Deep Generative Model and Its Applications in Efficient Wireless Network
Management: A Tutorial and Case Study
- URL: http://arxiv.org/abs/2303.17114v1
- Date: Thu, 30 Mar 2023 02:59:51 GMT
- Title: Deep Generative Model and Its Applications in Efficient Wireless Network
Management: A Tutorial and Case Study
- Authors: Yinqiu Liu, Hongyang Du, Dusit Niyato, Jiawen Kang, Zehui Xiong, Dong
In Kim, and Abbas Jamalipour
- Abstract summary: Deep generation models (DGMs) have been experiencing explosive growth from 2022.
In this article, we explore the applications of DGMs in improving the efficiency of wireless network management.
- Score: 71.8330148641267
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: With the phenomenal success of diffusion models and ChatGPT, deep generation
models (DGMs) have been experiencing explosive growth from 2022. Not limited to
content generation, DGMs are also widely adopted in Internet of Things,
Metaverse, and digital twin, due to their outstanding ability to represent
complex patterns and generate plausible samples. In this article, we explore
the applications of DGMs in a crucial task, i.e., improving the efficiency of
wireless network management. Specifically, we firstly overview the generative
AI, as well as three representative DGMs. Then, a DGM-empowered framework for
wireless network management is proposed, in which we elaborate the issues of
the conventional network management approaches, why DGMs can address them
efficiently, and the step-by-step workflow for applying DGMs in managing
wireless networks. Moreover, we conduct a case study on network economics,
using the state-of-the-art DGM model, i.e., diffusion model, to generate
effective contracts for incentivizing the mobile AI-Generated Content (AIGC)
services. Last but not least, we discuss important open directions for the
further research.
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