Vector Markov processes (also known as population Markov processes) are an important class of stochastic processes that have been used to model a wide range of technological, biological, and socioeconomic systems. The dynamics of vector Markov processes are fully characterized, in a stochastic sense, by the state transition probability matrix P. In most applications, P has to be estimated based on either incomplete or aggregated pro-cess observations. Here, in contrast to established methods for estimation given aggre-gate data, we develop Bayesian formulations for estimating P from asynchronous aggregate (longitudinal) observations of the population dynamics. Such observations are common, for example, in the study of aggregate biological c...
We describe methods for estimating the parameters of Markovian population processes in continuous ti...
We describe methods for estimating the parameters of Markovian population processes in continuous ti...
In nature, population dynamics are subject to multiple sources of stochasticity. State-space models ...
The parameters of a discrete stationary Markov model are transition probabilities between states. Tr...
Direct simulation of biomolecular dynamics in thermal equilibrium is challenging due to the metastab...
We develop a Bayesian framework for estimating non-stationary Markov models in situations where macr...
We develop a Bayesian framework for estimating non-stationary Markov models in situations where macr...
Markovian population models are a powerful paradigm to describe processes of stochastically interact...
Markovian population models are a powerful paradigm to describe processes of stochastically interact...
Thesis (Ph.D.)--University of Washington, 2016-08Markov branching processes are a class of continuou...
In this paper we investigate Monte Carlo methods for the approximation of the posterior probability ...
We develop a Bayesian estimation framework for non-stationary Markov models for situations where bot...
2noMarkov Population Models are a widespread formalism, with applications in Systems Biology, Perfor...
The identification of vector autoregressive (VAR) processes from partial samples is a relevant probl...
We develop a Bayesian estimation framework for non-stationary Markov models for situations where bot...
We describe methods for estimating the parameters of Markovian population processes in continuous ti...
We describe methods for estimating the parameters of Markovian population processes in continuous ti...
In nature, population dynamics are subject to multiple sources of stochasticity. State-space models ...
The parameters of a discrete stationary Markov model are transition probabilities between states. Tr...
Direct simulation of biomolecular dynamics in thermal equilibrium is challenging due to the metastab...
We develop a Bayesian framework for estimating non-stationary Markov models in situations where macr...
We develop a Bayesian framework for estimating non-stationary Markov models in situations where macr...
Markovian population models are a powerful paradigm to describe processes of stochastically interact...
Markovian population models are a powerful paradigm to describe processes of stochastically interact...
Thesis (Ph.D.)--University of Washington, 2016-08Markov branching processes are a class of continuou...
In this paper we investigate Monte Carlo methods for the approximation of the posterior probability ...
We develop a Bayesian estimation framework for non-stationary Markov models for situations where bot...
2noMarkov Population Models are a widespread formalism, with applications in Systems Biology, Perfor...
The identification of vector autoregressive (VAR) processes from partial samples is a relevant probl...
We develop a Bayesian estimation framework for non-stationary Markov models for situations where bot...
We describe methods for estimating the parameters of Markovian population processes in continuous ti...
We describe methods for estimating the parameters of Markovian population processes in continuous ti...
In nature, population dynamics are subject to multiple sources of stochasticity. State-space models ...