Optimal Classifier for an ML-Assisted Resource Allocation in Wireless Communications

被引:1
作者
Raina, Rashika [1 ]
Simmons, David E. [2 ]
Simmons, Nidhi [1 ]
Yacoub, Michel Daoud [3 ]
机构
[1] Queen's University of Belfast, Centre for Wireless Innovation, Belfast
[2] Dhali Holdings Ltd., Belfast
[3] University of Campinas, School of Electrical and Computer Engineering, Campinas
来源
IEEE Networking Letters | 2024年 / 6卷 / 03期
关键词
Machine learning; optimal classifier; outage loss function; outage prediction; resource allocation;
D O I
10.1109/LNET.2024.3474253
中图分类号
学科分类号
摘要
This letter advances on the outage probability (OP) performance of a machine learning (ML)-assisted single-user multi-resource system. We focus on OP optimality and the trade-off between outage improvement and the mean number of resources scanned until a suitable resource is captured. We first present expressions for the OP of this system, complemented by an outage loss function (OLF) for its minimization. We then derive: (i) the necessary and sufficient properties of an optimal model (OpM) and (ii) expressions for the average number of resources scanned by both OpM and non-OpMs. Here, non-OpMs refer to those trained with the OLF and binary cross entropy (BCE) loss functions. We establish that optimal performance requires a channel that exhibits no time decorrelation properties. For very high decorrelation values, we find that models trained using the OLF and BCE perform similarly. For intermediate (practical) decorrelation values, OLF outperforms BCE, and both approach the OpM as decorrelation tends to zero. Our analysis further reveals that, to be able to capture a suitable resource, models trained with the OLF scan a slightly higher number of resources than the OpM and those trained with BCE. This increase in the mean number of scanned resources is offset by a significant enhancement in the OP as compared to BCE. © 2019 IEEE.
引用
收藏
页码:158 / 162
页数:4
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