This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with self-organizing networks. The goal of this project is to evaluate several self-organizing networks in the detection of anomalies/novelties in dynamic data patterns. For this purpose, we first describe three standard clustering-based approaches which uses well-known self-organizing neural architectures, such as the SOM and the Fuzzy ART algorithms, and then present a novel approach based on the Operator Map (OPM) network. The OPM is a generalization of the SOM where neurons are regarded as temporal filters for dynamic patters. The OPM is used to build local adaptive filters for a given nonstationary time series. Non-parametric confidence interva...
International audienceWe present a deep self-supervised method for anomaly detection on time series....
International audienceAnomaly detection has been becoming an important problem in several domains. I...
Anomaly detection in user access patterns using artificial neural networks is a novel way of combati...
This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with se...
This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with se...
This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with se...
With the growing complexity of dynamic control systems, the effective diagnosis of all possible fail...
With the growing complexity of dynamic control systems, the effective diagnosis of all possible fail...
AbstractSelf-Organizing Maps (SOMs) are among the most well-known, unsupervised neural network appro...
International audienceWe present a deep self-supervised method for anomaly detection on time series....
International audienceWe present a deep self-supervised method for anomaly detection on time series....
International audienceWe present a deep self-supervised method for anomaly detection on time series....
International audienceWe present a deep self-supervised method for anomaly detection on time series....
International audienceWe present a deep self-supervised method for anomaly detection on time series....
International audienceWe present a deep self-supervised method for anomaly detection on time series....
International audienceWe present a deep self-supervised method for anomaly detection on time series....
International audienceAnomaly detection has been becoming an important problem in several domains. I...
Anomaly detection in user access patterns using artificial neural networks is a novel way of combati...
This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with se...
This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with se...
This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with se...
With the growing complexity of dynamic control systems, the effective diagnosis of all possible fail...
With the growing complexity of dynamic control systems, the effective diagnosis of all possible fail...
AbstractSelf-Organizing Maps (SOMs) are among the most well-known, unsupervised neural network appro...
International audienceWe present a deep self-supervised method for anomaly detection on time series....
International audienceWe present a deep self-supervised method for anomaly detection on time series....
International audienceWe present a deep self-supervised method for anomaly detection on time series....
International audienceWe present a deep self-supervised method for anomaly detection on time series....
International audienceWe present a deep self-supervised method for anomaly detection on time series....
International audienceWe present a deep self-supervised method for anomaly detection on time series....
International audienceWe present a deep self-supervised method for anomaly detection on time series....
International audienceAnomaly detection has been becoming an important problem in several domains. I...
Anomaly detection in user access patterns using artificial neural networks is a novel way of combati...