From the identification of a drawback in the Isolation Forest (IF) algorithm that limits its use in the scope of anomaly detection, we propose two extensions that allow to firstly overcome the previously mention limitation and secondly to provide it with some supervised learning capability. The resulting Hybrid Isolation Forest (HIF) that we propose is first evaluated on a synthetic dataset to analyze the effect of the new meta-parameters that are introduced and verify that the addressed limitation of the IF algorithm is effectively overcame. We hen compare the two algorithms on the ISCX benchmark dataset, in the context of a network intrusion detection application. Our experiments show that HIF outperforms IF, but also challenges the 1-cla...
Anomalies are data points that are few and different. As a result of these properties, we show that,...
Anomalies are instances that do not conform to the norm of a dataset. They are often indicators of i...
The first successful isolation-based anomaly detector, ie, iForest, uses trees as a means to perform...
From the identification of a drawback in the Isolation Forest (IF) algorithm that limits its use in ...
International audienceIn this paper, we propose DiFF-RF, an ensemble approach composed of random par...
Anomalies are data points that are few and different. As a result of these properties, we show that,...
This letter introduces a generalization of Isolation Forest (IF) based on the existing Extended IF (...
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...
International audienceIn this paper, we propose DiFF-RF, an ensemble approach composed of random par...
Unsupervised anomaly detection tackles the problem of finding anomalies inside datasets without the ...
Unsupervised anomaly detection tackles the problem of finding anomalies inside datasets without the ...
Most existing model-based approaches to anomaly detection construct a profile of normal instances, t...
Isolation forest (iForest) has been emerging as arguably the most popular anomaly detector in recent...
International audienceThis letter introduces a generalization of Isolation Forest (IF) based on the ...
Anomalies are data points that are few and different. As a result of these properties, we show that,...
Anomalies are instances that do not conform to the norm of a dataset. They are often indicators of i...
The first successful isolation-based anomaly detector, ie, iForest, uses trees as a means to perform...
From the identification of a drawback in the Isolation Forest (IF) algorithm that limits its use in ...
International audienceIn this paper, we propose DiFF-RF, an ensemble approach composed of random par...
Anomalies are data points that are few and different. As a result of these properties, we show that,...
This letter introduces a generalization of Isolation Forest (IF) based on the existing Extended IF (...
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...
International audienceIn this paper, we propose DiFF-RF, an ensemble approach composed of random par...
Unsupervised anomaly detection tackles the problem of finding anomalies inside datasets without the ...
Unsupervised anomaly detection tackles the problem of finding anomalies inside datasets without the ...
Most existing model-based approaches to anomaly detection construct a profile of normal instances, t...
Isolation forest (iForest) has been emerging as arguably the most popular anomaly detector in recent...
International audienceThis letter introduces a generalization of Isolation Forest (IF) based on the ...
Anomalies are data points that are few and different. As a result of these properties, we show that,...
Anomalies are instances that do not conform to the norm of a dataset. They are often indicators of i...
The first successful isolation-based anomaly detector, ie, iForest, uses trees as a means to perform...