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arxiv: 2505.18396 · v4 · submitted 2025-05-23 · 🪐 quant-ph

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The Lie Algebra of XY-mixer Topologies and Warm Starting QAOA for Constrained Optimization

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classification 🪐 quant-ph
keywords dlasoptimizationproblemsqaoaquantumalgebraansatzconstrained
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The XY-mixer has widespread utilization in modern quantum computing, including in variational quantum algorithms, such as Quantum Alternating Operator Ansatz (QAOA). The XY ansatz is particularly useful for solving Cardinality Constrained Optimization tasks, a large class of important NP-hard problems. First, we give explicit decompositions of the dynamical Lie algebras (DLAs) associated with a variety of $XY$-mixer topologies. When these DLAs admit simple Lie algebra decompositions, they are efficiently trainable. An example of this scenario is a ring $XY$-mixer with arbitrary $R_Z$ gates. Conversely, when we allow for all-to-all $XY$-mixers or include $R_{ZZ}$ gates, the DLAs grow exponentially and are no longer efficiently trainable. We provide numerical simulations showcasing these concepts on Portfolio Optimization, Sparsest $k$-Subgraph, and Graph Partitioning problems. These problems correspond to exponentially-large DLAs and we are able to warm-start these optimizations by pre-training on polynomial-sized DLAs by restricting the gate generators. This results in improved convergence to high quality optima of the original task, providing dramatic performance benefits in terms of solution sampling and approximation ratio on optimization tasks for both shared angle and multi-angle QAOA.

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Cited by 2 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Reductions of QAOA Induced by Classical Symmetries: Theoretical Insights and Practical Implications

    quant-ph 2026-02 conditional novelty 8.0

    Symmetry reductions in QAOA for MaxCut can collapse DLA dimensions from exponential to quadratic depending on the fixed variable, with graph embeddings ensuring expressivity and improved trainability.

  2. Constrained Counterdiabatic Quantum Approximate Optimization Algorithm for Portfolio Optimization

    quant-ph 2026-05 unverdicted novelty 6.0

    CCD-QAOA incorporates counterdiabatic terms into the QAOA ansatz and shows higher approximation ratios than standard XY-mixer, Grover-mixer, and penalty QAOA for portfolio problems with budget and risk constraints.