Many modern data analysis problems involve inferences from streaming data. However, streaming data is not easily amenable to the standard probabilistic modeling approaches, which assume that we condition on finite data. We develop population variational Bayes, a new approach for using Bayesian modeling to analyze streams of data. It approximates a new type of distribution, the population posterior, which combines the notion of a population distribution of the data with Bayesian inference in a probabilistic model. We study our method with latent Dirichlet allocation and Dirichlet process mixtures on several large-scale data sets
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Latent Dirichlet allocation (LDA) is a Bayesian network that has recently gained much popularity in ...
We review some aspects of nonparametric Bayesian data analysis with discrete random probability meas...
We present SDA-Bayes, a framework for (S)treaming, (D)istributed, (A)synchronous computation of a Ba...
Bayesian nonparametric models are theoretically suitable to learn streaming data due to their comple...
In theory, Bayesian nonparametric (BNP) models are well suited to streaming data sce-narios due to t...
This paper presents a methodology for creating streaming, distributed inference algorithms for Bayes...
Abstract. This paper studies a Bayesian framework for density modeling with mixture of exponential f...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
In this paper, we develop a novel variational Bayesian learning method for the Dirichlet process (DP...
In many modern data analysis problems, the available data is not static but, instead, comes in a str...
Bayesian statistics is an approach to data analysis based on Bayes’ theorem, where available knowled...
Dirichlet process (DP) mixture models are the cornerstone of nonparametric Bayesian statistics, and...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Latent Dirichlet allocation (LDA) is a Bayesian network that has recently gained much popularity in ...
We review some aspects of nonparametric Bayesian data analysis with discrete random probability meas...
We present SDA-Bayes, a framework for (S)treaming, (D)istributed, (A)synchronous computation of a Ba...
Bayesian nonparametric models are theoretically suitable to learn streaming data due to their comple...
In theory, Bayesian nonparametric (BNP) models are well suited to streaming data sce-narios due to t...
This paper presents a methodology for creating streaming, distributed inference algorithms for Bayes...
Abstract. This paper studies a Bayesian framework for density modeling with mixture of exponential f...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
In this paper, we develop a novel variational Bayesian learning method for the Dirichlet process (DP...
In many modern data analysis problems, the available data is not static but, instead, comes in a str...
Bayesian statistics is an approach to data analysis based on Bayes’ theorem, where available knowled...
Dirichlet process (DP) mixture models are the cornerstone of nonparametric Bayesian statistics, and...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Latent Dirichlet allocation (LDA) is a Bayesian network that has recently gained much popularity in ...
We review some aspects of nonparametric Bayesian data analysis with discrete random probability meas...