Markov jump processes (MJPs) have been used as models in various fields such as disease progression, phylogenetic trees, and communication networks. The main motivation behind this thesis is the application of MJPs to data modeled as having complex latent structure. In this thesis we propose a nonparametric prior, the gamma-exponential process (GEP), over MJPs. Nonparametric Bayesian models have recently attracted much attention in the statistics community, due to their flexibility, adaptability, and usefulness in analyzing complex real world datasets. The GEP is a prior over infinite rate matrices which characterize an MJP; this prior can be used in Bayesian models where an MJP is imposed on the data but the number of states of the MJP is ...
I propose two new kernel-based models that enable an exact generative procedure: the Gaussian proces...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
Genetic sequence data are well described by hidden Markov models (HMMs) in which latent states corre...
Nonparametric Bayesian inference has widespread applications in statistics and machine learning. In ...
In this article, we explored a Bayesian nonparametric approach to learning Markov switching processe...
In this paper we consider the problem of parameter inference for Markov jump process (MJP) represent...
Abstract: In this paper we present and investigate a new class of nonparamet-ric priors for modellin...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
We consider Bayesian hierarchical models for event history analysis, where the event times are mode...
We present new methodologies for Bayesian inference on the rate parameters of a discretely observed ...
We present new methodologies for Bayesian inference on the rate parameters of a discretely observed ...
In this paper we present and investigate a new class of non-parametric priors for modelling a cumula...
Given discrete time observations over a growing time interval, we consider a nonparametric Bayesian ...
Markov jump processes are continuous-time stochastic processes widely used in a variety of applied d...
I propose two new kernel-based models that enable an exact generative procedure: the Gaussian proces...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
Genetic sequence data are well described by hidden Markov models (HMMs) in which latent states corre...
Nonparametric Bayesian inference has widespread applications in statistics and machine learning. In ...
In this article, we explored a Bayesian nonparametric approach to learning Markov switching processe...
In this paper we consider the problem of parameter inference for Markov jump process (MJP) represent...
Abstract: In this paper we present and investigate a new class of nonparamet-ric priors for modellin...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
We consider Bayesian hierarchical models for event history analysis, where the event times are mode...
We present new methodologies for Bayesian inference on the rate parameters of a discretely observed ...
We present new methodologies for Bayesian inference on the rate parameters of a discretely observed ...
In this paper we present and investigate a new class of non-parametric priors for modelling a cumula...
Given discrete time observations over a growing time interval, we consider a nonparametric Bayesian ...
Markov jump processes are continuous-time stochastic processes widely used in a variety of applied d...
I propose two new kernel-based models that enable an exact generative procedure: the Gaussian proces...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
Genetic sequence data are well described by hidden Markov models (HMMs) in which latent states corre...