On Testing and Learning Quantum Junta Channels
Abstract
We consider the problems of testing and learning quantum k-junta channels, which are n-qubit to n-qubit quantum channels acting non-trivially on at most k out of n qubits and leaving the rest of qubits unchanged. We show the following.1. An \tilde{O}(k)-query algorithm to distinguish whether the given channel is k-junta channel or is far from any k-junta channels, and a lower bound \Omega(\sqrt{k}) on the number of queries;2. An \tilde{O}(4^k)-query algorithm to learn a k-junta channel, and a lower bound \Omega(4^k/k) on the number of queries. This gives the first junta channel testing and learning results, and partially answers an open problem raised by Chen et al. (2023). In order to settle these problems, we develop a Fourier analysis framework over the space of superoperators and prove several fundamental properties, which extends the Fourier analysis over the space of operators introduced in Montanaro and Osborne (2010).
Cite
Text
Bao and Yao. "On Testing and Learning Quantum Junta Channels." Conference on Learning Theory, 2023.Markdown
[Bao and Yao. "On Testing and Learning Quantum Junta Channels." Conference on Learning Theory, 2023.](https://mlanthology.org/colt/2023/bao2023colt-testing/)BibTeX
@inproceedings{bao2023colt-testing,
title = {{On Testing and Learning Quantum Junta Channels}},
author = {Bao, Zongbo and Yao, Penghui},
booktitle = {Conference on Learning Theory},
year = {2023},
pages = {1064-1094},
volume = {195},
url = {https://mlanthology.org/colt/2023/bao2023colt-testing/}
}