Webgraph neural networks (gnns) identify time series anomalies by capturing temporal connections and interdependencies between periods, leveraging the underlying graph structure of time series data.

The easiest anomaly to detect is extreme values or outliers that exceed the.

This study investigates using various deep learning models for anomaly detection, recognising aberrant patterns in data, and time series forecasting.

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Webanomaly detection, also known as outlier detection or novelty detection, is the process of detecting those data instances that significantly deviate from most data instances 4.

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