Model specification and selection are recurring themes in econometric analysis. Both topics become considerably more complicated in the case of large-dimensional data sets where the set of specification possibilities can become quite large. In the context of linear regression models, penalised regression has become the de facto benchmark technique used to trade off parsimony and .t when the number of possible covariates is large, often much larger than the number of available observations. However, issues such as the choice of a penalty function and tuning parameters associated with the use of penalized regressions remain contentious. In this paper, we provide an alternative approach that considers the statistical significance of the indivi...
International audienceWe provide in this paper a fully adaptive penalized procedure to select a cova...
Several problems arise when attempting to use traditional predictive modeling techniques on ‘big dat...
Large datasets are more and more common in many research fields. In particular, in the linear regres...
Model specification and selection are recurring themes in econometric analysis. Both topics become c...
Big Data poses a new challenge to statistical data analysis. An enormous growth of available data an...
This paper proposes a one-covariate-at-a-time multiple testing (OCMT) approach to choose significant...
In the era of big data, analysts usually explore various statistical models or machine-learning meth...
Big Data offer potential benefits for statistical modelling, but confront problems including an exce...
This dissertation develops methodologies for analysis of big data and its related theoretical proper...
Big Data offer potential benefits for statistical modelling, but confront problems including an exce...
Variable selection is an important step in statistical analysis. When the number of potential predic...
This paper is concerned with variable selection in linear high-dimensional framework when the set of...
Big Data offer potential benefits for statistical modelling, but confront problems including an exce...
Big datasets are becoming more prevalent in modern statistics. This poses a major challenge for stat...
Multivariate analysis is a common statistical tool for assessing covariate effects when only one re...
International audienceWe provide in this paper a fully adaptive penalized procedure to select a cova...
Several problems arise when attempting to use traditional predictive modeling techniques on ‘big dat...
Large datasets are more and more common in many research fields. In particular, in the linear regres...
Model specification and selection are recurring themes in econometric analysis. Both topics become c...
Big Data poses a new challenge to statistical data analysis. An enormous growth of available data an...
This paper proposes a one-covariate-at-a-time multiple testing (OCMT) approach to choose significant...
In the era of big data, analysts usually explore various statistical models or machine-learning meth...
Big Data offer potential benefits for statistical modelling, but confront problems including an exce...
This dissertation develops methodologies for analysis of big data and its related theoretical proper...
Big Data offer potential benefits for statistical modelling, but confront problems including an exce...
Variable selection is an important step in statistical analysis. When the number of potential predic...
This paper is concerned with variable selection in linear high-dimensional framework when the set of...
Big Data offer potential benefits for statistical modelling, but confront problems including an exce...
Big datasets are becoming more prevalent in modern statistics. This poses a major challenge for stat...
Multivariate analysis is a common statistical tool for assessing covariate effects when only one re...
International audienceWe provide in this paper a fully adaptive penalized procedure to select a cova...
Several problems arise when attempting to use traditional predictive modeling techniques on ‘big dat...
Large datasets are more and more common in many research fields. In particular, in the linear regres...