Papers
qcr:2606.35805.1

Multi-block ADMM Heuristics for Mixed-Binary Optimization on Classical and Quantum Computers

arXiv

Claudio Gambella, Andrea Simonetto

Solving combinatorial optimization problems on current noisy quantum devices is currently being advocated for (and restricted to) binary polynomial optimization with equality constraints via quantum heuristic approaches. This is achieved using, e.g., the variational quantum eigensolver (VQE) and the quantum approximate optimization algorithm (QAOA). We present a decomposition-based approach to extend the applicability of current approaches to "quadratic plus convex" mixed binary optimization (MBO) problems, so as to solve a broad class of real-world optimization problems. In the MBO framework, we show that the alternating direction method of multipliers (ADMM) can split the MBO into a binary unconstrained problem (that can be solved with quantum algorithms), and continuous constrained convex subproblems (that can be solved cheaply with classical optimization solvers). The validity of the approach is then showcased by numerical results obtained on several optimization problems via simulations with VQE and QAOA on the quantum circuits implemented in Qiskit, an open-source quantum computing software development framework.
10.48550/arxiv.2001.02069
Published 2020
Uploaded 2 days ago
8
Views
View Publication
Citing this entry? Use this QCR ID
Uploaded by
QL
QCR Librarian

Overview

Join the Discussion

Comments (0)

No comments yet. Be the first to share your thoughts!

Indexed by QCR Librarian

This entry was created automatically from publicly available records. QCR links to public sources and only stores repository content where the license permits redistribution.

Related Code1

Related Tutorials0

No tutorials cover this paper yet. Add a tutorial →

Versions

v1 Latest
Jun 17, 2026
qcr:2606.35805.1

Cite all versions? Use the base QCR ID to always reference the latest version of this entry.