AI RESEARCH
How the Graph Construction Technique Shapes Performance in IoT Botnet Detection
arXiv CS.LG
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ArXi:2603.06654v1 Announce Type: cross The increasing incidence of IoT-based botnet attacks has driven interest in advanced learning models for detection. Recent efforts have focused on leveraging attention mechanisms to model long-range feature dependencies and Graph Neural Networks (GNNs) to capture relationships between data instances. Since GNNs require graph-structured input, tabular NetFlow data must be transformed accordingly. This study evaluates how the choice of the method for constructing the graph-structured dataset impacts the classification performance of a GNN model.