Quantum-Inspired Geometric Classification with Correlation Group Structures and VQC Decision Modeling

arXiv:2604.019305.3h-index: 5
AI Analysis

This work addresses classification challenges for heterogeneous tabular and imbalanced datasets, offering an interpretable and scalable hybrid framework, though it appears incremental as it builds on existing quantum-inspired and geometric methods.

The paper tackles classification problems by proposing a geometry-driven quantum-inspired framework that integrates Correlation Group Structures and variational quantum decision modeling, achieving test accuracies of 0.8478, 0.8881, and 0.9556 on Heart Disease, Breast Cancer, and Wine Quality datasets, and approximately 0.85 minority recall on a Credit Card Fraud dataset.

We propose a geometry-driven quantum-inspired classification framework that integrates Correlation Group Structures (CGR), compact SWAP-test-based overlap estimation, and selective variational quantum decision modelling. Rather than directly approximating class posteriors, the method adopts a geometry-first paradigm in which samples are evaluated relative to class medoids using overlap-derived Euclidean-like and angular similarity channels. CGR organizes features into anchor-centered correlation neighbourhoods, generating nonlinear, correlation-weighted representations that enhance robustness in heterogeneous tabular spaces. These geometric signals are fused through a non-probabilistic margin-based fusion score, serving as a lightweight and data-efficient primary classifier for small-to-moderate datasets. On Heart Disease, Breast Cancer, and Wine Quality datasets, the fusion-score classifier achieves 0.8478, 0.8881, and 0.9556 test accuracy respectively, with macro-F1 scores of 0.8463, 0.8703, and 0.9522, demonstrating competitive and stable performance relative to classical baselines. For large-scale and highly imbalanced regimes, we construct compact Delta-distance contrastive features and train a variational quantum classifier (VQC) as a nonlinear refinement layer. On the Credit Card Fraud dataset (0.17% prevalence), the Delta + VQC pipeline achieves approximately 0.85 minority recall at an alert rate of approximately 1.31%, with ROC-AUC 0.9249 and PR-AUC 0.3251 under full-dataset evaluation. These results highlight the importance of operating-point-aware assessment in rare-event detection and demonstrate that the proposed hybrid geometric-variational framework provides interpretable, scalable, and regime-adaptive classification across heterogeneous data settings.

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