This thesis is a monograph on Markov chains and deterministic approximation schemes that enable the quantitative analysis thereof. We present schemes that yield approximations of the time-varying law of a Markov chain, of its stationary distributions, and of the exit distributions and occupation measures associated with its exit times. In practice, our schemes reduce to solving systems of linear ordinary differential equations, linear programs, and semidefinite pro- grams. We focus on the theoretical aspects of these schemes, proving convergence and providing computable error bounds for most of them. To a lesser extent, we study their practical use, applying them to a variety of examples and discussing the numerical issues that arise...
We present a numerical method to compute expectations of functionals of a piecewise-deterministic Ma...
Abstract We introduce the exit time finite state projection (ETFSP) scheme, a truncation-based meth...
AbstractThis paper develops an a.s. convergence theory for a class of projected stochastic approxima...
Piecewise deterministic Markov processes (PDMPs) are a class of stochastic processes with applicatio...
We consider a simple and widely used method for evaluating quasi-stationary distributions of continu...
Abstract: Charles Stein has introduced a general approach to proving approx-imation theorems in prob...
Another approach to finite differences is the well developed Markov Chain Approximation (MCA) of Kus...
The goal of this work is to formally abstract a Markov process evolving in discrete time over a gene...
Abstract Computing the stationary distributions of a continuous-time Markov chain (CTMC) involves s...
Deterministic limit of a class of continuous time Markov chains is considered based purely on differ...
In this paper we present an overview of the field of deterministic approximation of Markov processes...
This paper describes and compares several methods for computing stationary probability distributions...
AbstractThis note determines a priori bounds for B. L. Fox's [J. Math. Anal. Appl., 34 (1971), 665–6...
L'objet de cette thèse est d'étudier une certaine classe de processus de Markov, dits déterministes ...
The topic of this thesis is the study of approximation schemes of jump processes whose driving noise...
We present a numerical method to compute expectations of functionals of a piecewise-deterministic Ma...
Abstract We introduce the exit time finite state projection (ETFSP) scheme, a truncation-based meth...
AbstractThis paper develops an a.s. convergence theory for a class of projected stochastic approxima...
Piecewise deterministic Markov processes (PDMPs) are a class of stochastic processes with applicatio...
We consider a simple and widely used method for evaluating quasi-stationary distributions of continu...
Abstract: Charles Stein has introduced a general approach to proving approx-imation theorems in prob...
Another approach to finite differences is the well developed Markov Chain Approximation (MCA) of Kus...
The goal of this work is to formally abstract a Markov process evolving in discrete time over a gene...
Abstract Computing the stationary distributions of a continuous-time Markov chain (CTMC) involves s...
Deterministic limit of a class of continuous time Markov chains is considered based purely on differ...
In this paper we present an overview of the field of deterministic approximation of Markov processes...
This paper describes and compares several methods for computing stationary probability distributions...
AbstractThis note determines a priori bounds for B. L. Fox's [J. Math. Anal. Appl., 34 (1971), 665–6...
L'objet de cette thèse est d'étudier une certaine classe de processus de Markov, dits déterministes ...
The topic of this thesis is the study of approximation schemes of jump processes whose driving noise...
We present a numerical method to compute expectations of functionals of a piecewise-deterministic Ma...
Abstract We introduce the exit time finite state projection (ETFSP) scheme, a truncation-based meth...
AbstractThis paper develops an a.s. convergence theory for a class of projected stochastic approxima...