论文标题

迈向语义通信协议:概率逻辑观点

Towards Semantic Communication Protocols: A Probabilistic Logic Perspective

论文作者

Seo, Sejin, Park, Jihong, Ko, Seung-Woo, Choi, Jinho, Bennis, Mehdi, Kim, Seong-Lyun

论文摘要

经典的媒体访问控制(MAC)协议是可解释的,但是它们的任务不可能控制信号传导消息(CMS)不适合新兴任务 - 关键任务应用程序。相比之下,基于神经网络(NN)协议模型(NPM)学会生成特定于任务的CMS,但是它们的理由和影响缺乏解释性。为了填补这一空白,在本文中,我们首次提出了通过将NPM转换为概率逻辑编程语言(Problog)编写的可解释的符号图来构建的语义协议模型(SPM)。通过在将NPM视为CM发生器的同时提取和合并共同的CM及其连接,可以可行。通过广泛的模拟,我们证实了SPM紧密近似其原始的NPM,同时仅占据0.02%的内存。通过利用其可解释性和记忆效率,我们演示了几种支持SPM的应用程序,例如SPM重新配置,以避免碰撞,并通过语义熵计算和存储多个SPMS来比较不同的SPM,以应对非机构环境。

Classical medium access control (MAC) protocols are interpretable, yet their task-agnostic control signaling messages (CMs) are ill-suited for emerging mission-critical applications. By contrast, neural network (NN) based protocol models (NPMs) learn to generate task-specific CMs, but their rationale and impact lack interpretability. To fill this void, in this article we propose, for the first time, a semantic protocol model (SPM) constructed by transforming an NPM into an interpretable symbolic graph written in the probabilistic logic programming language (ProbLog). This transformation is viable by extracting and merging common CMs and their connections while treating the NPM as a CM generator. By extensive simulations, we corroborate that the SPM tightly approximates its original NPM while occupying only 0.02% memory. By leveraging its interpretability and memory-efficiency, we demonstrate several SPM-enabled applications such as SPM reconfiguration for collision-avoidance, as well as comparing different SPMs via semantic entropy calculation and storing multiple SPMs to cope with non-stationary environments.

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