Reducing QUBO Density by Factoring Out Semi-Symmetries
Quantum Approximate Optimization Algorithm (QAOA) and Quantum Annealing are prominent approaches for solving combinatorial optimization problems, such as those formulated as Quadratic Unconstrained Binary Optimization (QUBO). These algorithms aim to minimize the objective function $x^T Q x$, where $...
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Zusammenfassung: | Quantum Approximate Optimization Algorithm (QAOA) and Quantum Annealing are
prominent approaches for solving combinatorial optimization problems, such as
those formulated as Quadratic Unconstrained Binary Optimization (QUBO). These
algorithms aim to minimize the objective function $x^T Q x$, where $Q$ is a
QUBO matrix. However, the number of two-qubit CNOT gates in QAOA circuits and
the complexity of problem embeddings in Quantum Annealing scale linearly with
the number of non-zero couplings in $Q$, contributing to significant
computational and error-related challenges. To address this, we introduce the
concept of \textit{semi-symmetries} in QUBO matrices and propose an algorithm
for identifying and factoring these symmetries into ancilla qubits.
\textit{Semi-symmetries} frequently arise in optimization problems such as
\textit{Maximum Clique}, \textit{Hamilton Cycles}, \textit{Graph Coloring}, and
\textit{Graph Isomorphism}. We theoretically demonstrate that the modified QUBO
matrix $Q_{\text{mod}}$ retains the same energy spectrum as the original $Q$.
Experimental evaluations on the aforementioned problems show that our algorithm
reduces the number of couplings and QAOA circuit depth by up to $45\%$. For
Quantum Annealing, these reductions also lead to sparser problem embeddings,
shorter qubit chains and better performance. This work highlights the utility
of exploiting QUBO matrix structure to optimize quantum algorithms, advancing
their scalability and practical applicability to real-world combinatorial
problems. |
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DOI: | 10.48550/arxiv.2412.17841 |