International audienceIn an industrial context, the activity of sensors is recorded at a high frequency. A challenge is to automatically detect abnormal measurement behavior. Considering the sensor measures as functional data, the problem can be formulated as the detection of outliers in a multivariate functional data set. Due to the heterogeneity of this data set, the proposed contaminated mixture model both clusters the multivariate functional data into homogeneous groups and detects outliers. The main advantage of this procedure over its competitors is that it does not require to specify the proportion of outliers. Model inference is performed through an Expectation-Conditional Maximization algorithm, and the BIC is used to select the nu...
Functional data are occurring more and more often in practice, and various statistical techniques ha...
Outlier detection has been used extensively in data analysis to detect anomalous observation in data...
The paper presents an application of fuzzy logic to the problem of outliers detection. The overall p...
International audienceIn an industrial context, the activity of sensors is recorded at a high freque...
Forward Search methods have been shown to be usefully employed for detecting multiple outliers in co...
International audienceThe increasing ubiquity of multivariate functional data (MFD) requires methods...
Outlier identification is important in many applications of multivariate analysis. Either because th...
We present a semi-automatic method of outlier detection for continuous, multivariate survey data. In...
Multivariate functional anomaly detection has received a large amount of attention recently. Account...
The aim of the paper is to go beyond the detection of outliers in multivariate time series, and to f...
Recent advances of powerful computing and data acquisition technologies have made large complex data...
Functional data are occurring more and more often in practice, and various statistical techniques ha...
We propose a novel procedure for outlier detection in functional data, in a semi-supervised framewor...
The method proposed by Hadi (1994) for multiple outlier detection in a single group of multivariate...
Abstract. Outlier detection statistics based on two models, the case-deletion model and the mean-shi...
Functional data are occurring more and more often in practice, and various statistical techniques ha...
Outlier detection has been used extensively in data analysis to detect anomalous observation in data...
The paper presents an application of fuzzy logic to the problem of outliers detection. The overall p...
International audienceIn an industrial context, the activity of sensors is recorded at a high freque...
Forward Search methods have been shown to be usefully employed for detecting multiple outliers in co...
International audienceThe increasing ubiquity of multivariate functional data (MFD) requires methods...
Outlier identification is important in many applications of multivariate analysis. Either because th...
We present a semi-automatic method of outlier detection for continuous, multivariate survey data. In...
Multivariate functional anomaly detection has received a large amount of attention recently. Account...
The aim of the paper is to go beyond the detection of outliers in multivariate time series, and to f...
Recent advances of powerful computing and data acquisition technologies have made large complex data...
Functional data are occurring more and more often in practice, and various statistical techniques ha...
We propose a novel procedure for outlier detection in functional data, in a semi-supervised framewor...
The method proposed by Hadi (1994) for multiple outlier detection in a single group of multivariate...
Abstract. Outlier detection statistics based on two models, the case-deletion model and the mean-shi...
Functional data are occurring more and more often in practice, and various statistical techniques ha...
Outlier detection has been used extensively in data analysis to detect anomalous observation in data...
The paper presents an application of fuzzy logic to the problem of outliers detection. The overall p...