An application of discrete time survival models to analyze student dropouts at a private university in Peru

Discrete-time survival models are discussed and applied to the study of which factors are associated with student dropouts at a private university in Lima, Per_u. We studied the characteristics of 26; 790 incoming students enrolled between 2004 and 2012 in all the under-graduate programs at the Uni...

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Main Author: Pebes Trujillo, Miguel Raúl
Other Authors: Sal y Rosas, Giancarlo
Format: Dissertation
Language:English
Published: Pontificia Universidad Católica del Perú 2016
Subjects:
Online Access:http://tesis.pucp.edu.pe/repositorio/handle/123456789/6992
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spelling ndltd-PUCP-oai-tesis.pucp.edu.pe-123456789-69922019-02-28T15:56:14Z An application of discrete time survival models to analyze student dropouts at a private university in Peru Pebes Trujillo, Miguel Raúl Sal y Rosas, Giancarlo Sobrevivencia (Biometría) Biometría Análisis de series cronológicas Análisis de regresión Estudiantes universitarios Discrete-time survival models are discussed and applied to the study of which factors are associated with student dropouts at a private university in Lima, Per_u. We studied the characteristics of 26; 790 incoming students enrolled between 2004 and 2012 in all the under-graduate programs at the University. The analysis include the estimation of the survival and hazard functions using the Kaplan-Meier method and the _tting of parametric models using the Cox proportional hazards regression and the Logistic regression for survival analysis, this last one, in order to include time varying variables as predictors. During the period of analysis, the cumulative probability of remain at the University after _ve years was 73.7% [95% CI: 73.1% - 74.4%]. In any period the hazard is greater than 4.4% and this highest value is reached in the 3rd semester. In a multivariate analysis, we found that academic factors (area of study, type of admission, standardized academic performance index, and the percentage of passed credits); economic factors (type of residence, and payment scale); and sociodemographic factors (mother education level, indicators of whether or not parents are alive, and the age of the student) were associated with the risk of dropout. Tesis 2016-06-20T21:14:00Z 2016-06-20T21:14:00Z 2015 2016-06-20 info:eu-repo/semantics/masterThesis http://tesis.pucp.edu.pe/repositorio/handle/123456789/6992 eng info:eu-repo/semantics/openAccess Atribución-NoComercial-SinDerivadas 2.5 Perú http://creativecommons.org/licenses/by-nc-nd/2.5/pe/ application/pdf Pontificia Universidad Católica del Perú Pontificia Universidad Católica del Perú Repositorio de Tesis - PUCP
collection NDLTD
language English
format Dissertation
sources NDLTD
topic Sobrevivencia (Biometría)
Biometría
Análisis de series cronológicas
Análisis de regresión
Estudiantes universitarios
spellingShingle Sobrevivencia (Biometría)
Biometría
Análisis de series cronológicas
Análisis de regresión
Estudiantes universitarios
Pebes Trujillo, Miguel Raúl
An application of discrete time survival models to analyze student dropouts at a private university in Peru
description Discrete-time survival models are discussed and applied to the study of which factors are associated with student dropouts at a private university in Lima, Per_u. We studied the characteristics of 26; 790 incoming students enrolled between 2004 and 2012 in all the under-graduate programs at the University. The analysis include the estimation of the survival and hazard functions using the Kaplan-Meier method and the _tting of parametric models using the Cox proportional hazards regression and the Logistic regression for survival analysis, this last one, in order to include time varying variables as predictors. During the period of analysis, the cumulative probability of remain at the University after _ve years was 73.7% [95% CI: 73.1% - 74.4%]. In any period the hazard is greater than 4.4% and this highest value is reached in the 3rd semester. In a multivariate analysis, we found that academic factors (area of study, type of admission, standardized academic performance index, and the percentage of passed credits); economic factors (type of residence, and payment scale); and sociodemographic factors (mother education level, indicators of whether or not parents are alive, and the age of the student) were associated with the risk of dropout. === Tesis
author2 Sal y Rosas, Giancarlo
author_facet Sal y Rosas, Giancarlo
Pebes Trujillo, Miguel Raúl
author Pebes Trujillo, Miguel Raúl
author_sort Pebes Trujillo, Miguel Raúl
title An application of discrete time survival models to analyze student dropouts at a private university in Peru
title_short An application of discrete time survival models to analyze student dropouts at a private university in Peru
title_full An application of discrete time survival models to analyze student dropouts at a private university in Peru
title_fullStr An application of discrete time survival models to analyze student dropouts at a private university in Peru
title_full_unstemmed An application of discrete time survival models to analyze student dropouts at a private university in Peru
title_sort application of discrete time survival models to analyze student dropouts at a private university in peru
publisher Pontificia Universidad Católica del Perú
publishDate 2016
url http://tesis.pucp.edu.pe/repositorio/handle/123456789/6992
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