Given a dataset an outlier can be defined as an observation that it is unlikely to follow the statistical properties of the majority of the data. Computation of the location estimate of is fundamental in data analysis, and it is well known in statistics that classical methods, such as taking the sample average, can be greatly affected by the presence of outliers in the data. Using the median instead of the mean can partially resolve this issue but not completely. For the univariate case, a robust version of the median is the Least Trimmed Absolute Deviation (LTAD) robust estimator introduced in [18], which has desirable asymptotic properties such as robustness, consistently, high breakdown and normality. There are different generalizations ...
Robust distances are mainly used for the purpose of detecting multivariate outliers. The precise def...
Consider the problem of estimating the mean function underlying a set of noisy data. Least squares i...
A collection of robust Mahalanobis distances for multivariate outlier detection is proposed, based o...
Given a dataset an outlier can be defined as an observation that does not follow the statistical pro...
Minimization of the L∞ norm, which can be viewed as approximately solving the non-convex least media...
Least absolute deviation (LAD) regression is an important tool used in numerous applications through...
Robust linear regression is one of the most popular problems in the robust statistics community. It ...
High breakdown estimation (HBE) addresses the problem of getting reliable parameter estimates in the...
We present a Distributionally Robust Optimization (DRO) approach to outlier detection in a linear re...
Median in some statistical methods Abstract: This work is focused on utilization of robust propertie...
The pattern recognition and computer vision communities often employ robust methods for model fittin...
We use the forward search to provide robust Mahalanobis distances to detect the presence of outlier...
In this article, we consider a large class of computational problems in robust statistics that can b...
Standard statistical techniques such as least squares regression are very accurate if the underlying...
Before implementing any multivariate statistical analysis based on em- pirical covariance matrices, ...
Robust distances are mainly used for the purpose of detecting multivariate outliers. The precise def...
Consider the problem of estimating the mean function underlying a set of noisy data. Least squares i...
A collection of robust Mahalanobis distances for multivariate outlier detection is proposed, based o...
Given a dataset an outlier can be defined as an observation that does not follow the statistical pro...
Minimization of the L∞ norm, which can be viewed as approximately solving the non-convex least media...
Least absolute deviation (LAD) regression is an important tool used in numerous applications through...
Robust linear regression is one of the most popular problems in the robust statistics community. It ...
High breakdown estimation (HBE) addresses the problem of getting reliable parameter estimates in the...
We present a Distributionally Robust Optimization (DRO) approach to outlier detection in a linear re...
Median in some statistical methods Abstract: This work is focused on utilization of robust propertie...
The pattern recognition and computer vision communities often employ robust methods for model fittin...
We use the forward search to provide robust Mahalanobis distances to detect the presence of outlier...
In this article, we consider a large class of computational problems in robust statistics that can b...
Standard statistical techniques such as least squares regression are very accurate if the underlying...
Before implementing any multivariate statistical analysis based on em- pirical covariance matrices, ...
Robust distances are mainly used for the purpose of detecting multivariate outliers. The precise def...
Consider the problem of estimating the mean function underlying a set of noisy data. Least squares i...
A collection of robust Mahalanobis distances for multivariate outlier detection is proposed, based o...