Présentation oraleThe problem of outlier detection consists in finding data that is not representative of the population from which it was ostensibly derived. Recently, to solve this problem, Liu et al. [1] proposed a two steps hypersphere-based approach, taking into account a confidence score pre-calculated for each input data. Defining these scores in a first step, independently from the second one, makes this approach not well-suited for large stream data. To solve these difficulties, we propose a global reformulation of the support vector data description (SVDD) problem based on the L0 norm, well suited for outlier detection. We demonstrate that this L0-SVDD problem can be solved using an iterative procedure providing data specific weig...
This paper presents a novel hybrid approach to outlier detection by incorporating local data uncerta...
Abstract—This paper presents a novel hybrid approach to outlier detection by incorporating local dat...
Outlier detection is an important task in data mining because outliers can be either useful knowledg...
Présentation oraleThe problem of outlier detection consists in finding data that is not representati...
Présentation oraleThe problem of outlier detection consists in finding data that is not representati...
Présentation oraleThe problem of outlier detection consists in finding data that is not representati...
Abstract. The problem of outlier detection consists in finding data that is not representative of th...
Outlier detection is an important problem that has been studied within diverse research areas and ap...
International audienceTo enable post-processing, the output of a support vector data description (SV...
International audienceTo enable post-processing, the output of a support vector data description (SV...
International audienceTo enable post-processing, the output of a support vector data description (SV...
International audienceTo enable post-processing, the output of a support vector data description (SV...
International audienceTo enable post-processing, the output of a support vector data description (SV...
SVDD has been proved a powerful tool for outlier detection. However, in detecting outliers on multi-...
SVDD has been proved a powerful tool for outlier de-tection. However, in detecting outliers on multi...
This paper presents a novel hybrid approach to outlier detection by incorporating local data uncerta...
Abstract—This paper presents a novel hybrid approach to outlier detection by incorporating local dat...
Outlier detection is an important task in data mining because outliers can be either useful knowledg...
Présentation oraleThe problem of outlier detection consists in finding data that is not representati...
Présentation oraleThe problem of outlier detection consists in finding data that is not representati...
Présentation oraleThe problem of outlier detection consists in finding data that is not representati...
Abstract. The problem of outlier detection consists in finding data that is not representative of th...
Outlier detection is an important problem that has been studied within diverse research areas and ap...
International audienceTo enable post-processing, the output of a support vector data description (SV...
International audienceTo enable post-processing, the output of a support vector data description (SV...
International audienceTo enable post-processing, the output of a support vector data description (SV...
International audienceTo enable post-processing, the output of a support vector data description (SV...
International audienceTo enable post-processing, the output of a support vector data description (SV...
SVDD has been proved a powerful tool for outlier detection. However, in detecting outliers on multi-...
SVDD has been proved a powerful tool for outlier de-tection. However, in detecting outliers on multi...
This paper presents a novel hybrid approach to outlier detection by incorporating local data uncerta...
Abstract—This paper presents a novel hybrid approach to outlier detection by incorporating local dat...
Outlier detection is an important task in data mining because outliers can be either useful knowledg...