This article develops a framework for testing general hypothesis in high-dimensional models where the number of variables may far exceed the number of observations. Existing literature has considered less than a handful of hypotheses, such as testing individual coordinates of the model parameter. However, the problem of testing general and complex hypotheses remains widely open. We propose a new inference method developed around the hypothesis adaptive projection pursuit framework, which solves the testing problems in the most general case. The proposed inference is centered around a new class of estimators defined as $l_1$ projection of the initial guess of the unknown onto the space defined by the null. This projection automatically takes...
The applications of projection pursuit (PP) to some real data sets are described. Some applications ...
Projection predictive inference is a decision theoretic Bayesian approach that decouples model estim...
Motivated by the prevalence of high dimensional low sample size datasets in mod-ern statistical appl...
This article develops a framework for testing general hypothesis in high-dimensional models where th...
Projection pursuit is a data analytic tool that explores interesting nonlinear structures in multi-d...
This paper reviews predictive inference and feature selection for generalized linear models with sca...
<p>We propose a methodology for testing linear hypothesis in high-dimensional linear models. The pro...
This paper is concerned with testing linear hypotheses in high dimensional generalized linear models...
In this paper, we propose a new fuzzy system architecture based on the idea of projection pursuit. T...
Despite recent advances in statistics, artificial neural network theory, and machine learning, nonli...
Projection pursuit is a multivariate statistical technique aimed at finding interesting data project...
We propose two new procedures based on multiple hypothesis testing for correct support estimation in...
We consider the hypothesis testing problem of detecting a shift between the means of two multivariat...
We consider the hypothesis testing problem of detecting a shift between the means of two mu...
International audienceWe propose two new procedures based on multiple hypothesis testing for correct...
The applications of projection pursuit (PP) to some real data sets are described. Some applications ...
Projection predictive inference is a decision theoretic Bayesian approach that decouples model estim...
Motivated by the prevalence of high dimensional low sample size datasets in mod-ern statistical appl...
This article develops a framework for testing general hypothesis in high-dimensional models where th...
Projection pursuit is a data analytic tool that explores interesting nonlinear structures in multi-d...
This paper reviews predictive inference and feature selection for generalized linear models with sca...
<p>We propose a methodology for testing linear hypothesis in high-dimensional linear models. The pro...
This paper is concerned with testing linear hypotheses in high dimensional generalized linear models...
In this paper, we propose a new fuzzy system architecture based on the idea of projection pursuit. T...
Despite recent advances in statistics, artificial neural network theory, and machine learning, nonli...
Projection pursuit is a multivariate statistical technique aimed at finding interesting data project...
We propose two new procedures based on multiple hypothesis testing for correct support estimation in...
We consider the hypothesis testing problem of detecting a shift between the means of two multivariat...
We consider the hypothesis testing problem of detecting a shift between the means of two mu...
International audienceWe propose two new procedures based on multiple hypothesis testing for correct...
The applications of projection pursuit (PP) to some real data sets are described. Some applications ...
Projection predictive inference is a decision theoretic Bayesian approach that decouples model estim...
Motivated by the prevalence of high dimensional low sample size datasets in mod-ern statistical appl...