Bayesian filters for parameter estimations in istochastic differential equations mixed-effects models

Estimation of parameters in Stochastic Differential Equations (SDE) models is not straightforward. Mathematical models that describes real life dynamic systems usually are nonlinear type and involve several parameters. A natural approach would be the maximum likelihood methods, however, the transiti...

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Hovedforfatter: Quito Mendoza, Brandon Estéfano (author)
Format: bachelorThesis
Sprog:eng
Udgivet: 2021
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Online adgang:http://repositorio.yachaytech.edu.ec/handle/123456789/385
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author Quito Mendoza, Brandon Estéfano
author_facet Quito Mendoza, Brandon Estéfano
author_role author
collection Repositorio Universidad Yachay Tech
dc.contributor.none.fl_str_mv Infante Quirpa, Saba Rafael
dc.creator.none.fl_str_mv Quito Mendoza, Brandon Estéfano
dc.date.none.fl_str_mv 2021-07-26T11:10:35Z
2021-07-26T11:10:35Z
2021-05
dc.format.none.fl_str_mv application/pdf
dc.identifier.none.fl_str_mv http://repositorio.yachaytech.edu.ec/handle/123456789/385
dc.language.none.fl_str_mv eng
dc.publisher.none.fl_str_mv Universidad de Investigación de Tecnología Experimental Yachay
dc.rights.none.fl_str_mv info:eu-repo/semantics/openAccess
dc.source.none.fl_str_mv reponame:Repositorio Universidad Yachay Tech
instname:Universidad Yachay Tech
instacron:Yachay
dc.subject.none.fl_str_mv Filtros bayesianos
Algoritmos PMCMC
Estimación de modelos estocásticos
Modelo SEIR
Bayesian filters
PMCMC algorithm
SDE model estimation
SEIR model
dc.title.none.fl_str_mv Bayesian filters for parameter estimations in istochastic differential equations mixed-effects models
dc.type.none.fl_str_mv info:eu-repo/semantics/publishedVersion
info:eu-repo/semantics/bachelorThesis
description Estimation of parameters in Stochastic Differential Equations (SDE) models is not straightforward. Mathematical models that describes real life dynamic systems usually are nonlinear type and involve several parameters. A natural approach would be the maximum likelihood methods, however, the transition densities are rarely known, and therefore is not possible to explicitly obtain the likelihood. The inference and analysis of dynamic systems that includes stochastic process allows to estimate unknown states and parameters, including a observation process (state-space models) that usually contains errors. The practical use of this estimation methods is common, specially due to its application on different research topics such as: finance, telecommunications, audio signal processing, optimum process control, machine learning, global position systems, physical phenomena systems, infectious disease outbreak modeling. The last one have important interest in this project. This thesis first show a review of the background of Bayesian filtering, a review of the literature and basic concepts around the same topic and numerical approximation methods e.g., Markov chain Monte Carlo (MCMC) and Sequential Monte Carlo (SMC). This recursive filters allow to perform inference on unknown parameters and states from imperfect observations and with a finite number of iterations. We propose a methodology based on the Bayesian paradigm that implements the mentioned recursive filters in SDE models, in specific the stochastic SEIR epidemic model and a Mixed-Effects model version of this epidemic model is proposed. Results of the inference of the particle filter in the SEIR model with real data from COVID-19 epidemic in Ecuador is presented. Computational cost and other features are discussed, with a general performance conclusion.
eu_rights_str_mv openAccess
format bachelorThesis
id Yachay_3d366cdbacf8f34f79075f7bd41d7417
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network_name_str Repositorio Universidad Yachay Tech
oai_identifier_str oai:repositorio.yachaytech.edu.ec:123456789/385
publishDate 2021
publisher.none.fl_str_mv Universidad de Investigación de Tecnología Experimental Yachay
reponame_str Repositorio Universidad Yachay Tech
repository.mail.fl_str_mv .
