In sparse high-dimensional data, the selection of a model can lead to an overestimation of the number of nonzero variables. Indeed, the use of an norm constraint while minimising the sum of squared residuals tempers the effects of false positives, thus they are more likely to be included in the model. On the other hand, an regularisation is a non-convex problem and finding its solution is a combinatorial challenge which becomes unfeasible for more than 50 variables. To overcome this situation, one can perform selection via an penalisation but estimate the selected components without shrinkage. This leads to an additional bias in the optimisation of an information criterion over the model size. Used as a stopping rule, this IC must be modifi...
Understanding high-dimensional data has become essential for practitioners across many disciplines. ...
We study the problem of exact support recovery for high-dimensional sparse linear regression when th...
The quest for a good estimator of a certain focus or target is present regardless of the dimensional...
Given n noisy samples with p dimensions, where n ≪ p, we show that the multi-step thresholding proce...
We congratulate Professors Fan and Lv for a thought-provoking paper, which provides us deep understa...
2015-04-08This dissertation addresses two challenging problems with respect to feature selection in ...
Abstract The optimization of an information criterion in a variable selection procedure leads to an ...
In high-dimensional data settings where p » n, many penalized regularization approaches were studied...
AbstractAn exhaustive search as required for traditional variable selection methods is impractical i...
We review variable selection and variable screening in high-dimensional linear models. Thereby, a ma...
Abstract: High dimensional data are nowadays encountered in various branches of science. Variable se...
Due to the increasing availability of data sets with a large number of variables, sparse model estim...
International audienceMotivation: In some prediction analyses, predictors have a natural grouping st...
The performances of penalized least squares approaches profoundly depend on the selection of the tun...
In a wide range of applications, datasets are generated for which the number of variables p exceeds ...
Understanding high-dimensional data has become essential for practitioners across many disciplines. ...
We study the problem of exact support recovery for high-dimensional sparse linear regression when th...
The quest for a good estimator of a certain focus or target is present regardless of the dimensional...
Given n noisy samples with p dimensions, where n ≪ p, we show that the multi-step thresholding proce...
We congratulate Professors Fan and Lv for a thought-provoking paper, which provides us deep understa...
2015-04-08This dissertation addresses two challenging problems with respect to feature selection in ...
Abstract The optimization of an information criterion in a variable selection procedure leads to an ...
In high-dimensional data settings where p » n, many penalized regularization approaches were studied...
AbstractAn exhaustive search as required for traditional variable selection methods is impractical i...
We review variable selection and variable screening in high-dimensional linear models. Thereby, a ma...
Abstract: High dimensional data are nowadays encountered in various branches of science. Variable se...
Due to the increasing availability of data sets with a large number of variables, sparse model estim...
International audienceMotivation: In some prediction analyses, predictors have a natural grouping st...
The performances of penalized least squares approaches profoundly depend on the selection of the tun...
In a wide range of applications, datasets are generated for which the number of variables p exceeds ...
Understanding high-dimensional data has become essential for practitioners across many disciplines. ...
We study the problem of exact support recovery for high-dimensional sparse linear regression when th...
The quest for a good estimator of a certain focus or target is present regardless of the dimensional...