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2021
DOI: 10.48550/arxiv.2110.01813
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An Efficient Anomaly Detection Approach using Cube Sampling with Streaming Data

Seemandhar Jain,
Prarthi Jain,
Abhishek Srivastava

Abstract: Anomaly detection is critical in various fields, including intrusion detection, health monitoring, fault diagnosis, and sensor network event detection. The isolation forest (or iForest) approach is a well-known technique for detecting anomalies. It is, however, ineffective when dealing with dynamic streaming data, which is becoming increasingly prevalent in a wide variety of application areas these days. In this work, we extend our previous work by proposed an efficient iForest based approach for anomaly detec… Show more

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