Provable superior accuracy in machine learned quantum models
Abstract
In modelling complex processes, the potential past data that influence future expectations are immense. Models that track all this data are not only computationally wasteful but also shed little light on what past data most influence the future. There is thus enormous interest in dimensional reduction-finding automated means to reduce the memory dimension of our models while minimizing its impact on its predictive accuracy. Here we construct dimensionally reduced quantum models by machine learning methods that can achieve greater accuracy than provably optimal classical counterparts. We demonstrate this advantage on present-day quantum computing hardware. Our algorithm works directly off classical time-series data and can thus be deployed in real-world settings. These techniques illustrate the immediate relevance of quantum technologies to time-series analysis and offer a rare instance where the resulting quantum advantage can be provably established.
Cite
@article{arxiv.2105.14434,
title = {Provable superior accuracy in machine learned quantum models},
author = {Chengran Yang and Andrew Garner and Feiyang Liu and Nora Tischler and Jayne Thompson and Man-Hong Yung and Mile Gu and Oscar Dahlsten},
journal= {arXiv preprint arXiv:2105.14434},
year = {2021}
}
Comments
16 Pages, 17 Figures