Semantic communication is viewed as a revolutionary paradigm that can potentially transform how we design and operate wireless communication systems. However, despite a recent surge of research activities in this area, the research landscape remains limited. In this tutorial, we present the first rigorous vision of a scalable end-to-end semantic communication network that is founded on novel concepts from artificial intelligence (AI), causal reasoning, and communication theory. We first discuss how the design of semantic communication networks requires a move from data-driven networks towards knowledge-driven ones. Subsequently, we highlight the necessity of creating semantic representations of data that satisfy the key properties of minimalism, generalizability, and efficiency so as to do more with less. We then explain how those representations can form the basis a so-called semantic language. By using semantic representation and languages, we show that the traditional transmitter and receiver now become a teacher and apprentice. Then, we define the concept of reasoning by investigating the fundamentals of causal representation learning and their role in designing semantic communication networks. We demonstrate that reasoning faculties are majorly characterized by the ability to capture causal and associational relationships in datastreams. For such reasoning-driven networks, we propose novel and essential semantic communication metrics that include new "reasoning capacity" measures that could go beyond Shannon's bound to capture the convergence of computing and communication. Finally, we explain how semantic communications can be scaled to large-scale networks (6G and beyond). In a nutshell, we expect this tutorial to provide a comprehensive reference on how to properly build, analyze, and deploy future semantic communication networks.
翻译:语义通信被视为一个革命范式,它有可能改变我们设计和操作无线通信系统的方式。然而,尽管最近在这一领域的研究活动激增,但研究场景仍然有限。在这个教义中,我们提出了第一个严格的愿景,即基于人工智能(AI)、因果推理和通信理论等新概念的可扩展端到端的语义通信网络。我们首先讨论了语义通信网络的设计需要从数据驱动的网络转向知识驱动的网络。随后,我们强调必须建立满足最低限度、通用和效率的关键特性的数据的语义表达,以便少用更多。我们然后解释这些表述如何成为所谓的语义语言的基础。我们通过语义表达和语言,表明传统发送器和接收器现在成了教师和学徒。然后,我们通过调查因果表达学习的基本参考及其在设计语义通信网络中的作用来定义逻辑概念。我们恰当地指出,理性系主要特征是我们有能力捕捉到因果关系和关联性网络以外的关键特性,从而用更少的语义通信网络来构建所谓的语义整合。我们提出这样的演进性网络,从而推理学推理学可以最终推算出一个新的数据流。