Aggregated semi-Markov processes incorporating time interval omission
- 1 December 1991
- journal article
- Published by Cambridge University Press (CUP) in Advances in Applied Probability
- Vol. 23 (4) , 772-797
- https://doi.org/10.2307/1427675
Abstract
We consider a semi-Markov process with finite state space, partitioned into two classes termed ‘open' and ‘closed'. It is possible to observe only which class the process is in. We show that complete information concerning the aggregated process is contained in an embedded Markov renewal process, whose parameters, moments and equilibrium behaviour are determined. Such processes have found considerable application in stochastic modelling of single ion channels. In that setting there is time interval omission, i.e. brief sojourns in either class failed to be detected. Complete information on the aggregated process incorporating time interval omission is contained in a Markov renewal process, whose properties are derived, obtained from the above Markov renewal process by a further embedding. The embedded Markov renewal framework is natural, and its invariance to time interval omission leads to considerable economy in the derivation of properties of the observed process. The results are specialised to the case when the underlying process is a continuous-time Markov chain.Keywords
This publication has 29 references indexed in Scilit:
- Aggregated Markov processes with negative exponential time interval omissionAdvances in Applied Probability, 1990
- A note on single-channel autocorrelation functionsMathematical Biosciences, 1989
- Sojourn times in finite Markov processesJournal of Applied Probability, 1989
- Single-channel autocorrelation functions: the effects of time interval omissionBiophysical Journal, 1988
- First passage times and lumpability of semi-Markov processesJournal of Applied Probability, 1988
- Temporal Clustering of Ion Channel Openings Incorporating Time Interval OmissionMathematical Medicine and Biology: A Journal of the IMA, 1987
- Selection of the Transformation Variable in the Laplace Transform Method of EstimationAustralian Journal of Statistics, 1987
- Ion channel kinetics: a model based on fractal scaling rather than multistate Markov processesMathematical Biosciences, 1987
- On aggregated Markov processesJournal of Applied Probability, 1986
- A general solution to the time interval omission problem applied to single channel analysisBiophysical Journal, 1985