<p>We develop correlated random measures, random measures where the atom weights can exhibit a flexible pattern of dependence, and use them to develop powerful hierarchical Bayesian nonparametric models. Hierarchical Bayesian nonparametric models are usually built from completely random measures, a Poisson-process-based construction in which the atom weights are independent. Completely random measures imply strong independence assumptions in the corresponding hierarchical model, and these assumptions are often misplaced in real-world settings. Correlated random measures address this limitation. They model correlation within the measure by using a Gaussian process in concert with the Poisson process. With correlated random measures, for exam...
We present a general construction for de-pendent random measures based on thinning Poisson processes...
Random probability measures are a cornerstone of Bayesian nonparametrics. By virtue of de Finetti's ...
We examine the difference between Bayesian and frequentist statistics in making statements about the...
This is the publisher’s final pdf. The published article is copyrighted by the author(s) and publish...
A number of models have been recently proposed in the Bayesian non-parametric literature for dealing...
This paper presents theory for Normalized Random Measures (NRMs), Normalized Generalized Gammas (NGG...
We introduce an approach for incorporating dependence between outcomes from a Poisson regression mod...
We propose a class of continuous-time Markov counting processes for analyzing correlated binary data...
Bayesian Statistics provide us with a powerful approach to model real-world phenomena and quantify t...
No abstract availableIn Bayesian Statistics the modeling of data with complex dependence structures ...
In this study, we deal with the problem of overdispersion beyond extra zeros for a collection of cou...
This dissertation focuses on the development of methodology for the analysis of multivariate count r...
Whenever parameter estimates are uncertain or observations are contaminated by measurement error, th...
We propose a class of continuous-time Markov counting processes for analyzing correlated binary data...
Discrete random structures are important tools in Bayesian nonpara- metrics and the resulting models...
We present a general construction for de-pendent random measures based on thinning Poisson processes...
Random probability measures are a cornerstone of Bayesian nonparametrics. By virtue of de Finetti's ...
We examine the difference between Bayesian and frequentist statistics in making statements about the...
This is the publisher’s final pdf. The published article is copyrighted by the author(s) and publish...
A number of models have been recently proposed in the Bayesian non-parametric literature for dealing...
This paper presents theory for Normalized Random Measures (NRMs), Normalized Generalized Gammas (NGG...
We introduce an approach for incorporating dependence between outcomes from a Poisson regression mod...
We propose a class of continuous-time Markov counting processes for analyzing correlated binary data...
Bayesian Statistics provide us with a powerful approach to model real-world phenomena and quantify t...
No abstract availableIn Bayesian Statistics the modeling of data with complex dependence structures ...
In this study, we deal with the problem of overdispersion beyond extra zeros for a collection of cou...
This dissertation focuses on the development of methodology for the analysis of multivariate count r...
Whenever parameter estimates are uncertain or observations are contaminated by measurement error, th...
We propose a class of continuous-time Markov counting processes for analyzing correlated binary data...
Discrete random structures are important tools in Bayesian nonpara- metrics and the resulting models...
We present a general construction for de-pendent random measures based on thinning Poisson processes...
Random probability measures are a cornerstone of Bayesian nonparametrics. By virtue of de Finetti's ...
We examine the difference between Bayesian and frequentist statistics in making statements about the...