Learning to Broadcast for Ultra-Reliable Communication with Differential Quality of Service via the Conditional Value at Risk
- Authors
- Roy Karasik; Osvaldo Simeone; Jang, Hyeryung; Shlomo Shamai (Shitz)
- Issue Date
- Dec-2022
- Publisher
- IEEE
- Keywords
- Broadcasting/multicasting; Complexity theory; CVaR; Decoding; Fading channels; Layered division multiplexing; LDM; meta-learning; Optimization; Quality of service; Resource management; ultra-reliable communication
- Citation
- IEEE Transactions on Communications, v.70, no.12, pp 8060 - 8074
- Pages
- 15
- Indexed
- SCIE
SCOPUS
- Journal Title
- IEEE Transactions on Communications
- Volume
- 70
- Number
- 12
- Start Page
- 8060
- End Page
- 8074
- URI
- https://scholarworks.dongguk.edu/handle/sw.dongguk/2155
- DOI
- 10.1109/TCOMM.2022.3219118
- ISSN
- 0090-6778
1558-0857
- Abstract
- Broadcast/multicast communication systems are typically designed to optimize the outage rate criterion, which neglects the performance of the fraction of clients with the worst channel conditions. Targeting ultra-reliable communication scenarios, this paper takes a complementary approach by introducing the <italic>conditional value-at-risk</italic> (CVaR) rate as the expected rate of a worst-case fraction of clients. To support differential quality-of-service (QoS) levels in this class of clients, layered division multiplexing (LDM) is applied, which enables decoding at different rates. Focusing on a practical scenario in which the transmitter does not know the fading distribution, layer allocation is optimized based on a dataset sampled offline. The optimality gap caused by the availability of limited data is bounded via a generalization analysis, and the sample complexity is shown to increase as the designated fraction of worst-case clients decreases. Considering this theoretical result, meta-learning is introduced as a means to reduce sample complexity by leveraging data from previous deployments. Numerical experiments demonstrate that LDM improves spectral efficiency even for small datasets; that, for sufficiently large datasets, the proposed mirror-descent-based layer optimization scheme achieves a CVaR rate close to that achieved when the transmitter knows the fading distribution; and that meta-learning can significantly reduce data requirements. IEEE
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Collections - College of Advanced Convergence Engineering > Department of Computer Science and Artificial Intelligence > 1. Journal Articles

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