Inference for continuous time non homogeneous multi-state Markovmodels may present considerable computational difficulties when the process isonly observed at discrete time points without additional information about the statetransitions. In fact, the likelihood can be obtained numerically only by solving theChapman-Kolmogorov equations satisfied by the model transition probabilities. Inthis paper we propose to make Bayesian inference bypassing the likelihood calcula-tion by simulating the whole continuous trajectories conditionally on the observedpoints via a Metropolis-Hastings step based on a piecewise homogeneous Markovprocess. A benchmark data set in the multi-state model literature is used to illustratethe resulting inference
2noMarkov Population Models are a widespread formalism, with applications in Systems Biology, Perfor...
We present new methodologies for Bayesian inference on the rate parameters of a discretely observed ...
In this paper we propose a clustering technique for discretely ob- served continuous-time models in ...
Multi-state models are frequently applied to represent processes evolving through a discrete set of ...
Inference for continuous time multi-state models presents considerable computational difficulties wh...
Inferenceforcontinuoustimemulti-statemodelspresentsconsiderablecomputationaldif- ficulties when the ...
Inference for continuous time multi-state models presents considerable computational difficulties w...
Inference for continuous time multi-state models presents considerable computational difficulties wh...
Multistate Markov models are a canonical parametric approach for data modeling of observed or latent...
We present new methodologies for Bayesian inference on the rate parameters of a discretely observed ...
The parameters of a discrete stationary Markov model are transition probabilities between states. Tr...
Approaches to Bayesian inference for problems with intractable likelihoods have become increasingly ...
In some inferential problems involving Markov process data, the inhomogeneity of the process is of c...
In this article a flexible Bayesian non-parametric model is proposed for non-homogeneous hidden Mark...
We consider the modeling of data generated by a latent continuous-time Markov jump process with a st...
2noMarkov Population Models are a widespread formalism, with applications in Systems Biology, Perfor...
We present new methodologies for Bayesian inference on the rate parameters of a discretely observed ...
In this paper we propose a clustering technique for discretely ob- served continuous-time models in ...
Multi-state models are frequently applied to represent processes evolving through a discrete set of ...
Inference for continuous time multi-state models presents considerable computational difficulties wh...
Inferenceforcontinuoustimemulti-statemodelspresentsconsiderablecomputationaldif- ficulties when the ...
Inference for continuous time multi-state models presents considerable computational difficulties w...
Inference for continuous time multi-state models presents considerable computational difficulties wh...
Multistate Markov models are a canonical parametric approach for data modeling of observed or latent...
We present new methodologies for Bayesian inference on the rate parameters of a discretely observed ...
The parameters of a discrete stationary Markov model are transition probabilities between states. Tr...
Approaches to Bayesian inference for problems with intractable likelihoods have become increasingly ...
In some inferential problems involving Markov process data, the inhomogeneity of the process is of c...
In this article a flexible Bayesian non-parametric model is proposed for non-homogeneous hidden Mark...
We consider the modeling of data generated by a latent continuous-time Markov jump process with a st...
2noMarkov Population Models are a widespread formalism, with applications in Systems Biology, Perfor...
We present new methodologies for Bayesian inference on the rate parameters of a discretely observed ...
In this paper we propose a clustering technique for discretely ob- served continuous-time models in ...