Foundations of Quantum Granular Computing with Effect-Based Granules, Algebraic Properties and Reference Architectures
Oscar Montiel Ross

TL;DR
This paper establishes the theoretical foundations of Quantum Granular Computing (QGC), modeling quantum granules as effects in Hilbert space, and demonstrates their application in quantum decision systems and information processing.
Contribution
It introduces a formal operator-theoretic framework for quantum granules, connecting them with quantum information theory and decision systems, and proposes reference architectures for practical implementation.
Findings
Quantum granules modeled as effects on Hilbert space.
Connection between quantum effects and decision boundaries.
Case studies demonstrating fuzzy memberships and quantum advantages.
Abstract
This paper develops the foundations of Quantum Granular Computing (QGC), extending classical granular computing including fuzzy, rough, and shadowed granules to the quantum regime. Quantum granules are modeled as effects on a finite dimensional Hilbert space, so granular memberships are given by Born probabilities. This operator theoretic viewpoint provides a common language for sharp (projective) and soft (nonprojective) granules and embeds granulation directly into the standard formalism of quantum information theory. We establish foundational results for effect based quantum granules, including normalization and monotonicity properties, the emergence of Boolean islands from commuting families, granular refinement under Luders updates, and the evolution of granules under quantum channels via the adjoint channel in the Heisenberg picture. We connect QGC with quantum detection and…
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Taxonomy
TopicsRough Sets and Fuzzy Logic · Quantum Computing Algorithms and Architecture · Ferroelectric and Negative Capacitance Devices
