Quantum Machine Learning with HQC Architectures using non-Classically Simulable Feature Maps
Abstract
Hybrid Quantum-Classical (HQC) Architectures are used in near-term NISQ Quantum Computers for solving Quantum Machine Learning problems. The quantum advantage comes into picture due to the exponential speedup offered over classical computing. One of the major challenges in implementing such algorithms is the choice of quantum embeddings and the use of a functionally correct quantum variational circuit. In this paper, we present an application of QSVM (Quantum Support Vector Machines) to predict if a person will require mental health treatment in the tech world in the future using the dataset from OSMI Mental Health Tech Surveys. We achieve this with non-classically simulable feature maps and prove that NISQ HQC Architectures for Quantum Machine Learning can be used alternatively to create good performance models in near-term real-world applications.
Cite
@article{arxiv.2103.11381,
title = {Quantum Machine Learning with HQC Architectures using non-Classically Simulable Feature Maps},
author = {Syed Farhan Ahmad and Raghav Rawat and Minal Moharir},
journal= {arXiv preprint arXiv:2103.11381},
year = {2024}
}
Comments
The results from an actual hardware are not performant enough and do not match up with that of the simulator. Moreover, hyperparameter is not considered