2022
DOI: 10.48550/arxiv.2201.12900
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OpTopNET: A Learning Optimal Topology Synthesizer for Ad-hoc Robot Networks

Abstract: In this paper, we synthesize a machine-learning stacked ensemble model a vector of which predicts the optimal topology of a robot network. This problem is technically a multi-task classification problem. However, we divide it into a class of multi-class classification problems that can be more efficiently solved. For this purpose, we first compose an algorithm to create ground-truth topologies associated with various configurations of a robot network. This algorithm incorporates a complex collection of nonline… Show more

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