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Towards Exponential Quantum Improvements in Solving Cardinality-Constrained Binary Optimization

Haomu Yuan, Hanqing Wu, Kuan-Cheng Chen, Bin Cheng, Crispin H. W. Barnes

Abstract

Cardinality-constrained binary optimization is a fundamental computational primitive with broad applications in machine learning, finance, and scientific computing. In this work, we introduce a Grover-based quantum algorithm that exploits the structure of the fixed-cardinality feasible subspace under a natural promise on solution existence. For quadratic objectives, our approach achieves ${O}\left(\sqrt{\frac{\binom{n}{k}}{M}}\right)$ Grover rotations for any fixed cardinality $k$ and degeneracy of the optima $M$, yielding an exponential reduction in the number of Grover iterations compared with unstructured search over $\{0,1\}^n$. Building on this result, we develop a hybrid classical--quantum framework based on the alternating direction method of multipliers (ADMM) algorithm. The proposed framework is guaranteed to output an $ε$-approximate solution with a consistency tolerance $ε+ δ$ using at most $ {O}\left(\sqrt{\binom{n}{k}}\frac{n^{6}k^{3/2} }{ \sqrt{M}ε^2 δ}\right)$ queries to a quadratic oracle, together with ${O}\left(\frac{n^{6}k^{3/2}}{ε^2δ}\right)$ classical overhead. Overall, our method suggests a practical use of quantum resources and demonstrates an exponential improvements over existing Grover-based approaches in certain parameter regimes, thereby paving the way toward quantum advantage in constrained binary optimization.

Towards Exponential Quantum Improvements in Solving Cardinality-Constrained Binary Optimization

Abstract

Cardinality-constrained binary optimization is a fundamental computational primitive with broad applications in machine learning, finance, and scientific computing. In this work, we introduce a Grover-based quantum algorithm that exploits the structure of the fixed-cardinality feasible subspace under a natural promise on solution existence. For quadratic objectives, our approach achieves Grover rotations for any fixed cardinality and degeneracy of the optima , yielding an exponential reduction in the number of Grover iterations compared with unstructured search over . Building on this result, we develop a hybrid classical--quantum framework based on the alternating direction method of multipliers (ADMM) algorithm. The proposed framework is guaranteed to output an -approximate solution with a consistency tolerance using at most queries to a quadratic oracle, together with classical overhead. Overall, our method suggests a practical use of quantum resources and demonstrates an exponential improvements over existing Grover-based approaches in certain parameter regimes, thereby paving the way toward quantum advantage in constrained binary optimization.
Paper Structure (13 sections, 12 theorems, 81 equations, 1 figure, 1 table, 2 algorithms)

This paper contains 13 sections, 12 theorems, 81 equations, 1 figure, 1 table, 2 algorithms.

Key Result

Theorem 1

Consider a binary quadratic programming subject to a fixed-cardinality constraint with a feasible set $\mathcal{C}$. Let $\mathcal{F}\subseteq \mathcal{C}$ denote the set of solutions with strictly better objective values than those in $\mathcal{C}\backslash \mathcal{F}$ and $|\mathcal{F}|=M$. Assum

Figures (1)

  • Figure 1: The circuit of $\widehat{SCS}_2^{(n)}$ and $\widehat{SCS}_{3}^{(n,t)}$ for $\widehat{SCS}_{n,l}$ unitary: (a) $\widehat{SCS}_2^{(n)}$, (b) $\widehat{SCS}_{3}^{(n,t)}$.

Theorems & Definitions (23)

  • Remark 1
  • Theorem 1: Grover search for hard-constrained programming
  • proof
  • Proposition 1: cf. Lemma 4 in wang2019global
  • proof
  • Proposition 2: cf. Lemma 5 in wang2019global
  • proof
  • Corollary 1
  • Proposition 3: Coercivity
  • proof
  • ...and 13 more