We propose a framework for constructing goodness-of-fit tests in both low and high dimensional linear models. We advocate applying regression methods to the scaled residuals following either an ordinary least squares or lasso fit to the data, and using some proxy for prediction error as the final test statistic. We call this family residual prediction tests. We show that simulation can be used to obtain the critical values for such tests in the low dimensional setting and demonstrate using both theoretical results and extensive numerical studies that some form of the parametric bootstrap can do the same when the high dimensional linear model is under consideration.We show that residual prediction tests can be used to test for significance o...
We introduce a simple diagnostic test for assessing the overall or partial goodness of fit of a line...
We consider testing regression coefficients in high dimensional generalized linear models. By modify...
Linear models are statistical models that are linear in their parameters. This class of models incl...
We propose a family of tests to assess the goodness-of-fit of a high-dimensional generalized linear ...
<p>We propose a methodology for testing linear hypothesis in high-dimensional linear models. The pro...
Several new tests are proposed for examining the adequacy of a family of parametric models against l...
International audienceLet (Y,(Xi )1≤i≤p) be a real zero mean Gaussian vector and V be a subset of {1...
This paper is concerned with testing linear hypotheses in high dimensional generalized linear models...
Generalized Linear Latent Variables Models (GLLVM) enable the modeling of relationships between mani...
The residuals obtained from tting a structural equation model are crucial ingredients in obtaining ...
[[abstract]]In generalized linear models, the score function can be viewed as an inner product of r...
International audienceThe objective is to construct a tool to test the validity of a regression mode...
Generalized Linear Latent Variables Models (GLLVM) enable the modelling of relationships between man...
Abstract. Factor models appear in many areas, such as economics or signal processing. If the factors...
Goodness-of-fit is a very important concept in data analysis, as most statistical models make some u...
We introduce a simple diagnostic test for assessing the overall or partial goodness of fit of a line...
We consider testing regression coefficients in high dimensional generalized linear models. By modify...
Linear models are statistical models that are linear in their parameters. This class of models incl...
We propose a family of tests to assess the goodness-of-fit of a high-dimensional generalized linear ...
<p>We propose a methodology for testing linear hypothesis in high-dimensional linear models. The pro...
Several new tests are proposed for examining the adequacy of a family of parametric models against l...
International audienceLet (Y,(Xi )1≤i≤p) be a real zero mean Gaussian vector and V be a subset of {1...
This paper is concerned with testing linear hypotheses in high dimensional generalized linear models...
Generalized Linear Latent Variables Models (GLLVM) enable the modeling of relationships between mani...
The residuals obtained from tting a structural equation model are crucial ingredients in obtaining ...
[[abstract]]In generalized linear models, the score function can be viewed as an inner product of r...
International audienceThe objective is to construct a tool to test the validity of a regression mode...
Generalized Linear Latent Variables Models (GLLVM) enable the modelling of relationships between man...
Abstract. Factor models appear in many areas, such as economics or signal processing. If the factors...
Goodness-of-fit is a very important concept in data analysis, as most statistical models make some u...
We introduce a simple diagnostic test for assessing the overall or partial goodness of fit of a line...
We consider testing regression coefficients in high dimensional generalized linear models. By modify...
Linear models are statistical models that are linear in their parameters. This class of models incl...