74 research outputs found
Quasi-stationary distributions for reducible absorbing Markov chains in discrete time
We consider discrete-time Markov chains with one coffin state and a finite set of transient states, and are interested in the limiting behaviour of such a chain as time conditional on survival up to . It is known that, when is irreducible, the limiting conditional distribution of the chain equals the (unique) quasi-stationary distribution of the chain, while the latter is the (unique) -invariant distribution for the one-step transition probability matrix of the (sub)Markov chain on being the Perron-Frobenius eigenvalue of this matrix. Addressing similar issues in a setting in which may be reducible, we identify all quasi-stationary distributions and obtain a necessary and sufficient condition for one of them to be the unique -invariant distribution. We also reveal conditions under which the limiting conditional distribution equals the -invariant distribution if it is unique. We conclude with some examples
Limiting conditional distributions for birth-death processes
In a recent paper one of us identified all of the quasi-stationary distributions for a non-explosive, evanescent birth-death process for which absorption is certain, and established conditions for the existence of the corresponding limiting conditional distributions. Our purpose is to extend these results in a number of directions. We shall consider separately two cases depending on whether or not the process is evanescent. In the former case we shall relax the condition that absorption is certain. Furthermore, we shall allow for the possibility that the minimal process might be explosive, so that the transition rates alone will not necessarily determine the birth-death process uniquely. Although we shall be concerned mainly with the minimal process, our most general results hold for any birth-death process whose transition probabilities satisfy both the backward and the forward Kolmogorov differential equations
Total variation approximation for quasi-equilibrium distributions
Quasi-stationary distributions, as discussed by Darroch & Seneta (1965), have
been used in biology to describe the steady state behaviour of population
models which, while eventually certain to become extinct, nevertheless maintain
an apparent stochastic equilibrium for long periods. These distributions have
some drawbacks: they need not exist, nor be unique, and their calculation can
present problems. In this paper, we give biologically plausible conditions
under which the quasi-stationary distribution is unique, and can be closely
approximated by distributions that are simple to compute.Comment: 16 page
Past, present and future of historical information science
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