Leader Selection and Follower Association for UE-centric Distributed Learning in Future Wireless Networks
User equipment (UE) devices with high compute performance acting on data with dynamic and stochastic nature to train Artificial Intelligence/Machine Learning (AI/ML) models call for real-time, agile distributed machine learning (DL) algorithms. Consequently, we focus on UE-centric DL algorithms wher...
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Zusammenfassung: | User equipment (UE) devices with high compute performance acting on data with
dynamic and stochastic nature to train Artificial Intelligence/Machine Learning
(AI/ML) models call for real-time, agile distributed machine learning (DL)
algorithms. Consequently, we focus on UE-centric DL algorithms where UEs
initiate requests to adapt AI/ML models for better performance, e.g., locally
refined AI/ML models among a set of headsets or smartphones. This new setup
requires selecting a set of UEs as aggregators (here called leaders) and
another set as followers, where all UEs update their models based on their
local data, and followers share theirs with leaders for aggregation. From a
networking perspective, the first question is how to select leaders and
associate followers efficiently. This results in a high dimensional mixed
integer programming problem and involves internal UE state information and
state information among UEs, called external state information in this paper.
To address this challenge, we introduce two new indices: a Leader Internal
Index (LII), which is a function of the internal states of each device,
demonstrating the willingness to be a leader such as battery life and
AI/hardware accelerators, and a Leader eXternal Index (LXI), which is a
function of external state information among UEs, such as trust, channel
condition, and any aspect relevant for associating a follower with a leader.
These two indices transform the highly complex leader selection and follower
association problem into a better tractable formulation. More importantly, LIIs
and LXIs allow to keep the internal and external state information of this
problem inside of each device without compromising users' privacy. |
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DOI: | 10.48550/arxiv.2409.18268 |