Bayesian nonparametric inference is a relatively young area of research and it has recently undergone a strong development. Most of its success can be explained by the considerable degree of flexibility it ensures in statistical modeling, if compared to parametric alternatives, and by the emergence of new and efficient simulation techniques that make nonparametric models amenable to concrete use in a number of applied statistical problems. This fast growth is witnessed by some review articles and monographs providing interesting and accurate accounts of the state of the art in Bayesian nonparametrics. Among them we mention the discussion paper by Walker, Damien, Laud and Smith (1999), the book by Ghosh and Ramamoorthi (2003), the lecture notes by Regazzini (2001) and the review articles by Hjort (2003) and Müller and Quintana (2004). Here we wish to provide an update to all these excellent works. In particular, we focus on classes of nonparametric priors that go beyond the Dirichlet process.
Models beyond the Dirichlet process
A Lijoi;
2010
Abstract
Bayesian nonparametric inference is a relatively young area of research and it has recently undergone a strong development. Most of its success can be explained by the considerable degree of flexibility it ensures in statistical modeling, if compared to parametric alternatives, and by the emergence of new and efficient simulation techniques that make nonparametric models amenable to concrete use in a number of applied statistical problems. This fast growth is witnessed by some review articles and monographs providing interesting and accurate accounts of the state of the art in Bayesian nonparametrics. Among them we mention the discussion paper by Walker, Damien, Laud and Smith (1999), the book by Ghosh and Ramamoorthi (2003), the lecture notes by Regazzini (2001) and the review articles by Hjort (2003) and Müller and Quintana (2004). Here we wish to provide an update to all these excellent works. In particular, we focus on classes of nonparametric priors that go beyond the Dirichlet process.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.