Litcius/Paper detail

Sparse regression for large data sets with outliers

Lea Bottmer, Christophe Croux, Ines Wilms

2021European Journal of Operational Research34 citationsDOIOpen Access PDF

Abstract

The linear regression model remains an important workhorse for data scientists. However, many data sets contain many more predictors than observations. Besides, outliers, or anomalies, frequently occur. This paper proposes an algorithm for regression analysis that addresses these features typical for big data sets, which we call “sparse shooting S”. The resulting regression coefficients are sparse, meaning that many of them are set to zero, hereby selecting the most relevant predictors. A distinct feature of the method is its robustness with respect to outliers in the cells of the data matrix. The excellent performance of this robust variable selection and prediction method is shown in a simulation study. A real data application on car fuel consumption demonstrates its usefulness.

Topics & Concepts

OutlierComputer scienceFeature selectionRobustness (evolution)RegressionRegression analysisData miningData setLinear regressionRobust regressionArtificial intelligencePattern recognition (psychology)Machine learningMathematicsStatisticsGeneBiochemistryChemistryAdvanced Statistical Methods and ModelsStatistical Methods and InferenceAdvanced Statistical Process Monitoring