One of the most common problems in machine learning and statistics consists of estimating the mean response Xβ from a vector of observations y assuming y = Xβ + ε where X is known, β is a vector of parameters of interest and ε a vector of stochastic errors. We are particularly interested here in the case where the dimension K of β is much higher than the dimension of y. We propose some flexible Bayesian models which can yield sparse estimates of β. We show that as K → ∞ these models are closely related to a class of Levy processes. Simulations demonstrate that our models outperform significantly a range of popular alternatives. Copyright 2008 by the author(s)/owner(s)
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We study flexible Bayesian methods that are amenable to a wide range of learning problems involving ...
We propose nonparametric Bayesian models for supervised dimension reduction and regression problems....
Learning sparsity pattern in high dimension is a great challenge in both implementation and theory. ...
<p>Capturing high dimensional complex ensembles of data is becoming commonplace in a variety of appl...
Seemingly unrelated regression (SUR) models are used in studying the interactions among economic var...
<p>Collections of large volumes of rich and complex data has become ubiquitous in recent years, posi...
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