The detection of multiple outliers can be interpreted as a model selection problem. Models that can be selected are the null model, which indicates an outlier free set of observations, or a class of alternative models, which contain a set of additional bias parameters. A common way to select the right model is by using a statistical hypothesis test. In geodesy data snooping is most popular. Another approach arises from information theory. Here, the Akaike information criterion (AIC) is used to select an appropriate model for a given set of observations. The AIC is based on the Kullback-Leibler divergence, which describes the discrepancy between the model candidates. Both approaches are discussed and applied to test problems: the fitting of ...
The present paper focuses on the theory of outlier detection in least-squares adjustment. Although t...
WOS: 000285347900002Outliers are abnormal, aberrant or outlying observations in data and can cause d...
Outliers in geodetic networks badly affect all parameters and their variances estimated by least-squ...
The detection of multiple outliers can be interpreted as a model selection problem. Models that can ...
In the last decades many statistical tests based on the least squares solution have been proposed fo...
The concept of outlier detection by statistical hypothesis testing in geodesy is briefly reviewed. T...
Traditional multiple hypothesis testing procedures, such as that of Benjamini and Hochberg, fix an e...
The occurrence of undetected outliers severely disrupts model building procedures and produces unrel...
[EN] Different approaches have been proposed to determine the possible outliers existing in a datase...
One approach to identifying outliers is to assume that the outliers have a different distribution fr...
The method of least squares is the most widely used parameter estimation tool in surveying engineer...
To extract the best possible information from geodetic and geophysical observations, it is necessary...
The thesis consists of six chapters. The introductory first chapter considers some of the more gener...
This article presents a simple and efficient method to detect multiple outliers using a modification...
The so-called 3σ-rule is a simple and widely used heuristic for outlier detection. This term is a ge...
The present paper focuses on the theory of outlier detection in least-squares adjustment. Although t...
WOS: 000285347900002Outliers are abnormal, aberrant or outlying observations in data and can cause d...
Outliers in geodetic networks badly affect all parameters and their variances estimated by least-squ...
The detection of multiple outliers can be interpreted as a model selection problem. Models that can ...
In the last decades many statistical tests based on the least squares solution have been proposed fo...
The concept of outlier detection by statistical hypothesis testing in geodesy is briefly reviewed. T...
Traditional multiple hypothesis testing procedures, such as that of Benjamini and Hochberg, fix an e...
The occurrence of undetected outliers severely disrupts model building procedures and produces unrel...
[EN] Different approaches have been proposed to determine the possible outliers existing in a datase...
One approach to identifying outliers is to assume that the outliers have a different distribution fr...
The method of least squares is the most widely used parameter estimation tool in surveying engineer...
To extract the best possible information from geodetic and geophysical observations, it is necessary...
The thesis consists of six chapters. The introductory first chapter considers some of the more gener...
This article presents a simple and efficient method to detect multiple outliers using a modification...
The so-called 3σ-rule is a simple and widely used heuristic for outlier detection. This term is a ge...
The present paper focuses on the theory of outlier detection in least-squares adjustment. Although t...
WOS: 000285347900002Outliers are abnormal, aberrant or outlying observations in data and can cause d...
Outliers in geodetic networks badly affect all parameters and their variances estimated by least-squ...