DASVDD: Deep Autoencoding Support Vector Data Descriptor for Anomaly
Detection
- URL: http://arxiv.org/abs/2106.05410v4
- Date: Sat, 20 Jan 2024 20:37:22 GMT
- Title: DASVDD: Deep Autoencoding Support Vector Data Descriptor for Anomaly
Detection
- Authors: Hadi Hojjati, Narges Armanfard
- Abstract summary: Semi-supervised anomaly detection aims to detect anomalies from normal samples using a model that is trained on normal data.
We propose a method, DASVDD, that jointly learns the parameters of an autoencoder while minimizing the volume of an enclosing hyper-sphere on its latent representation.
- Score: 9.19194451963411
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Semi-supervised anomaly detection aims to detect anomalies from normal
samples using a model that is trained on normal data. With recent advancements
in deep learning, researchers have designed efficient deep anomaly detection
methods. Existing works commonly use neural networks to map the data into a
more informative representation and then apply an anomaly detection algorithm.
In this paper, we propose a method, DASVDD, that jointly learns the parameters
of an autoencoder while minimizing the volume of an enclosing hyper-sphere on
its latent representation. We propose an anomaly score which is a combination
of autoencoder's reconstruction error and the distance from the center of the
enclosing hypersphere in the latent representation. Minimizing this anomaly
score aids us in learning the underlying distribution of the normal class
during training. Including the reconstruction error in the anomaly score
ensures that DASVDD does not suffer from the common hypersphere collapse issue
since the DASVDD model does not converge to the trivial solution of mapping all
inputs to a constant point in the latent representation. Experimental
evaluations on several benchmark datasets show that the proposed method
outperforms the commonly used state-of-the-art anomaly detection algorithms
while maintaining robust performance across different anomaly classes.
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