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6G Networks: Beyond Shannon Towards Semantic and Goal-Oriented Communications
TL;DR: The goal of this paper is to promote the idea that including semantic and goal-oriented aspects in future 6G networks can produce a significant leap forward in terms of system effectiveness and sustainability.
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Abstract: The goal of this paper is to promote the idea that including semantic and goal-oriented aspects in future 6G networks can produce a significant leap forward in terms of system effectiveness and sustainability. Semantic communication goes beyond the common Shannon paradigm of guaranteeing the correct reception of each single transmitted packet, irrespective of the meaning conveyed by the packet. The idea is that, whenever communication occurs to convey meaning or to accomplish a goal, what really matters is the impact that the correct reception/interpretation of a packet is going to have on the goal accomplishment. Focusing on semantic and goal-oriented aspects, and possibly combining them, helps to identify the relevant information, i.e. the information strictly necessary to recover the meaning intended by the transmitter or to accomplish a goal. Combining knowledge representation and reasoning tools with machine learning algorithms paves the way to build semantic learning strategies enabling current machine learning algorithms to achieve better interpretation capabilities and contrast adversarial attacks. 6G semantic networks can bring semantic learning mechanisms at the edge of the network and, at the same time, semantic learning can help 6G networks to improve their efficiency and sustainability.
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Beyond Transmitting Bits: Context, Semantics, and Task-Oriented Communications
Deniz Gunduz,Zhijin Qin,Inaki Estella Aguerri,Harpreet S. Dhillon,Zhaohui Yang,Aylin Yener,Kai-Kit Wong,Chan-Byoung Chae +7 more
TL;DR: This tutorial summarizes the efforts to date, starting from its early adaptations, semantic-aware and task-oriented communications, covering the foundations, algorithms and potential implementations, and focuses on approaches that utilize information theory to provide the foundations.
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Semantic Communications for Future Internet: Fundamentals, Applications, and Challenges
Wan Qing Yang,Hongyang Du,Zi Qin Liew,Wei Yang Bryan Lim,Zehui Xiong,Dusit Niyato,Xuefen Chi,Xuemin Sherman Shen,Chunyan Miao +8 more
TL;DR: In this paper , the authors provide a holistic review of SemCom, its applications in 6G networks, and the existing challenges and open issues with insights for further in-depth investigations.
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Security Requirements and Challenges of 6G Technologies and Applications
TL;DR: The paper summarizes the security evolution in legacy mobile networks and concludes with their security problems and the most essential 6G application services and their security requirements.
Effective Communications: A Joint Learning and Communication Framework for Multi-Agent Reinforcement Learning Over Noisy Channels
TL;DR: In this paper, the authors consider a multi-agent partially observable Markov decision process (MA-POMDP), in which the agents, in addition to interacting with the environment, can also communicate with each other over a noisy channel.
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