The Indian buffet process (IBP) is a Bayesian nonparametric distribution whereby objects are modelled using an unbounded number of latent features. In this paper we derive a stick-breaking representation for the IBP. Based on this new representation, we develop slice samplers for the IBP that are efficient, easy to implement and are more generally applicable than the currently available Gibbs sampler. This representation, along with the work of Thibaux and Jordan [17], also illuminates interesting theoretical connections between the IBP, Chinese restaurant processes, Beta processes and Dirichlet processes
We define a probability distribution over equivalence classes of binary matrices with a finite numbe...
We present the Wright-Fisher Indian buffet process (WF-IBP), a probabilistic model for time-dependen...
Latent feature models are widely used to decompose data into a small number of components. Bayesian ...
The Indian buffet process (IBP) is a Bayesian nonparametric distribution whereby objects are modelle...
The Indian buffet process (IBP) is a Bayesian nonparametric distribution whereby objects are modelle...
The Indian buffet process (IBP) is an exchangeable distribution over binary matrices used in Bayesia...
Abstract: The purpose of this work is to describe a unified, and indeed simple, mechanism for non-pa...
We show that the beta process is the de Finetti mixing distribution underlying the Indian buffet pro...
Latent variable models are powerful tools to model the underlying structure in data. Infinite latent...
Even though heterogeneous databases can be found in a broad variety of applications, there exists a ...
International audienceFor a long time, the Dirichlet process has been the gold standard discrete ran...
This paper introduces the Indian chefs process (ICP) as a Bayesian nonparametric prior on the joint ...
Over recent years Dirichlet processes and the associated Chinese restaurant process (CRP) have found...
We often seek to identify co-occurring hid-den features in a set of observations. The Indian Buffet ...
For a long time, the Dirichlet process has been the gold standard discrete random measure in Bayesia...
We define a probability distribution over equivalence classes of binary matrices with a finite numbe...
We present the Wright-Fisher Indian buffet process (WF-IBP), a probabilistic model for time-dependen...
Latent feature models are widely used to decompose data into a small number of components. Bayesian ...
The Indian buffet process (IBP) is a Bayesian nonparametric distribution whereby objects are modelle...
The Indian buffet process (IBP) is a Bayesian nonparametric distribution whereby objects are modelle...
The Indian buffet process (IBP) is an exchangeable distribution over binary matrices used in Bayesia...
Abstract: The purpose of this work is to describe a unified, and indeed simple, mechanism for non-pa...
We show that the beta process is the de Finetti mixing distribution underlying the Indian buffet pro...
Latent variable models are powerful tools to model the underlying structure in data. Infinite latent...
Even though heterogeneous databases can be found in a broad variety of applications, there exists a ...
International audienceFor a long time, the Dirichlet process has been the gold standard discrete ran...
This paper introduces the Indian chefs process (ICP) as a Bayesian nonparametric prior on the joint ...
Over recent years Dirichlet processes and the associated Chinese restaurant process (CRP) have found...
We often seek to identify co-occurring hid-den features in a set of observations. The Indian Buffet ...
For a long time, the Dirichlet process has been the gold standard discrete random measure in Bayesia...
We define a probability distribution over equivalence classes of binary matrices with a finite numbe...
We present the Wright-Fisher Indian buffet process (WF-IBP), a probabilistic model for time-dependen...
Latent feature models are widely used to decompose data into a small number of components. Bayesian ...