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Provably superior accuracy in quantum stochastic modeling

Yang, Chengran*; Garner, Andrew J. P.; Liu, Feiyang; Tischler, Nora; Thompson, Jayne; Yung, Man-Hong; Gu, Mile; Dahlsten, Oscar
Science Citation Index Expanded
南阳理工学院

摘要

In the design of stochastic models, there is a constant trade-off between model complexity and accuracy. Here we prove that quantum models enable a more favorable trade-off. We present a technique for identifying fundamental upper bounds on the predictive accuracy of dimensionality-constrained classical models. We identify quantum models that surpass this bound by creating an algorithm that learns quantum models given time-series data. We demonstrate that this quantum accuracy advantage is attainable in a present-day noisy quantum device. These results illustrate the immediate relevance of quantum technologies to time-series analysis and offer an instance where their resulting accuracy advantage can be provably established.

关键词

CAUSAL ARCHITECTURE COMPLEXITY MECHANICS