Fitting high-dimensional statistical models often requires the use of non-linear parameter estimation procedures. As a consequence, it is generally impossible to obtain an exact characterization of the probability distribution of the parameter estimates. This in turn implies that it is extremely challenging to quantify the uncertainty associated with a certain parameter estimate. Concretely, no commonly accepted procedure exists for computing classical measures of uncertainty and statistical significance as confidence intervals or p-values for these models. We consider here high-dimensional linear regression problem, and propose an efficient algorithm for constructing confidence intervals and p-values. The resulting confidence inter-vals ha...
Quantifying the uncertainty of estimated parameters in high dimensional sparse models gives critical...
In modern research, massive high-dimensional data are frequently generated by advancing technologies...
Confidence sets play a fundamental role in statistical inference. In this paper, we consider confide...
Fitting high-dimensional statistical models often requires the use of non-linear parameter estimatio...
Fitting high-dimensional statistical models often requires the use of non-linear parameter estimatio...
High-dimensional linear models play an important role in the analysis of modern data sets. Although ...
High-dimensional linear models play an important role in the analysis of modern data sets. Although ...
We consider the problem of fitting the parameters of a high-dimensional linear regression model. In ...
We study partially linear single-index models where both model parts may contain high-dimensional va...
Abstract. We present a (selective) review of recent frequentist high-dimensional inference methods f...
The last few decades have seen a spectacular increase in the collection of high-dimensional data. Th...
<p>We propose a methodology for testing linear hypothesis in high-dimensional linear models. The pro...
This thesis considers in the high dimensional setting two canonical testing problems in multivariate...
This dissertation considers the problem of estimation and inference in four high-dimensional models:...
<div><p>Construction of confidence intervals or regions is an important part of statistical inferenc...
Quantifying the uncertainty of estimated parameters in high dimensional sparse models gives critical...
In modern research, massive high-dimensional data are frequently generated by advancing technologies...
Confidence sets play a fundamental role in statistical inference. In this paper, we consider confide...
Fitting high-dimensional statistical models often requires the use of non-linear parameter estimatio...
Fitting high-dimensional statistical models often requires the use of non-linear parameter estimatio...
High-dimensional linear models play an important role in the analysis of modern data sets. Although ...
High-dimensional linear models play an important role in the analysis of modern data sets. Although ...
We consider the problem of fitting the parameters of a high-dimensional linear regression model. In ...
We study partially linear single-index models where both model parts may contain high-dimensional va...
Abstract. We present a (selective) review of recent frequentist high-dimensional inference methods f...
The last few decades have seen a spectacular increase in the collection of high-dimensional data. Th...
<p>We propose a methodology for testing linear hypothesis in high-dimensional linear models. The pro...
This thesis considers in the high dimensional setting two canonical testing problems in multivariate...
This dissertation considers the problem of estimation and inference in four high-dimensional models:...
<div><p>Construction of confidence intervals or regions is an important part of statistical inferenc...
Quantifying the uncertainty of estimated parameters in high dimensional sparse models gives critical...
In modern research, massive high-dimensional data are frequently generated by advancing technologies...
Confidence sets play a fundamental role in statistical inference. In this paper, we consider confide...