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Contextual Anomaly Detection Framework For Big Sensor Data, Michael Hayes, Miriam A M Capretz
Contextual Anomaly Detection Framework For Big Sensor Data, Michael Hayes, Miriam A M Capretz
Miriam A M Capretz
The ability to detect and process anomalies for Big Data in real-time is a difficult task. The volume and velocity of the data within many systems makes it difficult for typical algorithms to scale and retain their real-time characteristics. The pervasiveness of data combined with the problem that many existing algorithms only consider the content of the data source; e.g. a sensor reading itself without concern for its context, leaves room for potential improvement. The proposed work defines a contextual anomaly detection framework. It is composed of two distinct steps: content detection and context detection. The content detector is used …