MILAAP: Mobile Link Allocation via Attention-based Prediction
Yung-Fu Chen, Anish Arora

TL;DR
This paper introduces MiLAAP, an attention-based machine learning framework that predicts wireless channel occupancy using local observations, eliminating the need for state sharing and improving throughput in mobile interference networks.
Contribution
MiLAAP is the first to apply self-attention mechanisms for local, passive prediction of channel occupancy and node mobility, reducing communication overhead in dynamic wireless networks.
Findings
Achieves nearly 100% prediction accuracy across mobility patterns
Provides zero-shot generalization across different CS sequence periods
Eliminates communication overhead by relying solely on local observations
Abstract
Channel hopping (CS) communication systems must adapt to interference changes in the wireless network and to node mobility for maintaining throughput efficiency. Optimal scheduling requires up-to-date network state information (i.e., of channel occupancy) to select non-overlapping channels for links in interference regions. However, state sharing among nodes introduces significant communication overhead, especially as network size or node mobility scale, thereby decreasing throughput efficiency of already capacity-limited networks. In this paper, we eschew state sharing while adapting the CS schedule based on a learning-based channel occupancy prediction. We propose the MiLAAP attention-based prediction framework for machine learning models of spectral, spatial, and temporal dependencies among network nodes. MiLAAP uses a self-attention mechanism that lets each node capture the…
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Taxonomy
TopicsOpportunistic and Delay-Tolerant Networks · Context-Aware Activity Recognition Systems · IoT Networks and Protocols
