Support Vector Regression (SVR) is gaining in popularity in the detection of outliers and classification problems in high-dimensional data (HDD) as this technique does not require the data to be of full rank. In real application, most of the data are of high dimensional. Classification of high-dimensional data is needed in applied sciences, in particular, as it is important to discriminate cancerous cells from non-cancerous cells. It is also imperative that outliers are identified before constructing a model on the relationship between the dependent and independent variables to avoid misleading interpretations about the fitting of a model. The standard SVR and the μ-ε-SVR are able to detect outliers; however, they are computationally expens...
The outlier detection problem has important applications in the eld of fraud detection, netw ork rob...
Abstract. The problem of outlier detection consists in finding data that is not representative of th...
Abstract—In this paper a novel Support vector clustering(SVC) method for outlier detection is propos...
Support Vector Regression (SVR) is gaining in popularity in the detection of outliers and classifica...
Support Vector Regression (SVR) is gaining in popularity in the detection of outliers and classifica...
The ordinary least squares (OLS) is reported as the most commonly used method to estimate the relati...
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...
Présentation oraleThe problem of outlier detection consists in finding data that is not representati...
High dimensional data and the presence of outliers in data each pose a serious challenge in supervis...
Standard statistical techniques such as least squares regression are very accurate if the underlying...
The outlier detection problem has important applications in the eld of fraud detection, network robu...
In statistics and data science, outliers are data points that differ greatly from other observations...
The outlier detection problem has important applications in the eld of fraud detection, netw ork rob...
Abstract. The problem of outlier detection consists in finding data that is not representative of th...
Abstract—In this paper a novel Support vector clustering(SVC) method for outlier detection is propos...
Support Vector Regression (SVR) is gaining in popularity in the detection of outliers and classifica...
Support Vector Regression (SVR) is gaining in popularity in the detection of outliers and classifica...
The ordinary least squares (OLS) is reported as the most commonly used method to estimate the relati...
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...
Présentation oraleThe problem of outlier detection consists in finding data that is not representati...
High dimensional data and the presence of outliers in data each pose a serious challenge in supervis...
Standard statistical techniques such as least squares regression are very accurate if the underlying...
The outlier detection problem has important applications in the eld of fraud detection, network robu...
In statistics and data science, outliers are data points that differ greatly from other observations...
The outlier detection problem has important applications in the eld of fraud detection, netw ork rob...
Abstract. The problem of outlier detection consists in finding data that is not representative of th...
Abstract—In this paper a novel Support vector clustering(SVC) method for outlier detection is propos...