The pattern recognition and computer vision communities often employ robust methods for model fitting. In particular, high breakdown-point methods such as least median of squares (LMedS) and least trimmed squares (LTS) have often been used in situations where the data are contaminated with outliers. However, though the breakdown point of these methods can be as high as 50% (they can be robust to up to 50% contamination), they can break down at unexpectedly lower percentages when the outliers are clustered. In this paper, we demonstrate the fragility of LMedS and LTS and analyze the reasons that cause the fragility of these methods in the situation when a large percentage of clustered outliers exist in the data. We adapt the concept of “symm...
Non-hierarchical clustering methods are frequently based on the idea of forming groups around 'objec...
Nonparametric methods are widely applicable to statistical learn-ing problems, since they rely on a ...
The problem of fitting a model to noisy data is fundamental to statistics and machine learning. In t...
The pattern recognition and computer vision communities often employ robust methods for model fittin...
When fitting models to data containing multiple structures, such as when fitting surface patches to ...
Abstract. There are several methods for obtaining very robust estimates of regression parameters tha...
Robust distances are mainly used for the purpose of detecting multivariate outliers. The precise def...
Outliers can seriously distort the results of statistical analyses and thus threaten the validity of...
Outliers can seriously distort the results of statistical analyses and thus threaten the validity of...
Partial Least Squares Regression (PLSR) is often used for high dimensional data analysis where the s...
The incorporation of the robust regression methods Least Median Square (LMS) and Least Trimmed Squar...
Given a dataset an outlier can be defined as an observation that it is unlikely to follow the statis...
Standard statistical techniques such as least squares regression are very accurate if the underlying...
Robust methods are needed to fit regression lines when outliers are present. In a clustering framewo...
Robust linear regression is one of the most popular problems in the robust statistics community. It ...
Non-hierarchical clustering methods are frequently based on the idea of forming groups around 'objec...
Nonparametric methods are widely applicable to statistical learn-ing problems, since they rely on a ...
The problem of fitting a model to noisy data is fundamental to statistics and machine learning. In t...
The pattern recognition and computer vision communities often employ robust methods for model fittin...
When fitting models to data containing multiple structures, such as when fitting surface patches to ...
Abstract. There are several methods for obtaining very robust estimates of regression parameters tha...
Robust distances are mainly used for the purpose of detecting multivariate outliers. The precise def...
Outliers can seriously distort the results of statistical analyses and thus threaten the validity of...
Outliers can seriously distort the results of statistical analyses and thus threaten the validity of...
Partial Least Squares Regression (PLSR) is often used for high dimensional data analysis where the s...
The incorporation of the robust regression methods Least Median Square (LMS) and Least Trimmed Squar...
Given a dataset an outlier can be defined as an observation that it is unlikely to follow the statis...
Standard statistical techniques such as least squares regression are very accurate if the underlying...
Robust methods are needed to fit regression lines when outliers are present. In a clustering framewo...
Robust linear regression is one of the most popular problems in the robust statistics community. It ...
Non-hierarchical clustering methods are frequently based on the idea of forming groups around 'objec...
Nonparametric methods are widely applicable to statistical learn-ing problems, since they rely on a ...
The problem of fitting a model to noisy data is fundamental to statistics and machine learning. In t...