ArXiv TLDR

Quantum Feature Selection with Higher-Order Binary Optimization on Trapped-Ion Hardware

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2604.26834

Carlos Flores-Garrigós, Anton Simen, Qi Zhang, Enrique Solano, Narendra N. Hegade + 4 more

quant-phcs.LG

TLDR

This paper introduces a quantum feature selection method using higher-order binary optimization on trapped-ion hardware, showing competitive performance.

Key contributions

  • Introduces a quantum feature-selection framework using Higher-Order Unconstrained Binary Optimization (HUBO).
  • HUBO incorporates one-, two-, and three-body mutual information terms for higher-order multivariate dependencies.
  • Optimized HUBO instances using digitized counterdiabatic quantum optimization on IonQ Forte hardware.
  • Demonstrates competitive classification performance and compact, informative feature subsets on benchmark datasets.

Why it matters

This work presents quantum feature selection via higher-order binary optimization on trapped-ion hardware. It achieves competitive ML preprocessing performance, validating complex quantum algorithms on current systems and opening new avenues for model enhancement.

Original Abstract

We present a quantum feature-selection framework based on a higher-order unconstrained binary optimization (HUBO) formulation that explicitly incorporates multivariate dependencies beyond standard quadratic encodings. In contrast to QUBO-based approaches, the proposed model includes one-, two-, and three-body interaction terms derived from mutual-information measures, enabling the objective function to capture feature relevance, pairwise redundancy, and higher-order statistical structure within a unified energy model. To suppress trivial all-selected solutions, we further include structured linear penalties that promote sparsity while preserving informative variables. The resulting HUBO instances are optimized with digitized counterdiabatic quantum optimization on IonQ Forte and compared against noiseless quantum simulation as well as two classical dimensionality-reduction baselines: SelectKBest based on mutual information and principal component analysis (PCA). We evaluate the proposed workflow on two benchmark classification datasets, namely the Gallstone dataset and the Spambase dataset, and analyze both predictive performance and selected-subset structure. The results show good qualitative agreement between hardware executions and noiseless simulations, supporting the feasibility of implementing higher-order feature-selection Hamiltonians on current trapped-ion processors. In addition, the quantum approach yields competitive classification performance while producing compact and informative feature subsets, highlighting the potential of higher-order quantum optimization for machine-learning preprocessing tasks.

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