Dimensional Reduction in Quantum-Enhanced Stochastic Modelling
ORAL
Abstract
1. Given models of a fixed memory dimension, quantum models can achieve superior accuracy than their classical counterpart
2. There exist families of progressively more non-Markovian processes that require increasing classical memory dimensionality to model, and yet can be modelled by a quantum machine of bounded dimension.
We illustrate such quantum models discovered directly from time-series data, and how they can display provable accuracy advantage within today’s noisy quantum processors. We discuss how such models can also generate future predictions in a quantum superposition, providing a key sub-routine for various quantum algorithms that enable the enhanced analysis of stochastic processes (e.g., quantum amplitude estimation, risk analysis, importance sampling).
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Publication: 1. Yang, Chengran, Andrew Garner, Feiyang Liu, Nora Tischler, Jayne Thompson, Man-Hong Yung, Mile Gu, and Oscar Dahlsten. "Provable superior accuracy in machine-learned quantum models." arXiv preprint arXiv:2105.14434 (2021).<br>2. Elliott, Thomas, Chengran Yang, Felix C. Binder, Andrew Garner, Jayne Thompson, and Mile Gu. "Extreme dimensionality reduction with quantum modeling." Physical Review Letters 125, no. 26 260501 (2020)
Presenters
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Jayne Thompson
Horizon Quantum Computing, Natl Univ of Singapore
Authors
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Mile Gu
Nanyang Technological University
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Jayne Thompson
Horizon Quantum Computing, Natl Univ of Singapore
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Chengran Yang
Nanyang Technological University
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Oscar Dahlsten
Southern University of Science and Technology
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Andrew Garner
Austrian Academy of Sciences
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Feiyang Liu
Southern University of Science and Technology
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Nora Tischler
Freie Universität
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Thomas Elliott
Imperial College London
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Felix Binder
Austrian Academy of Sciences
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Man-Hong Yung
Southern University of Science and Technology