Semantic Communication with an LLM-enabled Knowledge Base
Wuxia Hu, Caili Guo, Yang Yang, Chunyan Feng, Kuiyuan Ding, Shiwen Mao

TL;DR
This paper introduces an LLM-enabled semantic knowledge base for semantic communication, enhancing data generation and fusion while mitigating hallucination effects, leading to significant performance improvements.
Contribution
It proposes a novel SC system leveraging LLMs for knowledge base enrichment, with a cross-domain fusion codec to reduce hallucinations and improve transmission performance.
Findings
Achieves up to 72.6% performance gain over conventional systems.
Uses a hallucination filtering phase to improve data relevance.
Demonstrates effectiveness on three cross-modality retrieval tasks.
Abstract
Semantic communication (SC) can achieve superior coding and transmission performance based on the knowledge contained in the semantic knowledge base (KB). However, conventional KBs consist of source KBs and channel KBs, which are often costly to obtain data and limited in data scale. Fortunately, large language models (LLMs) have recently emerged with extensive knowledge and generative capabilities. Therefore, this paper proposes an SC system with LLM-enabled knowledge base (SC-LMKB), which utilizes the generation ability of LLMs to significantly enrich the KB of SC systems. In particular, we first design an LLM-enabled generation mechanism with a prompt engineering strategy for source data generation (SDG) and a cross-attention alignment method for channel data generation (CDG). However, hallucinations from LLMs may cause semantic noise, thus degrading SC performance. To mitigate the…
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