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Causal Semantic Communication for Digital Twins: A Generalizable Imitation Learning Approach

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Paper abstractTimelineTable: Further ResourcesReferences
Is a
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Academic paper
1

Academic Paper attributes

arXiv ID
2304.125021
arXiv Classification
Computer science
Computer science
1
Publication URL
arxiv.org/pdf/2304.1...02.pdf1
Publisher
ArXiv
ArXiv
1
DOI
doi.org/10.48550/ar...04.125021
Paid/Free
Free1
Academic Discipline
Machine learning
Machine learning
1
Signal processing
Signal processing
1
Statistics
Statistics
1
Information theory
Information theory
1
Electrical engineering
Electrical engineering
1
Computer science
Computer science
1
Submission Date
April 25, 2023
2
Author Names
Christo Kurisummoottil Thomas1
Walid Saad1
Yong Xiao1
Paper abstract

A digital twin (DT) leverages a virtual representation of the physical world, along with communication (e.g., 6G), computing (e.g., edge computing), and artificial intelligence (AI) technologies to enable many connected intelligence services. In order to handle the large amounts of network data based on digital twins (DTs), wireless systems can exploit the paradigm of semantic communication (SC) for facilitating informed decision-making under strict communication constraints by utilizing AI techniques such as causal reasoning. In this paper, a novel framework called causal semantic communication (CSC) is proposed for DT-based wireless systems. The CSC system is posed as an imitation learning (IL) problem, where the transmitter, with access to optimal network control policies using a DT, teaches the receiver using SC over a bandwidth limited wireless channel how to improve its knowledge to perform optimal control actions. The causal structure in the source data is extracted using novel approaches from the framework of deep end-to-end causal inference, thereby enabling the creation of a semantic representation that is causally invariant, which in turn helps generalize the learned knowledge of the system to unseen scenarios. The CSC decoder at the receiver is designed to extract and estimate semantic information while ensuring high semantic reliability. The receiver control policies, semantic decoder, and causal inference are formulated as a bi-level optimization problem within a variational inference framework. This problem is solved using a novel concept called network state models, inspired from world models in generative AI, that faithfully represents the environment dynamics leading to data generation. Simulation results demonstrate that the proposed CSC system outperforms state-of-the-art SC systems by achieving better semantic reliability and reduced semantic representation.

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