Novelty or anomaly detection is a challenging problem in many research disciplines without a general solution. In machine learning, inputs unlike the training data need to be identified. In areas where research involves taking measurements, identifying errant measurements is often necessary and occasionally vital. When monitoring the status of a system, some observations may indicate a potential system failure is occurring or may occur in the near future. The challenge is to identify the anomalous measurements that are usually sparse in comparison to the valid measurements. This paper presents a land-water classification problem as an anomaly detection problem to demonstrate the inability of a classifier to detect anomalies. A second proble...
Anomaly detection has been considered under several extents of prior knowledge. Unsupervised methods...
Anomaly detection is the process of detecting samples in a dataset that are atypical or abnormal. An...
Deep autoencoders provide an effective tool for learning non-linear dimensionality reduction in an u...
Anomaly Detection (AD) is to identify samples that differ from training observations in some way. Th...
The capability of deep learning (DL) techniques for dealing with non-linear, dynamic and correlated ...
Anomaly detection is an important problem that has been well-studied within diverse research areas a...
In this tutorial we aim to present a comprehensive survey of the advances in deep learning technique...
We consider the problem of anomaly detection with a small set of partially labeled anomaly examples ...
Anomaly detection in the industrial sector is an important problem as it is a key component of quali...
Intrusion Detection Systems (IDS) provide substantial measures to protect networks assets. IDSs are ...
Although deep learning has been applied to successfully address many data mining problems, relativel...
To address one of the most challenging industry problems, we develop an enhanced training algorithm ...
University of Minnesota M.S. thesis. May 2019. Major: Computer Science. Advisor: Edward McFowland II...
Anomaly detection is one of the crucial tasks in daily infrastructure operations as it can prevent m...
With recent successes of recurrent neural networks (RNNs) for machine translation, and handwriting r...
Anomaly detection has been considered under several extents of prior knowledge. Unsupervised methods...
Anomaly detection is the process of detecting samples in a dataset that are atypical or abnormal. An...
Deep autoencoders provide an effective tool for learning non-linear dimensionality reduction in an u...
Anomaly Detection (AD) is to identify samples that differ from training observations in some way. Th...
The capability of deep learning (DL) techniques for dealing with non-linear, dynamic and correlated ...
Anomaly detection is an important problem that has been well-studied within diverse research areas a...
In this tutorial we aim to present a comprehensive survey of the advances in deep learning technique...
We consider the problem of anomaly detection with a small set of partially labeled anomaly examples ...
Anomaly detection in the industrial sector is an important problem as it is a key component of quali...
Intrusion Detection Systems (IDS) provide substantial measures to protect networks assets. IDSs are ...
Although deep learning has been applied to successfully address many data mining problems, relativel...
To address one of the most challenging industry problems, we develop an enhanced training algorithm ...
University of Minnesota M.S. thesis. May 2019. Major: Computer Science. Advisor: Edward McFowland II...
Anomaly detection is one of the crucial tasks in daily infrastructure operations as it can prevent m...
With recent successes of recurrent neural networks (RNNs) for machine translation, and handwriting r...
Anomaly detection has been considered under several extents of prior knowledge. Unsupervised methods...
Anomaly detection is the process of detecting samples in a dataset that are atypical or abnormal. An...
Deep autoencoders provide an effective tool for learning non-linear dimensionality reduction in an u...