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Network Anomaly Detection using Autoencoder on Various Datasets: AComprehensive Review

Richa Singh, Nidhi Srivastava, Ashwani Kumar

2023Recent Patents on Engineering16 citationsDOI

Abstract

Abstract: The scientific community is currently very concerned about information and communication technology security because any assault or network anomaly can have a remarkable collision on a number of areas, including national security, the storage of private data, social welfare, economic concerns, and more. As a result, many strategies and approaches for this goal have been developed over time, making the anomaly detection domain a large research subject. The primary concern of this study is to review the most crucial elements relating to anomaly detection, including an overview of background analysis and a core study on the most important approaches, procedures, and systems in the field. To make the structure of this survey easier to understand, the domain of anomaly detection was examined along with five dimensions: Detection methods in network traffic, objectives of the paper, various datasets used, accuracy, and open issues/ gaps. The gap which has been identified after the survey can be extended as a future scope might be helpful for the researcher.

Topics & Concepts

Anomaly detectionScope (computer science)Data scienceDomain (mathematical analysis)Computer scienceField (mathematics)Anomaly (physics)Data miningComputer securityPure mathematicsMathematical analysisMathematicsCondensed matter physicsPhysicsProgramming languageNetwork Security and Intrusion DetectionAnomaly Detection Techniques and ApplicationsAdvanced Malware Detection Techniques
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