Targeted collapse regularized autoencoder for anomaly detection: black hole at the center
Amin Ghafourian, Huanyi Shui, Devesh Upadhyay, Rajesh Gupta, Dimitar, Filev, Iman Soltani Bozchalooi

TL;DR
This paper introduces a simple, regularized autoencoder method that improves anomaly detection by controlling latent space norms, outperforming complex models and enhancing interpretability across various data types.
Contribution
The authors propose a lightweight regularization technique for autoencoders that enhances anomaly detection without complex modifications or extensive hyperparameter tuning.
Findings
Outperforms complex anomaly detection methods on multiple benchmarks.
Simplifies autoencoder training with minimal hyperparameter tuning.
Provides theoretical insights into the training process and anomaly detection mechanism.
Abstract
Autoencoders have been extensively used in the development of recent anomaly detection techniques. The premise of their application is based on the notion that after training the autoencoder on normal training data, anomalous inputs will exhibit a significant reconstruction error. Consequently, this enables a clear differentiation between normal and anomalous samples. In practice, however, it is observed that autoencoders can generalize beyond the normal class and achieve a small reconstruction error on some of the anomalous samples. To improve the performance, various techniques propose additional components and more sophisticated training procedures. In this work, we propose a remarkably straightforward alternative: instead of adding neural network components, involved computations, and cumbersome training, we complement the reconstruction loss with a computationally light term that…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Adversarial Robustness in Machine Learning · Network Security and Intrusion Detection
Methodsfail
