This paper reviews predictive inference and feature selection for generalized linear models with scarce but high-dimensional data. We demonstrate that in many cases one can benefit from a decision theoretically justified two-stage approach: first, construct a possibly non-sparse model that predicts well, and then find a minimal subset of features that characterize the predictions. The model built in the first step is referred to as the reference model and the operation during the latter step as predictive projection. The key characteristic of this approach is that it finds an excellent tradeoff between sparsity and predictive accuracy, and the gain comes from utilizing all available information including prior and that coming from the left ...
Abstract. We consider Bayesian model selection in generalized linear models that are high-dimensiona...
In high-dimensional regression problems, a key aim is to identify a sparse model that fits the data...
The selection of features that are relevant for a prediction or classification problem is an importa...
Projection predictive inference is a decision theoretic Bayesian approach that decouples model estim...
This article develops a framework for testing general hypothesis in high-dimensional models where th...
Several statistical problems can be described as estimation problem, where the goal is to learn a se...
In many practical scenarios, prediction for high-dimensional observations can be accurately performe...
High-dimensional data are widely encountered in a great variety of areas such as bioinformatics, med...
In many applications, like function approximation, pattern recognition, time series prediction, and ...
Abstract—Learning sparse structures in high dimensions de-fines a combinatorial selection problem of...
<div><p>Recent years have seen active developments of various penalized regression methods, such as ...
This study considers the problem of building a linear prediction model when the number of candidate ...
2015-04-08This dissertation addresses two challenging problems with respect to feature selection in ...
We propose two new procedures based on multiple hypothesis testing for correct support estimation in...
In this paper we derive an efficient algorithm to learn the parameters of structured predictors in g...
Abstract. We consider Bayesian model selection in generalized linear models that are high-dimensiona...
In high-dimensional regression problems, a key aim is to identify a sparse model that fits the data...
The selection of features that are relevant for a prediction or classification problem is an importa...
Projection predictive inference is a decision theoretic Bayesian approach that decouples model estim...
This article develops a framework for testing general hypothesis in high-dimensional models where th...
Several statistical problems can be described as estimation problem, where the goal is to learn a se...
In many practical scenarios, prediction for high-dimensional observations can be accurately performe...
High-dimensional data are widely encountered in a great variety of areas such as bioinformatics, med...
In many applications, like function approximation, pattern recognition, time series prediction, and ...
Abstract—Learning sparse structures in high dimensions de-fines a combinatorial selection problem of...
<div><p>Recent years have seen active developments of various penalized regression methods, such as ...
This study considers the problem of building a linear prediction model when the number of candidate ...
2015-04-08This dissertation addresses two challenging problems with respect to feature selection in ...
We propose two new procedures based on multiple hypothesis testing for correct support estimation in...
In this paper we derive an efficient algorithm to learn the parameters of structured predictors in g...
Abstract. We consider Bayesian model selection in generalized linear models that are high-dimensiona...
In high-dimensional regression problems, a key aim is to identify a sparse model that fits the data...
The selection of features that are relevant for a prediction or classification problem is an importa...