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Quantum Machine Learning Quantum Simulation

Manifold learning via quantum dynamics

arXiv
Authors: Akshat Kumar, Mohan Sarovar

Year

2021

Paper ID

40432

Status

Preprint

Abstract Read

~2 min

Abstract Words

99

Citations

N/A

Abstract

We introduce an algorithm for computing geodesics on sampled manifolds that relies on simulation of quantum dynamics on a graph embedding of the sampled data. Our approach exploits classic results in semiclassical analysis and the quantum-classical correspondence, and forms a basis for techniques to learn the manifold from which a dataset is sampled, and subsequently for nonlinear dimensionality reduction of high-dimensional datasets. We illustrate the new algorithm with data sampled from model manifolds and also by a clustering demonstration based on COVID-19 mobility data. Finally, our method reveals interesting connections between the discretization provided by data sampling and quantization.

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