Tight Bounds for Quantum State Certification with Incoherent Measurements
This resolves an open problem in quantum information theory, providing tight bounds for near-term quantum devices without persistent memory.
The paper tackles the problem of quantum state certification with incoherent measurements, settling the copy complexity for mixedness testing by proving a lower bound of Ω(d^{3/2}/ε^2) copies, matching the known upper bound, and extending instance-optimal bounds to general states, showing that adaptivity does not help.
We consider the problem of quantum state certification, where we are given the description of a mixed state $σ\in \mathbb{C}^{d \times d}$, $n$ copies of a mixed state $ρ\in \mathbb{C}^{d \times d}$, and $\varepsilon > 0$, and we are asked to determine whether $ρ= σ$ or whether $\| ρ- σ\|_1 > \varepsilon$. When $σ$ is the maximally mixed state $\frac{1}{d} I_d$, this is known as mixedness testing. We focus on algorithms which use incoherent measurements, i.e. which only measure one copy of $ρ$ at a time. Unlike those that use entangled, multi-copy measurements, these can be implemented without persistent quantum memory and thus represent a large class of protocols that can be run on current or near-term devices. For mixedness testing, there is a folklore algorithm which uses incoherent measurements and only needs $O(d^{3/2} / \varepsilon^2)$ copies. The algorithm is non-adaptive, that is, its measurements are fixed ahead of time, and is known to be optimal for non-adaptive algorithms. However, when the algorithm can make arbitrary incoherent measurements, the best known lower bound is only $Ω(d^{4/3} / \varepsilon^2)$ [Bubeck-Chen-Li '20], and it has been an outstanding open problem to close this polynomial gap. In this work, 1) we settle the copy complexity of mixedness testing with incoherent measurements and show that $Ω(d^{3/2} / \varepsilon^2)$ copies are necessary, and 2) we show the instance-optimal bounds for state certification to general $σ$ first derived by [Chen-Li-O'Donnell '21] for non-adaptive measurements also hold for arbitrary incoherent measurements. Qualitatively, our results say that adaptivity does not help at all for these problems. Our results are based on new techniques that allow us to reduce the problem to understanding certain matrix martingales, which we believe may be of independent interest.