AI RESEARCH

Context-Aware Graph Attention for Unsupervised Telco Anomaly Detection

arXiv CS.LG

ArXi:2604.27172v1 Announce Type: new We propose C-MTAD-GAT, an \emph{unsupervised}, \emph{context-aware} graph-attention model for anomaly detection in multivariate time series from mobile networks. C-MTAD-GAT combines graph attention with lightweight context embeddings, and uses a deterministic reconstruction head and multi-step forecaster to produce anomaly scores. Detection thresholds are calibrated \emph{without labels} from validation residuals, keeping the pipeline fully unsupervised.