Fundamental Limits of Quantum Semantic Communication via Sheaf Cohomology
Christo Kurisummoottil Thomas, Mingzhe Chen

TL;DR
This paper introduces a quantum information-theoretic framework for semantic communication using sheaf cohomology, revealing fundamental limits and advantages of quantum channels in multi-agent systems.
Contribution
It develops a novel sheaf cohomology-based model for quantum semantic networks, characterizes semantic ambiguity, and establishes quantum advantages in communication capacity.
Findings
Sheaf cohomology characterizes irreducible semantic ambiguity.
Quantum channels can surpass classical communication bounds.
Shared entanglement reduces classical communication requirements.
Abstract
Semantic communication (SC) enables bandwidth-efficient coordination in multi-agent systems by transmitting meaning rather than raw bits. However, when agents employ heterogeneous sensing modalities and AI architectures, perfect bit-level transmission no longer guarantees mutual understanding. Although deep learning methods for semantic compression have advanced, the information-theoretic limits of semantic alignment under heterogeneity remain poorly understood. Notably, semantic ambiguity shares the same mathematical structure as quantum contextuality, as both arise from cohomological obstructions, motivating a quantum formulation of SC. In this paper, an information-theoretic framework for quantum semantic communication is proposed using sheaf cohomology. Multi-agent semantic networks are modeled as quantum sheaves, where agents meaning spaces are Hilbert spaces connected by quantum…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Quantum Computing Algorithms and Architecture · Neural Networks and Reservoir Computing
