We consider semiparametric models of semi-Markov processes with arbitrary state space. Assuming that the process is geometrically ergodic, we characterize efficient estimators, in the sense of Hájek and Le Cam, for arbitrary real-valued smooth functionals of the distribution of the embedded Markov renewal process. We construct efficient estimators of the parameter and of linear functionals of the distribution. In particular we treat the two cases in which we have a paramet-ric model for the transition distribution of the embedded Markov chain and an arbitrary conditional distribution of the inter-jump times, and vice versa.
The aim of this minicourse is to provide a number of tools that allow one to de-termine at which spe...
Abstract A semi-Markov process is one that changes states in accordance with a Markov chain but take...
Abstract A semi-Markov process is one that changes states in accordance with a Markov chain but take...
We consider semiparametric models of semi-Markov processes with arbitrary state space. Assuming that...
A semi-Markov process stays in state x for a time s and then jumps to state y according to a transi...
AbstractThe distribution of a homogeneous, continuous-time Markov step process with values in an arb...
The distribution of a homogeneous, continuous-time Markov step process with values in an arbitrary s...
Suppose we observe a geometrically ergodic Markov chain with a parametric model for the marginal, bu...
We characterize efficient estimators for the expectation of a function under the invariant distribut...
Suppose we observe a geometrically ergodic Markov chain with a parametric model for the marginal, bu...
Suppose we observe a geometrically ergodic Markov chain with a parametric model for the marginal, bu...
International audienceThis article concerns maximum-likelihood estimation for discrete time homogene...
A new construction of regeneration times is exploited to prove ergodic and renewal theorems for semi...
I give a summary of the basic contributions of this study. We construct the maximum likelihood estim...
The development of statistical inference procedures for semi- Markov processes seems to be rather sc...
The aim of this minicourse is to provide a number of tools that allow one to de-termine at which spe...
Abstract A semi-Markov process is one that changes states in accordance with a Markov chain but take...
Abstract A semi-Markov process is one that changes states in accordance with a Markov chain but take...
We consider semiparametric models of semi-Markov processes with arbitrary state space. Assuming that...
A semi-Markov process stays in state x for a time s and then jumps to state y according to a transi...
AbstractThe distribution of a homogeneous, continuous-time Markov step process with values in an arb...
The distribution of a homogeneous, continuous-time Markov step process with values in an arbitrary s...
Suppose we observe a geometrically ergodic Markov chain with a parametric model for the marginal, bu...
We characterize efficient estimators for the expectation of a function under the invariant distribut...
Suppose we observe a geometrically ergodic Markov chain with a parametric model for the marginal, bu...
Suppose we observe a geometrically ergodic Markov chain with a parametric model for the marginal, bu...
International audienceThis article concerns maximum-likelihood estimation for discrete time homogene...
A new construction of regeneration times is exploited to prove ergodic and renewal theorems for semi...
I give a summary of the basic contributions of this study. We construct the maximum likelihood estim...
The development of statistical inference procedures for semi- Markov processes seems to be rather sc...
The aim of this minicourse is to provide a number of tools that allow one to de-termine at which spe...
Abstract A semi-Markov process is one that changes states in accordance with a Markov chain but take...
Abstract A semi-Markov process is one that changes states in accordance with a Markov chain but take...