Documento depositado en el repositorio arXiv.org. Versión: arXiv:1404.5218v1 [stat.ME]In this paper we address the problem of Monte Carlo approximation of posterior probability distributions in stochastic kinetic models (SKMs). SKMs are multivariate Markov jump processes that model the interactions among species in biochemical systems according to a set of uncertain parameters. Markov chain Monte Carlo (MCMC) methods have been typically preferred for this Bayesian inference problem. Specifically, the particle MCMC (pMCMC) method has been recently shown to be an effective, while computationally demanding, method applicable to this problem. Within the pMCMC framework, importance sampling (IS) has been used only as the basis of the sequential ...
This thesis consists ideas of two new population Markov chain Monte Carlo algorithms and an automati...
Motivation: Genetic modifications or pharmaceutical interventions can influence multiple sites in me...
The Markov Chain Monte-Carlo (MCMC) born in early 1950s has recently aroused great interest among s...
Documento depositado en el repositorio arXiv.org. Versión: arXiv:1404.5218v1 [stat.ME]In this paper ...
In this paper we investigate Monte Carlo methods for the approximation of the posterior probability ...
This paper addresses the Monte Carlo approximation of posterior probability distributions. In partic...
Fitting stochastic kinetic models represented by Markov jump processes within the Bayesian paradigm ...
Documento depositado en el repositorio arxiv.org. Versión: arXiv:1512.03976v1 [stat.CO]We investigat...
The Bayesian estimation of the unknown parameters of state-space (dynamical) systems has received co...
We compare three state-of-the-art Bayesian inference methods for the estimation of the unknown param...
Ph.D thesisStochastic kinetic models are used to describe a variety of biological, physical and che...
Markov ChainMonte Carlo (MCMC) and sequentialMonte Carlo (SMC) methods are the two most popular clas...
In the present work we address the problem of Monte Carlo approximation of posterior probability dis...
Stochastic models of biochemical reaction networks are often more realistic descriptions of cellular...
This thesis consists ideas of two new population Markov chain Monte Carlo algorithms and an automati...
Motivation: Genetic modifications or pharmaceutical interventions can influence multiple sites in me...
The Markov Chain Monte-Carlo (MCMC) born in early 1950s has recently aroused great interest among s...
Documento depositado en el repositorio arXiv.org. Versión: arXiv:1404.5218v1 [stat.ME]In this paper ...
In this paper we investigate Monte Carlo methods for the approximation of the posterior probability ...
This paper addresses the Monte Carlo approximation of posterior probability distributions. In partic...
Fitting stochastic kinetic models represented by Markov jump processes within the Bayesian paradigm ...
Documento depositado en el repositorio arxiv.org. Versión: arXiv:1512.03976v1 [stat.CO]We investigat...
The Bayesian estimation of the unknown parameters of state-space (dynamical) systems has received co...
We compare three state-of-the-art Bayesian inference methods for the estimation of the unknown param...
Ph.D thesisStochastic kinetic models are used to describe a variety of biological, physical and che...
Markov ChainMonte Carlo (MCMC) and sequentialMonte Carlo (SMC) methods are the two most popular clas...
In the present work we address the problem of Monte Carlo approximation of posterior probability dis...
Stochastic models of biochemical reaction networks are often more realistic descriptions of cellular...
This thesis consists ideas of two new population Markov chain Monte Carlo algorithms and an automati...
Motivation: Genetic modifications or pharmaceutical interventions can influence multiple sites in me...
The Markov Chain Monte-Carlo (MCMC) born in early 1950s has recently aroused great interest among s...