核心概念
The author explores joint transmission and computation resource allocation for probabilistic semantic communication with rate splitting in wireless networks, utilizing shared probability graphs to compress data efficiently.
摘要
The paper investigates the use of semantic communication techniques to compress data for efficient transmission in wireless networks. It introduces a novel framework for probabilistic semantic communication with rate splitting multiple access, optimizing power allocation and semantic compression ratio. The proposed iterative algorithm effectively balances computation and transmission power, enhancing the overall semantic rates of users.
統計資料
Due to limited communication resources, the BS utilizes semantic communication techniques to compress large-sized data.
The proposed scheme aims to maximize the sum of semantic rates under total power, semantic compression ratio, and rate allocation constraints.
引述
"The probability graph can be used to further compress the transmission data at the BS."
"Numerical results validate the effectiveness of the proposed scheme."