repository.name.fl_str_mv Repositorio Universidad Yachay Tech - Universidad Yachay Tech
repository_id_str 10284
spelling Bayesian filters for parameter estimations in istochastic differential equations mixed-effects modelsQuito Mendoza, Brandon EstéfanoFiltros bayesianosAlgoritmos PMCMCEstimación de modelos estocásticosModelo SEIRBayesian filtersPMCMC algorithmSDE model estimationSEIR modelEstimation of parameters in Stochastic Differential Equations (SDE) models is not straightforward. Mathematical models that describes real life dynamic systems usually are nonlinear type and involve several parameters. A natural approach would be the maximum likelihood methods, however, the transition densities are rarely known, and therefore is not possible to explicitly obtain the likelihood. The inference and analysis of dynamic systems that includes stochastic process allows to estimate unknown states and parameters, including a observation process (state-space models) that usually contains errors. The practical use of this estimation methods is common, specially due to its application on different research topics such as: finance, telecommunications, audio signal processing, optimum process control, machine learning, global position systems, physical phenomena systems, infectious disease outbreak modeling. The last one have important interest in this project. This thesis first show a review of the background of Bayesian filtering, a review of the literature and basic concepts around the same topic and numerical approximation methods e.g., Markov chain Monte Carlo (MCMC) and Sequential Monte Carlo (SMC). This recursive filters allow to perform inference on unknown parameters and states from imperfect observations and with a finite number of iterations. We propose a methodology based on the Bayesian paradigm that implements the mentioned recursive filters in SDE models, in specific the stochastic SEIR epidemic model and a Mixed-Effects model version of this epidemic model is proposed. Results of the inference of the particle filter in the SEIR model with real data from COVID-19 epidemic in Ecuador is presented. Computational cost and other features are discussed, with a general performance conclusion.Estimación de parámetros en modelos de Ecuaciones diferenciales estocásticas no es sencilla, excepto para casos simples. Los modelos matemáticos que describen estos sistemas dinámicos de la vida real comúnmente son nolineales e involucran varios parámetros. Un enfoque natural sería métodos de máxima verosimilitud, pero las densidades de transición son raramente conocidas, y por lo tanto no es posible obtener explícitamente la verosimilitud. La estimación y el análisis de sistemas dinámicos (modelos de espacio estado) que incluyen procesos estocásticos permiten hacer inferencia sobre estados y parámetros desconocidos, teniendo un proceso de observación que comúnmente contiene errores. El uso práctico de estos métodos de estimación es muy común, sobre todo por su aplicación diferentes áreas de investigación como es: finanzas, telecomunicaciones, procesamiento de señales de audio, control de procesos óptimo, aprendizaje automático, sistemas de posicionamiento global, sistemas para fenómenos físicos y modelado de brotes de enfermedades infeccionas. Este último es de particular interés para este proyecto. En esta tesis se repasa la literatura asociada a los filtros bayesianos y métodos de aproximación numérica para este tipo de modelos estocásticos como son el método de Monte Carlo secuencial y los algoritmos de filtro de partículas de tipo Monte Carlo cadenas de Markov. Estos filtros recursivos permiten obtener estimaciones de los estados y parámetros ocultos a partir de las observaciones imperfectas en un número finito de iteraciones. Se propuso una metodología basada en el paradigma bayesiano que implementa los filtros recursivos ya mencionados en modelos de sistemas de ecuaciones diferenciales estocásticas con el modelo epidemiológico SEIR y se propone una versión del modelo que incluye efectos mixtos. Se presentan los resultados de la implementación del algoritmo de filtro de partículas en el modelo SEIR de tipo estocástico muestreado con datos reales de la pandemia COVID-19 en Ecuador y se analiza el costo computacional que conlleva. Se presentan los resultados y las conclusiones sobre los mismos.Matemático/aUniversidad de Investigación de Tecnología Experimental YachayInfante Quirpa, Saba Rafael2021-07-26T11:10:35Z2021-07-26T11:10:35Z2021-05info:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/bachelorThesisapplication/pdfhttp://repositorio.yachaytech.edu.ec/handle/123456789/385enginfo:eu-repo/semantics/openAccessreponame:Repositorio Universidad Yachay Techinstname:Universidad Yachay Techinstacron:Yachay2025-07-08T17:51:32Zoai:repositorio.yachaytech.edu.ec:123456789/385Institucionalhttps://repositorio.yachaytech.edu.ec/Universidad públicahttps://www.yachaytech.edu.ec/https://repositorio.yachaytech.edu.ec/oaiEcuador...opendoar:102842025-07-08T17:51:32falseInstitucionalhttps://repositorio.yachaytech.edu.ec/Universidad públicahttps://www.yachaytech.edu.ec/https://repositorio.yachaytech.edu.ec/oai.Ecuador...opendoar:102842025-07-08T17:51:32Repositorio Universidad Yachay Tech - Universidad Yachay Techfalse
spellingShingle Bayesian filters for parameter estimations in istochastic differential equations mixed-effects models
Quito Mendoza, Brandon Estéfano
Filtros bayesianos
Algoritmos PMCMC
Estimación de modelos estocásticos
Modelo SEIR
Bayesian filters
PMCMC algorithm
SDE model estimation
SEIR model
status_str publishedVersion
title Bayesian filters for parameter estimations in istochastic differential equations mixed-effects models
title_full Bayesian filters for parameter estimations in istochastic differential equations mixed-effects models
title_fullStr Bayesian filters for parameter estimations in istochastic differential equations mixed-effects models
title_full_unstemmed Bayesian filters for parameter estimations in istochastic differential equations mixed-effects models
title_short Bayesian filters for parameter estimations in istochastic differential equations mixed-effects models
title_sort Bayesian filters for parameter estimations in istochastic differential equations mixed-effects models
topic Filtros bayesianos
Algoritmos PMCMC
Estimación de modelos estocásticos
Modelo SEIR
Bayesian filters
PMCMC algorithm
SDE model estimation
SEIR model
url http://repositorio.yachaytech.edu.ec/handle/123456789/385