On perfect simulation and EM estimation

Perfect simulation  and the EM algorithm are the main topics in this thesis. In paper I, we present coupling from the past (CFTP) algorithms that generate perfectly distributed samples from the multi-type Widom--Rowlin-son (W--R) model and some generalizations of it. The classical W--R model is a po...

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Main Author: Larson, Kajsa
Format: Doctoral Thesis
Language:English
Published: Umeå universitet, Institutionen för matematik och matematisk statistik 2010
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:umu:diva-33779
http://nbn-resolving.de/urn:isbn:978-91-7264-985-9
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spelling ndltd-UPSALLA1-oai-DiVA.org-umu-337792013-01-08T13:06:12ZOn perfect simulation and EM estimationengLarson, KajsaUmeå universitet, Institutionen för matematik och matematisk statistikUmeå : Print & Media2010Perfect simulationcoupling from the pastMarkov chain Monte Carlopoint processWidom-Rowlinson modelEM algorithmdispersal distributionfecundityfirst-passage percolationMathematical statisticsMatematisk statistikPerfect simulation  and the EM algorithm are the main topics in this thesis. In paper I, we present coupling from the past (CFTP) algorithms that generate perfectly distributed samples from the multi-type Widom--Rowlin-son (W--R) model and some generalizations of it. The classical W--R model is a point process in the plane or the  space consisting of points of several different types. Points of different types are not allowed to be closer than some specified distance, whereas points of the same type can be arbitrary close. A stick-model and soft-core generalizations are also considered. Further, we  generate samples without edge effects, and give a bound on sufficiently small intensities (of the points) for the algorithm to terminate. In paper II, we consider the  forestry problem on how to estimate  seedling dispersal distributions and effective plant fecundities from spatially data of adult trees  and seedlings, when the origin of the seedlings are unknown.   Traditional models for fecundities build on allometric assumptions, where the fecundity is related to some  characteristic of the adult tree (e.g.\ diameter). However, the allometric assumptions are generally too restrictive and lead to nonrealistic estimates. Therefore we present a new model, the unrestricted fecundity (UF) model, which uses no allometric assumptions. We propose an EM algorithm to estimate the unknown parameters.   Evaluations on real and simulated data indicates better performance for the UF model. In paper III, we propose  EM algorithms to  estimate the passage time distribution on a graph.Data is obtained by observing a flow only at the nodes -- what happens on the edges is unknown. Therefore the sample of passage times, i.e. the times it takes for the flow to stream between two neighbors, consists of right censored and uncensored observations where it sometimes is unknown which is which.       For discrete passage time distributions, we show that the maximum likelihood (ML) estimate is strongly consistent under certain  weak conditions. We also show that our propsed EM algorithm  converges to the ML estimate if the sample size is sufficiently large and the starting value is sufficiently close to the true parameter. In a special case we show that it always converges.  In the continuous case, we propose an EM algorithm for fitting  phase-type distributions to data. Doctoral thesis, comprehensive summaryinfo:eu-repo/semantics/doctoralThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:umu:diva-33779urn:isbn:978-91-7264-985-9Doctoral thesis / Umeå University, Department of Mathematics, 1102-8300application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Doctoral Thesis
sources NDLTD
topic Perfect simulation
coupling from the past
Markov chain Monte Carlo
point process
Widom-Rowlinson model
EM algorithm
dispersal distribution
fecundity
first-passage percolation
Mathematical statistics
Matematisk statistik
spellingShingle Perfect simulation
coupling from the past
Markov chain Monte Carlo
point process
Widom-Rowlinson model
EM algorithm
dispersal distribution
fecundity
first-passage percolation
Mathematical statistics
Matematisk statistik
Larson, Kajsa
On perfect simulation and EM estimation
description Perfect simulation  and the EM algorithm are the main topics in this thesis. In paper I, we present coupling from the past (CFTP) algorithms that generate perfectly distributed samples from the multi-type Widom--Rowlin-son (W--R) model and some generalizations of it. The classical W--R model is a point process in the plane or the  space consisting of points of several different types. Points of different types are not allowed to be closer than some specified distance, whereas points of the same type can be arbitrary close. A stick-model and soft-core generalizations are also considered. Further, we  generate samples without edge effects, and give a bound on sufficiently small intensities (of the points) for the algorithm to terminate. In paper II, we consider the  forestry problem on how to estimate  seedling dispersal distributions and effective plant fecundities from spatially data of adult trees  and seedlings, when the origin of the seedlings are unknown.   Traditional models for fecundities build on allometric assumptions, where the fecundity is related to some  characteristic of the adult tree (e.g.\ diameter). However, the allometric assumptions are generally too restrictive and lead to nonrealistic estimates. Therefore we present a new model, the unrestricted fecundity (UF) model, which uses no allometric assumptions. We propose an EM algorithm to estimate the unknown parameters.   Evaluations on real and simulated data indicates better performance for the UF model. In paper III, we propose  EM algorithms to  estimate the passage time distribution on a graph.Data is obtained by observing a flow only at the nodes -- what happens on the edges is unknown. Therefore the sample of passage times, i.e. the times it takes for the flow to stream between two neighbors, consists of right censored and uncensored observations where it sometimes is unknown which is which.       For discrete passage time distributions, we show that the maximum likelihood (ML) estimate is strongly consistent under certain  weak conditions. We also show that our propsed EM algorithm  converges to the ML estimate if the sample size is sufficiently large and the starting value is sufficiently close to the true parameter. In a special case we show that it always converges.  In the continuous case, we propose an EM algorithm for fitting  phase-type distributions to data.
author Larson, Kajsa
author_facet Larson, Kajsa
author_sort Larson, Kajsa
title On perfect simulation and EM estimation
title_short On perfect simulation and EM estimation
title_full On perfect simulation and EM estimation
title_fullStr On perfect simulation and EM estimation
title_full_unstemmed On perfect simulation and EM estimation
title_sort on perfect simulation and em estimation
publisher Umeå universitet, Institutionen för matematik och matematisk statistik
publishDate 2010
url http://urn.kb.se/resolve?urn=urn:nbn:se:umu:diva-33779
http://nbn-resolving.de/urn:isbn:978-91-7264-985-9
work_keys_str_mv AT larsonkajsa onperfectsimulationandemestimation
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