Quantum-Inspired Geometric Classification with Correlation Group Structures and VQC Decision Modeling
Nishikanta Mohanty, Arya Ansuman Priyadarshi, Bikash K. Behera, Badshah Mukherjee

TL;DR
This paper introduces a quantum-inspired geometric classification framework that combines correlation group structures, overlap estimation, and variational quantum decision models to achieve robust, scalable, and interpretable classification across various datasets.
Contribution
It presents a novel geometry-first approach integrating correlation structures and quantum-inspired models, improving classification robustness and efficiency in heterogeneous data regimes.
Findings
Achieves high accuracy on Heart Disease, Breast Cancer, and Wine Quality datasets.
Demonstrates effective rare-event detection with Delta + VQC pipeline on credit card fraud data.
Provides a scalable, interpretable hybrid geometric-variational classification framework.
Abstract
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…
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