A multivariate outlier detection method for interval data is proposed that makes use of a parametric approach to model the interval data. The trimmed maximum likelihood principle is adapted in order to robustly estimate the model parameters. A simulation study demonstrates the usefulness of the robust estimates for outlier detection, and new diagnostic plots allow gaining deeper insight into the structure of real world interval data.info:eu-repo/semantics/publishedVersio
Outlier detection belongs to the most important tasks in data analysis. The outliers describe the ab...
Multivariate outlier detection is usually based on Mahalanobis distances, by plugging in robust est...
Multivariate outlier detection is usually based on Mahalanobis distances, by plugging in robust est...
Outlier detection has become an important data mining problem in many applications, including custom...
In many application areas, it is important to detect outliers. The traditional engineering approach ...
In many application areas, it is important to detect outliers. Traditional engineering approach to o...
Multivariate outliers are usually identified by means of robust distances. A statistically principl...
In many application areas, it is important to detect outliers. Traditional engineering approach to o...
Abstract. Outlier detection statistics based on two models, the case-deletion model and the mean-shi...
We present a semi-automatic method of outlier detection for continuous, multivariate survey data. In...
Outlier identification is important in many applications of multivariate analysis. Either because th...
This work focuses on the study of interval data, i.e., when the variables’ values are intervals of ...
Multivariate outlier identification requires the choice of reliable cut-off points for the robust di...
In many application areas it is important to detect outliers. Traditional engineering approach to ou...
Outlier identification is important in many applications of multivariate analysis. Either because th...
Outlier detection belongs to the most important tasks in data analysis. The outliers describe the ab...
Multivariate outlier detection is usually based on Mahalanobis distances, by plugging in robust est...
Multivariate outlier detection is usually based on Mahalanobis distances, by plugging in robust est...
Outlier detection has become an important data mining problem in many applications, including custom...
In many application areas, it is important to detect outliers. The traditional engineering approach ...
In many application areas, it is important to detect outliers. Traditional engineering approach to o...
Multivariate outliers are usually identified by means of robust distances. A statistically principl...
In many application areas, it is important to detect outliers. Traditional engineering approach to o...
Abstract. Outlier detection statistics based on two models, the case-deletion model and the mean-shi...
We present a semi-automatic method of outlier detection for continuous, multivariate survey data. In...
Outlier identification is important in many applications of multivariate analysis. Either because th...
This work focuses on the study of interval data, i.e., when the variables’ values are intervals of ...
Multivariate outlier identification requires the choice of reliable cut-off points for the robust di...
In many application areas it is important to detect outliers. Traditional engineering approach to ou...
Outlier identification is important in many applications of multivariate analysis. Either because th...
Outlier detection belongs to the most important tasks in data analysis. The outliers describe the ab...
Multivariate outlier detection is usually based on Mahalanobis distances, by plugging in robust est...
Multivariate outlier detection is usually based on Mahalanobis distances, by plugging in robust est...