Reconstruction-based approaches to anomaly detection tend to fall short when applied to complex datasets with target classes that possess high inter-class variance. Similar to the idea of self-taught learning used in transfer learning, many domains are rich with similar unlabeled datasets that could be leveraged as a proxy for out-of-distribution samples. In this paper we introduce the latent-insensitive autoencoder (LIS-AE) where unlabeled data from a similar domain are utilized as negative examples to shape the latent layer (bottleneck) of a regular autoencoder such that it is only capable of reconstructing one task. We provide theoretical justification for the proposed training process and loss functions along with an extensive ablation ...
Network anomaly detection plays a crucial role as it provides an effective mechanism to block or sto...
International audienceAnomaly detection is a standard problem in Machine Learning with various appli...
International audienceAnomaly detection is a standard problem in Machine Learning with various appli...
Autoencoders have become increasingly popular in anomaly detection tasks over the years. Nevertheles...
Autoencoders have become increasingly popular in anomaly detection tasks over the years. Nevertheles...
A common belief in designing deep autoencoders (AEs), a type of unsupervised neural network, is that...
Anomaly detection aims at identifying data points that show systematic deviations from the majority ...
Anomaly detection is the task of recognising novel samples which deviate significantly from pre-esta...
Deep autoencoders provide an effective tool for learning non-linear dimensionality reduction in an u...
Most of the existing methods for anomaly detection use only positive data to learn the data distribu...
In recent years, attacks on network environments continue to rapidly advance and are increasingly in...
To address one of the most challenging industry problems, we develop an enhanced training algorithm ...
We consider the problem of anomaly detection with a small set of partially labeled anomaly examples ...
Network anomaly detection plays a crucial role as it provides an effective mechanism to block or sto...
Network anomaly detection plays a crucial role as it provides an effective mechanism to block or sto...
Network anomaly detection plays a crucial role as it provides an effective mechanism to block or sto...
International audienceAnomaly detection is a standard problem in Machine Learning with various appli...
International audienceAnomaly detection is a standard problem in Machine Learning with various appli...
Autoencoders have become increasingly popular in anomaly detection tasks over the years. Nevertheles...
Autoencoders have become increasingly popular in anomaly detection tasks over the years. Nevertheles...
A common belief in designing deep autoencoders (AEs), a type of unsupervised neural network, is that...
Anomaly detection aims at identifying data points that show systematic deviations from the majority ...
Anomaly detection is the task of recognising novel samples which deviate significantly from pre-esta...
Deep autoencoders provide an effective tool for learning non-linear dimensionality reduction in an u...
Most of the existing methods for anomaly detection use only positive data to learn the data distribu...
In recent years, attacks on network environments continue to rapidly advance and are increasingly in...
To address one of the most challenging industry problems, we develop an enhanced training algorithm ...
We consider the problem of anomaly detection with a small set of partially labeled anomaly examples ...
Network anomaly detection plays a crucial role as it provides an effective mechanism to block or sto...
Network anomaly detection plays a crucial role as it provides an effective mechanism to block or sto...
Network anomaly detection plays a crucial role as it provides an effective mechanism to block or sto...
International audienceAnomaly detection is a standard problem in Machine Learning with various appli...
International audienceAnomaly detection is a standard problem in Machine Learning with various appli...