In a high-dimensional linear regression model, we propose a new procedure for testing statistical significance of a subset of regression coefficients. Specifically, we employ the partial covariances between the response variable and the tested covariates to obtain a test statistic. The resulting test is applicable even if the predictor dimension is much larger than the sample size. Under the null hypothesis, together with boundedness and moment conditions on the predictors, we show that the proposed test statistic is asymptotically standard normal, which is further supported by Monte Carlo experiments. A similar test can be extended to generalized linear models. The practical usefulness of the test is illustrated via an empirical example on...
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:...
A simple statistic is proposed for testing the equality of the covariance matrices of several multiv...
We consider here the problem of testing the effect of a subset of predictors for a regression model ...
We consider testing regression coefficients in high dimensional generalized linear models. By modify...
We develop a powerful quadratic test for the overall significance of many covariates in a dense regr...
<p>We propose a methodology for testing linear hypothesis in high-dimensional linear models. The pro...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
We consider testing regression coefficients in high dimensional generalized linear models. By modify...
Test statistics for sphericity and identity of the covariance matrix are presented, when the data ar...
International audienceWe consider testing the significance of a subset of covariates in a nonparamet...
We propose simultaneous tests for coefficients in high-dimensional linear regression models with fac...
We consider testing the significance of a subset of covariates in a nonparamet- ric regression. Thes...
A test for proportionality of two covariance matrices with large dimension, possibly larger than the...
We propose two tests for the equality of covariance matrices between two high-dimensional population...
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:...
A simple statistic is proposed for testing the equality of the covariance matrices of several multiv...
We consider here the problem of testing the effect of a subset of predictors for a regression model ...
We consider testing regression coefficients in high dimensional generalized linear models. By modify...
We develop a powerful quadratic test for the overall significance of many covariates in a dense regr...
<p>We propose a methodology for testing linear hypothesis in high-dimensional linear models. The pro...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
We consider testing regression coefficients in high dimensional generalized linear models. By modify...
Test statistics for sphericity and identity of the covariance matrix are presented, when the data ar...
International audienceWe consider testing the significance of a subset of covariates in a nonparamet...
We propose simultaneous tests for coefficients in high-dimensional linear regression models with fac...
We consider testing the significance of a subset of covariates in a nonparamet- ric regression. Thes...
A test for proportionality of two covariance matrices with large dimension, possibly larger than the...
We propose two tests for the equality of covariance matrices between two high-dimensional population...
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:...
A simple statistic is proposed for testing the equality of the covariance matrices of several multiv...