Anomaly or outlier detection is a major challenge in big data analytics because anomaly patterns provide valuable insights for decision-making in a wide range of applications. Recently proposed anomaly detection methods based on the tree isolation mechanism are very fast due to their logarithmic time complexity, making them capable of handling big data sets efficiently. However, the underlying similarity or distance measures in these methods have not been well understood. Contrary to the claims that these methods never rely on any distance measure, we find that they have close relationships with certain distance measures. This implies that the current use of this fast isolation mechanism is only limited to these distance measures and fails ...
International audienceIn this paper, we propose DiFF-RF, an ensemble approach composed of random par...
Detecting anomalies in data sets has been one of the most studied issues in modern data analysis. Th...
International audienceIn this paper, we propose DiFF-RF, an ensemble approach composed of random par...
The first successful isolation-based anomaly detector, ie, iForest, uses trees as a means to perform...
This paper presents iNNE (isolation using Nearest Neighbour Ensemble), an efficient nearest neighbou...
Anomalies are data points that are few and different. As a result of these properties, we show that,...
Anomaly detection is the process of discovering unusual data patterns that are different from the ma...
Most existing model-based approaches to anomaly detection construct a profile of normal instances, t...
Multiple multi-dimensional data streams are ubiquitous in the modern world, such as IoT applications...
Multiple multi-dimensional data streams are ubiquitous in the modern world, such as IoT applications...
Multiple multi-dimensional data streams are ubiquitous in the modern world, such as IoT applications...
© 2019 IEEE. Multiple multi-dimensional data streams are ubiquitous in the modern world, such as IoT...
Multiple multi-dimensional data streams are ubiquitous in the modern world, such as IoT applications...
In this paper, the mathematical analysis of the Isolation Random Forest Method (IRF Method) for anom...
International audienceIn this paper, we propose DiFF-RF, an ensemble approach composed of random par...
International audienceIn this paper, we propose DiFF-RF, an ensemble approach composed of random par...
Detecting anomalies in data sets has been one of the most studied issues in modern data analysis. Th...
International audienceIn this paper, we propose DiFF-RF, an ensemble approach composed of random par...
The first successful isolation-based anomaly detector, ie, iForest, uses trees as a means to perform...
This paper presents iNNE (isolation using Nearest Neighbour Ensemble), an efficient nearest neighbou...
Anomalies are data points that are few and different. As a result of these properties, we show that,...
Anomaly detection is the process of discovering unusual data patterns that are different from the ma...
Most existing model-based approaches to anomaly detection construct a profile of normal instances, t...
Multiple multi-dimensional data streams are ubiquitous in the modern world, such as IoT applications...
Multiple multi-dimensional data streams are ubiquitous in the modern world, such as IoT applications...
Multiple multi-dimensional data streams are ubiquitous in the modern world, such as IoT applications...
© 2019 IEEE. Multiple multi-dimensional data streams are ubiquitous in the modern world, such as IoT...
Multiple multi-dimensional data streams are ubiquitous in the modern world, such as IoT applications...
In this paper, the mathematical analysis of the Isolation Random Forest Method (IRF Method) for anom...
International audienceIn this paper, we propose DiFF-RF, an ensemble approach composed of random par...
International audienceIn this paper, we propose DiFF-RF, an ensemble approach composed of random par...
Detecting anomalies in data sets has been one of the most studied issues in modern data analysis. Th...
International audienceIn this paper, we propose DiFF-RF, an ensemble approach composed of random par...