Integrating Semantic Communication and Human Decision-Making into an End-to-End Sensing-Decision Framework
Edgar Beck, Hsuan-Yu Lin, Patrick R\"uckert, Yongping Bao, Bettina von Helversen, Sebastian Fehrler, Kirsten Tracht, Armin Dekorsy

TL;DR
This paper proposes an interdisciplinary end-to-end framework integrating semantic communication and human decision-making, optimizing information transfer to support human tasks efficiently while considering cognitive constraints.
Contribution
It introduces a probabilistic model bridging semantic communication and HDM, exploring design trade-offs and supporting efficient, human-aware communication system development.
Findings
Semantic communication balances detail and cognitive capacity.
Framework reduces bandwidth, power, and latency requirements.
Supports theoretical and simulation-based analysis of HDM support.
Abstract
As early as 1949, Weaver defined communication in a very broad sense to include all procedures by which one mind or technical system can influence another, thus establishing the idea of semantic communication. With the recent success of machine learning in expert assistance systems where sensed information is wirelessly provided to a human to assist task execution, the need to design effective and efficient communications has become increasingly apparent. In particular, semantic communication aims to convey the meaning behind the sensed information relevant for Human Decision-Making (HDM). Regarding the interplay between semantic communication and HDM, many questions remain, such as how to model the entire end-to-end sensing-decision-making process, how to design semantic communication for the HDM and which information should be provided for HDM. To address these questions, we propose…
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