A hybrid quantum-classical algorithm for Bayes-optimal quantum state discrimination using the source code
Abstract
Quantum state discrimination is a fundamental primitive in quantum information processing, underpinning tasks in quantum communication, sensing, and learning. We consider the general Bayes framework, as introduced by Helstrom, for state discrimination when, instead of a classical description of the candidate states, one has access to their \emph{source code}: the quantum circuit that prepares them. We show that the semidefinite program (SDP) for the discrimination problem can be reformulated in terms of the Gram matrix of these states, reducing the SDP variable dimensions from to , where is the Hilbert space dimension, is the number of candidate states, and is the number of possible guesses. Importantly, we further introduce a quantum pre-processing procedure which efficiently constructs the reduced semidefinite program from the source code, enabling our method to operate directly on quantum data. We consider two applications. First, we characterize the optimal identifications for quantum changepoint problems under several reward structures, including multiple-changepoint settings that were previously computationally inaccessible. Second, we consider a quantum error classification problem and show how our reduction makes it tractable for systems of hundreds of qubits.
Cite
@article{arxiv.2312.04023,
title = {A hybrid quantum-classical algorithm for Bayes-optimal quantum state discrimination using the source code},
author = {Ankith Mohan and Jamie Sikora and Sarvagya Upadhyay},
journal= {arXiv preprint arXiv:2312.04023},
year = {2026}
}
Comments
38 pages, 17 figures. Comments welcome!