Anomaly Detection using Capsule Networks for High-dimensional Datasets
Inderjeet Singh, Nandyala Hemachandra

TL;DR
This paper explores the use of capsule networks for anomaly detection in high-dimensional, imbalanced datasets, demonstrating superior performance over baseline models with minimal training epochs.
Contribution
It is the first to analyze capsule networks for anomaly detection in complex high-dimensional data, adapting the architecture for binary classification and showing their effectiveness.
Findings
Capsule networks outperform baseline models in anomaly detection.
Effective with only ten training epochs.
Suitable for complex high-dimensional imbalanced datasets.
Abstract
Anomaly detection is an essential problem in machine learning. Application areas include network security, health care, fraud detection, etc., involving high-dimensional datasets. A typical anomaly detection system always faces the class-imbalance problem in the form of a vast difference in the sample sizes of different classes. They usually have class overlap problems. This study used a capsule network for the anomaly detection task. To the best of our knowledge, this is the first instance where a capsule network is analyzed for the anomaly detection task in a high-dimensional complex data setting. We also handle the related novelty and outlier detection problems. The architecture of the capsule network was suitably modified for a binary classification task. Capsule networks offer a good option for detecting anomalies due to the effect of viewpoint invariance captured in its…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Imbalanced Data Classification Techniques · Network Security and Intrusion Detection
MethodsCapsule Network
