Inference for latent feature models is inherently difficult as the inference space grows exponentially with the size of the input data and number of latent features. In this work, we use Kurihara & Welling (2008)'s maximization-expectation framework to perform approximate MAP inference for linear-Gaussian latent feature models with an Indian Buffet Process (IBP) prior. This formulation yields a submodular function of the features that corresponds to a lower bound on the model evidence. By adding a constant to this function, we obtain a nonnegative submodular function that can be maximized via a greedy algorithm that obtains at least a one-third approximation to the optimal solution. Our inference method scales linearly with the size of the ...
We often seek to identify co-occurring hid-den features in a set of observations. The Indian Buffet ...
Deep belief networks are a powerful way to model complex probability distributions. However, it is d...
Probabilistic graphical models such as Markov random fields provide a powerful framework and tools f...
Inference for latent feature models is inher-ently difficult as the inference space grows exponentia...
We define a probability distribution over equivalence classes of binary matrices with a finite numbe...
Latent feature models are widely used to decompose data into a small number of components. Bayesian ...
Even though heterogeneous databases can be found in a broad variety of applications, there exists a ...
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...
Abstract: The purpose of this work is to describe a unified, and indeed simple, mechanism for non-pa...
The Indian buffet process (IBP) is a Bayesian nonparametric distribution whereby objects are modelle...
We propose a non-linear, Bayesian non-parametric latent variable model where the latent space is ass...
Latent variable models are powerful tools to model the underlying structure in data. Infinite latent...
The Indian Buffet Process (IBP) gives a probabilistic model of sparse binary matrices with an unboun...
We present the Wright-Fisher Indian buffet process (WF-IBP), a probabilistic model for time-dependen...
We often seek to identify co-occurring hid-den features in a set of observations. The Indian Buffet ...
Deep belief networks are a powerful way to model complex probability distributions. However, it is d...
Probabilistic graphical models such as Markov random fields provide a powerful framework and tools f...
Inference for latent feature models is inher-ently difficult as the inference space grows exponentia...
We define a probability distribution over equivalence classes of binary matrices with a finite numbe...
Latent feature models are widely used to decompose data into a small number of components. Bayesian ...
Even though heterogeneous databases can be found in a broad variety of applications, there exists a ...
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...
Abstract: The purpose of this work is to describe a unified, and indeed simple, mechanism for non-pa...
The Indian buffet process (IBP) is a Bayesian nonparametric distribution whereby objects are modelle...
We propose a non-linear, Bayesian non-parametric latent variable model where the latent space is ass...
Latent variable models are powerful tools to model the underlying structure in data. Infinite latent...
The Indian Buffet Process (IBP) gives a probabilistic model of sparse binary matrices with an unboun...
We present the Wright-Fisher Indian buffet process (WF-IBP), a probabilistic model for time-dependen...
We often seek to identify co-occurring hid-den features in a set of observations. The Indian Buffet ...
Deep belief networks are a powerful way to model complex probability distributions. However, it is d...
Probabilistic graphical models such as Markov random fields provide a powerful framework and tools f...