In the past few decades, Coxian phase-type distributions have become increasingly more popular as a means of representing survival times. In healthcare, they are considered suitable for modelling the length of stay of patients in hospital and more recently for modelling the patient waiting times in Accident and Emergency Departments. The Coxian phase-type distribution has not only been shown to provide a good representation of real survival data, but its interpretation seems reasonably initiative to the medical experts. The drawback, however, is fitting the distribution to the data. There have been many attempts at accurately estimating the Coxian phase-type parameters. This paper wishes to examine the most promising of the approaches reported in the literature to determine the most accurate. Three performance measures are introduced to assess the fitting process of the algorithms along with the likelihood values and AIC to examine the goodness of fit and complexity of the model. Previous research suggests that the fitting process is strongly influenced by the initial parameter estimates and the data itself being quite variable. To overcome this, one experiment in this research paper will use the same initial parameter values for each estimation and perform the fits on the data simulated from a Coxian phase-type distribution with known parameters.

Marshall, A., Zenga, M. (2012). Experimenting with the Coxian Phase-Type Distribution to Uncover Suitable Fits. METHODOLOGY AND COMPUTING IN APPLIED PROBABILITY, 14(1), 71-86 [10.1007/s11009-010-9174-y].

Experimenting with the Coxian Phase-Type Distribution to Uncover Suitable Fits

ZENGA, MARIANGELA
2012

Abstract

In the past few decades, Coxian phase-type distributions have become increasingly more popular as a means of representing survival times. In healthcare, they are considered suitable for modelling the length of stay of patients in hospital and more recently for modelling the patient waiting times in Accident and Emergency Departments. The Coxian phase-type distribution has not only been shown to provide a good representation of real survival data, but its interpretation seems reasonably initiative to the medical experts. The drawback, however, is fitting the distribution to the data. There have been many attempts at accurately estimating the Coxian phase-type parameters. This paper wishes to examine the most promising of the approaches reported in the literature to determine the most accurate. Three performance measures are introduced to assess the fitting process of the algorithms along with the likelihood values and AIC to examine the goodness of fit and complexity of the model. Previous research suggests that the fitting process is strongly influenced by the initial parameter estimates and the data itself being quite variable. To overcome this, one experiment in this research paper will use the same initial parameter values for each estimation and perform the fits on the data simulated from a Coxian phase-type distribution with known parameters.
Articolo in rivista - Articolo scientifico
Coxian phase-type distribution, Fitting, Simulation, Algorithm
English
6-apr-2010
2012
14
1
71
86
none
Marshall, A., Zenga, M. (2012). Experimenting with the Coxian Phase-Type Distribution to Uncover Suitable Fits. METHODOLOGY AND COMPUTING IN APPLIED PROBABILITY, 14(1), 71-86 [10.1007/s11009-010-9174-y].
File in questo prodotto:
Non ci sono file associati a questo prodotto.

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/22787
Citazioni
  • Scopus 18
  • ???jsp.display-item.citation.isi??? 17
Social impact