@article{EJP402,
author = {Amaury Lambert},
title = {Quasi-Stationary Distributions and the Continuous-State Branching Process Conditioned to Be Never Extinct},
journal = {Electron. J. Probab.},
fjournal = {Electronic Journal of Probability},
volume = {12},
year = {2007},
keywords = {Continuous-state branching process; Lévy process; quasi-stationary distribution; Yaglom theorem; h-transform; Q-process; immigration; size-biased distribution; stochastic differential equations},
abstract = {We consider continuous-state branching (CB) processes which become extinct (i.e., hit 0) with positive probability. We characterize all the quasi-stationary distributions (QSD) for the CB-process as a stochastically monotone family indexed by a real number. We prove that the minimal element of this family is the so-called Yaglom quasi-stationary distribution, that is, the limit of one-dimensional marginals conditioned on being nonzero. Next, we consider the branching process conditioned on not being extinct in the distant future, or $Q$-process, defined by means of Doob $h$-transforms. We show that the $Q$-process is distributed as the initial CB-process with independent immigration, and that under the $L\log L$ condition, it has a limiting law which is the size-biased Yaglom distribution (of the CB-process). More generally, we prove that for a wide class of nonnegative Markov processes absorbed at 0 with probability 1, the Yaglom distribution is always stochastically dominated by the stationary probability of the $Q$-process, assuming that both exist. Finally, in the diffusion case and in the stable case, the $Q$-process solves a SDE with a drift term that can be seen as the instantaneous immigration.},
pages = {no. 14, 420-446},
issn = {1083-6489},
doi = {10.1214/EJP.v12-402},
url = {http://ejp.ejpecp.org/article/view/402}}