Sparse model estimation is a topic of high importance in modern data analysis due to the increasing availability of data sets with a large number of variables. Another common problem in applied statistics is the presence of outliers in the data. This paper combines robust regression and sparse model estimation. A robust and sparse estimator is introduced by adding an L1 penalty on the coefficient estimates to the well known least trimmed squares (LTS) estimator. The breakdown point of this sparse LTS estimator is derived, and a fast algorithm for its computation is proposed. Both the simulation study and the real data example show that the LTS has better prediction performance than its competitors in the presence of leverage points.status: ...
The paper introduces an efficient construction algorithm for obtaining sparse linear-in-the-weights ...
Outliers in the data are a common problem in applied statistics. Estimators that give reliable resul...
Sparse partial robust M regression is introduced as a new regression method. It is the first dimensi...
Sparse model estimation is a topic of high importance in modern data analysis due to the increasing ...
Sparse model estimation is a topic of high importance in modern data analysis due to the increasing ...
Due to the increasing availability of data sets with a large number of variables, sparse model estim...
Algorithms such as Least Median of Squares (LMedS) and Ran-dom Sample Consensus (RANSAC) have been v...
Least trimmed squares (LTS) provides a parametric family of high breakdown estimators in regression ...
Instead of minimizing the sum of all $n$ squared residuals as the classical least squares (LS) does,...
Data mining aims to extract previously unknown patterns or substructures from large databases. In st...
The Least Trimmed Squares (LTS) estimator is a frequently used robust estimator of regression. When ...
An algorithm for computing the exact least trimmed squares (LTS) estimator of the standard regressio...
The linear regression model remains an important workhorse for data scientists. However, many data s...
Parameters of a linear regression model might be estimated with Ordinary Least Squares (OLS). If the...
The paper introduces an efficient construction algorithm for obtaining sparse linear-in-the-weights ...
The paper introduces an efficient construction algorithm for obtaining sparse linear-in-the-weights ...
Outliers in the data are a common problem in applied statistics. Estimators that give reliable resul...
Sparse partial robust M regression is introduced as a new regression method. It is the first dimensi...
Sparse model estimation is a topic of high importance in modern data analysis due to the increasing ...
Sparse model estimation is a topic of high importance in modern data analysis due to the increasing ...
Due to the increasing availability of data sets with a large number of variables, sparse model estim...
Algorithms such as Least Median of Squares (LMedS) and Ran-dom Sample Consensus (RANSAC) have been v...
Least trimmed squares (LTS) provides a parametric family of high breakdown estimators in regression ...
Instead of minimizing the sum of all $n$ squared residuals as the classical least squares (LS) does,...
Data mining aims to extract previously unknown patterns or substructures from large databases. In st...
The Least Trimmed Squares (LTS) estimator is a frequently used robust estimator of regression. When ...
An algorithm for computing the exact least trimmed squares (LTS) estimator of the standard regressio...
The linear regression model remains an important workhorse for data scientists. However, many data s...
Parameters of a linear regression model might be estimated with Ordinary Least Squares (OLS). If the...
The paper introduces an efficient construction algorithm for obtaining sparse linear-in-the-weights ...
The paper introduces an efficient construction algorithm for obtaining sparse linear-in-the-weights ...
Outliers in the data are a common problem in applied statistics. Estimators that give reliable resul...
Sparse partial robust M regression is introduced as a new regression method. It is the first dimensi...