The problem of detecting “atypical objects ” or “outliers ” is one of the classical topics in (robust) statistics. Recently, it has been proposed to address this problem by means of one-class SVM classifiers. The main conceptual shortcoming of most one-class approaches, however, is that in a strict sense they are unable to detect outliers, since the expected fraction of outliers has to be specified in advance. The method presented in this paper overcomes this problem by relating kernelized one-class classifica-tion to Gaussian density estimation in the induced feature space. Having established this relation, it is possible to identify “atypical objects ” by quantifying their deviations from the Gaussian model. For RBF kernels it is shown th...
In this paper, I compared 6 semi-supervised point outlier detection algorithms: LOF, robust PCA, aut...
This paper aims at characterizing classification problems to find the main features that determine t...
Outlier detection, i.e., the task of detecting points that are markedly different from the data samp...
The problem of detecting “atypical objects ” or “outliers ” is one of the classical topics in (robus...
Theproblemof detecting atypical objects or outliers is one of the classical topics in (robust) stati...
In one-class classification, one class of data, called the target class, has to be distinguished fr...
This thesis describes novel approaches to the problem of outlier detection. It is one of the most im...
It has been shown that unsupervised outlier detection methods can be adapted to the one-class classi...
One-class classification has important applications such as outlier and novelty detection. It is com...
Outlier detection is an important task in data mining because outliers can be either useful knowledg...
University of Technology, Sydney. Faculty of Engineering and Information Technology.NO FULL TEXT AVA...
We analyse the interplay of density estimation and outlier detection in density-based outlier detect...
In one-class classification one tries to describe a class of target data and to distinguish it from ...
The support vector machine is a machine learning algorithm which has been successfully applied to so...
Outlier detection is an important problem that has been studied within diverse research areas and ap...
In this paper, I compared 6 semi-supervised point outlier detection algorithms: LOF, robust PCA, aut...
This paper aims at characterizing classification problems to find the main features that determine t...
Outlier detection, i.e., the task of detecting points that are markedly different from the data samp...
The problem of detecting “atypical objects ” or “outliers ” is one of the classical topics in (robus...
Theproblemof detecting atypical objects or outliers is one of the classical topics in (robust) stati...
In one-class classification, one class of data, called the target class, has to be distinguished fr...
This thesis describes novel approaches to the problem of outlier detection. It is one of the most im...
It has been shown that unsupervised outlier detection methods can be adapted to the one-class classi...
One-class classification has important applications such as outlier and novelty detection. It is com...
Outlier detection is an important task in data mining because outliers can be either useful knowledg...
University of Technology, Sydney. Faculty of Engineering and Information Technology.NO FULL TEXT AVA...
We analyse the interplay of density estimation and outlier detection in density-based outlier detect...
In one-class classification one tries to describe a class of target data and to distinguish it from ...
The support vector machine is a machine learning algorithm which has been successfully applied to so...
Outlier detection is an important problem that has been studied within diverse research areas and ap...
In this paper, I compared 6 semi-supervised point outlier detection algorithms: LOF, robust PCA, aut...
This paper aims at characterizing classification problems to find the main features that determine t...
Outlier detection, i.e., the task of detecting points that are markedly different from the data samp...