过去一年中添加的文章,按日期排序

Knowledge-driven deep learning paradigms for wireless network optimization in 6G

R Sun, N Cheng, C Li, F Chen, W Chen - IEEE Network, 2024 - ieeexplore.ieee.org
IEEE Network, 2024ieeexplore.ieee.org
185 天前 - In the sixth-generation (6G) networks, newly emerging diversified services of
massive users in dynamic network environments are required to be satisfied by multi-
dimensional heterogeneous resources. The resulting large-scale complicated network
optimization problems are beyond the capability of model-based theoretical methods due to
the overwhelming computational complexity and the long processing time. Although with fast
online inference and universal approximation ability, data-driven deep learning (DL) heavily …
In the sixth-generation (6G) networks, newly emerging diversified services of massive users in dynamic network environments are required to be satisfied by multi-dimensional heterogeneous resources. The resulting large-scale complicated network optimization problems are beyond the capability of model-based theoretical methods due to the overwhelming computational complexity and the long processing time. Although with fast online inference and universal approximation ability, data-driven deep learning (DL) heavily relies on abundant training data and lacks interpretability. To address these issues, a new paradigm called knowledge-driven DL has emerged, aiming to integrate proven domain knowledge into the construction of neural networks, thereby exploiting the strengths of both methods. This article provides a systematic review of knowledge-driven DL in wireless networks. Specifically, a holistic framework of knowledge-driven DL in wireless networks is proposed, where knowledge sources, knowledge representation, knowledge integration and knowledge application are forming as a closed loop. Then, a detailed taxonomy of knowledge integration approaches, including knowledge-assisted, knowledge-fused, and knowledge-embedded DL, is presented. Several open issues for future research are also discussed. The insights offered in this article provide a basic principle for the design of network optimization that incorporates communication-specific domain knowledge and DL, facilitating the realization of intelligent 6G networks.
ieeexplore.ieee.org