Heterogeneous Semantic and Bit Communications: A Semi-NOMA Scheme
Xidong Mu, Yuanwei Liu, Li Guo, Naofal Al-Dhahir

TL;DR
This paper introduces a semi-NOMA scheme for heterogeneous semantic and bit communications, proposing a regression-based method to approximate semantic similarity and analyzing the performance limits of three multiple access schemes.
Contribution
It develops a novel semi-NOMA framework with a tractable semantic similarity approximation and provides optimal resource allocation strategies, demonstrating its superiority over traditional MA schemes.
Findings
Semi-NOMA outperforms NOMA and OMA in rate and power efficiency.
The proposed semantic similarity approximation is effective and tractable.
Optimal resource allocation enhances the performance of semi-NOMA.
Abstract
Multiple access (MA) design is investigated for facilitating the coexistence of the emerging semantic transmission and the conventional bit-based transmission in future networks. The semantic rate is considered for measuring the performance of the semantic transmission. However, a key challenge is that there is a lack of a closed-form expression for a key parameter, namely the semantic similarity, which characterizes the sentence similarity between an original sentence and the corresponding recovered sentence. To overcome this challenge, we propose a data regression method, where the semantic similarity is approximated by a generalized logistic function. Using the obtained tractable function, we propose a heterogeneous semantic and bit communication framework, where an access point simultaneously sends the semantic and bit streams to one semantics-interested user (S-user) and one…
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Taxonomy
TopicsAdvanced Wireless Communication Technologies · Wireless Body Area Networks · Advanced biosensing and bioanalysis techniques
