Performance Optimization for Semantic Communications: An Attention-based Reinforcement Learning Approach
Yining Wang, Mingzhe Chen, Tao Luo, Walid Saad, Dusit Niyato, H., Vincent Poor, Shuguang Cui

TL;DR
This paper introduces an attention-based reinforcement learning method to optimize resource allocation in semantic communication systems, enhancing the transmission of textual data by maximizing semantic similarity under resource constraints.
Contribution
It proposes a novel RL algorithm with attention mechanisms to effectively select and transmit semantic information, improving communication efficiency and accuracy.
Findings
The proposed method outperforms traditional RL in semantic similarity metrics.
Attention mechanism effectively evaluates the importance of semantic triples.
Dynamic learning rate adjustment ensures convergence.
Abstract
In this paper, a semantic communication framework is proposed for textual data transmission. In the studied model, a base station (BS) extracts the semantic information from textual data, and transmits it to each user. The semantic information is modeled by a knowledge graph (KG) that consists of a set of semantic triples. After receiving the semantic information, each user recovers the original text using a graph-to-text generation model. To measure the performance of the considered semantic communication framework, a metric of semantic similarity (MSS) that jointly captures the semantic accuracy and completeness of the recovered text is proposed. Due to wireless resource limitations, the BS may not be able to transmit the entire semantic information to each user and satisfy the transmission delay constraint. Hence, the BS must select an appropriate resource block for each user as well…
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Taxonomy
TopicsRobotics and Automated Systems · Topic Modeling
MethodsBalanced Selection
