiaDineshkumar RajendranOld Dominion University, USAPrasanta Chatterjee BiswasParul University, Vadodara, IndiaSardor OmonovTashkent State University of Economics, Tashkent, UzbekistanRubaid AshfaqAmity School of Communication, Amity University, Noida, India
ABI

Аннотация

Quantum machine learning (QML) has become an optimistic avenue of harnessing quantum computation in data-driven modeling, especially of issues with high dimensionality and complicated correlations. Current methods are generally based on fixed or over-parameterized quantum circuits, and hence restricted to scalability as well as unproductive optimization in real-world hardware. This chapter introduces a hybrid quantum-classical learning system that is adaptive and provides principled quantum data encoding, architecture-conscious variational circuit design and resource-optimal optimization. The technique is based on the concepts of quantum architecture search and subspace-preserving transformations to trade expressiveness with trainability, and discretize the quantum model into a classical pipeline processing system to make it robust and flexible. The experimental analysis proves that the suggested framework is more accurate in its classification and converges more quickly than the representative variational and convolutional quantum models.

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