More Practical and Adaptive Algorithms for Online Quantum State Learning

06/01/2020
by   Yifang Chen, et al.
0

Online quantum state learning is a recently proposed problem by Aaronson et al. (2018), where the learner sequentially predicts n-qubit quantum states based on given measurements on states and noisy outcomes. In the previous work, the algorithms are worst-case optimal in general but fail in achieving tighter bounds in certain simpler or more practical cases. In this paper, we develop algorithms to advance the online learning of quantum states. First, we show that Regularized Follow-the-Leader (RFTL) method with Tallis-2 entropy can achieve an O(√(MT)) total loss with perfect hindsight on the first T measurements with maximum rank M. This regret bound depends only on the maximum rank M of measurements rather than the number of qubits, which takes advantage of low-rank measurements. Second, we propose a parameter-free algorithm based on a classical adjusting learning rate schedule that can achieve a regret depending on the loss of best states in hindsight, which takes advantage of low noisy outcomes. Besides these more adaptive bounds, we also show that our RFTL with Tallis-2 entropy algorithm can be implemented efficiently on near-term quantum computing devices, which is not achievable in previous works.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/29/2022

Lower bounds for learning quantum states with single-copy measurements

We study the problems of quantum tomography and shadow tomography using ...
research
02/25/2018

Online Learning of Quantum States

Suppose we have many copies of an unknown n-qubit state ρ. We measure so...
research
04/23/2021

Low Rank Approximation in Simulations of Quantum Algorithms

Simulating quantum algorithms on classical computers is challenging when...
research
02/06/2022

Pushing the Efficiency-Regret Pareto Frontier for Online Learning of Portfolios and Quantum States

We revisit the classical online portfolio selection problem. It is widel...
research
04/14/2022

Tight Bounds for Quantum State Certification with Incoherent Measurements

We consider the problem of quantum state certification, where we are giv...
research
10/28/2011

Adaptive Hedge

Most methods for decision-theoretic online learning are based on the Hed...
research
02/25/2021

Toward Instance-Optimal State Certification With Incoherent Measurements

We revisit the basic problem of quantum state certification: given copie...

Please sign up or login with your details

Forgot password? Click here to reset