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).
*This research is supported by the Singapore Ministry of Education Tier 1 Grant (RG162/19), the National Research Foundation (NRF) (Award No. NRFNRFF2016-02), and Grant No. FQXI R-710-000-146-720 from the Foundational Questions Institute and the the Quantum Engineering Program QEP-SP3.
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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).
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