COMPARISON OF SURVIVAL ANALYSIS USING ACCELERATED FAILURE TIME MODEL AND COX MODEL FOR RECIDIVIST CASE

Recidivists, or ex-prisoners who commit crimes after serving a prior sentence, pose a critical challenge to the criminal justice system. This study examines social and economic factors that may reduce the likelihood of recidivists being re-arrested. Using survival analysis, the probability that a re...

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Main Authors: Nuraziza Arfan, Asrul Irfanullah, Muhammad Rozzaq Hamidi, Utriweni Mukhaiyar
Format: Article
Language:English
Published: Universitas Pattimura 2025-01-01
Series:Barekeng
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Online Access:https://ojs3.unpatti.ac.id/index.php/barekeng/article/view/14965
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author Nuraziza Arfan
Asrul Irfanullah
Muhammad Rozzaq Hamidi
Utriweni Mukhaiyar
author_facet Nuraziza Arfan
Asrul Irfanullah
Muhammad Rozzaq Hamidi
Utriweni Mukhaiyar
author_sort Nuraziza Arfan
collection DOAJ
description Recidivists, or ex-prisoners who commit crimes after serving a prior sentence, pose a critical challenge to the criminal justice system. This study examines social and economic factors that may reduce the likelihood of recidivists being re-arrested. Using survival analysis, the probability that a recidivist could survive in society without being re-arrested could be estimated. The purpose of this work is to compare the AFT and Cox models to determine which provides a better fit to identify factors affecting the likelihood of re-arrest within one year after release and to statistically assess the impact of these factors. This study utilizes a stratified Cox model to address variables that violate the proportional hazards (PH) assumption. The analysis is limited to four types of AFT models: Weibull, log-normal, log-logistic, and exponential. Results show that the stratified Cox model provides the best fit, based on Akaike Information Criterion (AIC) and Bayesian Information Criterion (BIC). This demonstrates the Cox model's robustness in analyzing survival data, accurately approximating the distribution of survival times without restrictive assumptions, unlike AFT models. The study reveals that recidivists who received financial aid upon release have a  lower risk of re-arrest compared to those who did not, and each additional prior theft arrest increased the risk of re-arrest by 1.09193 times.
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publishDate 2025-01-01
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spelling doaj-art-bc96dfe977a14b30a6eb86023ec2ba6f2025-08-20T03:41:56ZengUniversitas PattimuraBarekeng1978-72272615-30172025-01-0119162964210.30598/barekengvol19iss1pp629-64214965COMPARISON OF SURVIVAL ANALYSIS USING ACCELERATED FAILURE TIME MODEL AND COX MODEL FOR RECIDIVIST CASENuraziza Arfan0Asrul Irfanullah1Muhammad Rozzaq Hamidi2Utriweni Mukhaiyar3Actuarial Master Study Program, Faculty of Mathematics and Natural Sciences, Institut Teknologi Bandung, IndonesiaActuarial Master Study Program, Faculty of Mathematics and Natural Sciences, Institut Teknologi Bandung, IndonesiaActuarial Master Study Program, Faculty of Mathematics and Natural Sciences, Institut Teknologi Bandung, IndonesiaStatistics Research Division, Faculty of Mathematics and Natural Sciences, Institut Teknologi Bandung, IndonesiaRecidivists, or ex-prisoners who commit crimes after serving a prior sentence, pose a critical challenge to the criminal justice system. This study examines social and economic factors that may reduce the likelihood of recidivists being re-arrested. Using survival analysis, the probability that a recidivist could survive in society without being re-arrested could be estimated. The purpose of this work is to compare the AFT and Cox models to determine which provides a better fit to identify factors affecting the likelihood of re-arrest within one year after release and to statistically assess the impact of these factors. This study utilizes a stratified Cox model to address variables that violate the proportional hazards (PH) assumption. The analysis is limited to four types of AFT models: Weibull, log-normal, log-logistic, and exponential. Results show that the stratified Cox model provides the best fit, based on Akaike Information Criterion (AIC) and Bayesian Information Criterion (BIC). This demonstrates the Cox model's robustness in analyzing survival data, accurately approximating the distribution of survival times without restrictive assumptions, unlike AFT models. The study reveals that recidivists who received financial aid upon release have a  lower risk of re-arrest compared to those who did not, and each additional prior theft arrest increased the risk of re-arrest by 1.09193 times.https://ojs3.unpatti.ac.id/index.php/barekeng/article/view/14965accelerated failure timeaicbiccox phrecidivistregressionstratified cox
spellingShingle Nuraziza Arfan
Asrul Irfanullah
Muhammad Rozzaq Hamidi
Utriweni Mukhaiyar
COMPARISON OF SURVIVAL ANALYSIS USING ACCELERATED FAILURE TIME MODEL AND COX MODEL FOR RECIDIVIST CASE
Barekeng
accelerated failure time
aic
bic
cox ph
recidivist
regression
stratified cox
title COMPARISON OF SURVIVAL ANALYSIS USING ACCELERATED FAILURE TIME MODEL AND COX MODEL FOR RECIDIVIST CASE
title_full COMPARISON OF SURVIVAL ANALYSIS USING ACCELERATED FAILURE TIME MODEL AND COX MODEL FOR RECIDIVIST CASE
title_fullStr COMPARISON OF SURVIVAL ANALYSIS USING ACCELERATED FAILURE TIME MODEL AND COX MODEL FOR RECIDIVIST CASE
title_full_unstemmed COMPARISON OF SURVIVAL ANALYSIS USING ACCELERATED FAILURE TIME MODEL AND COX MODEL FOR RECIDIVIST CASE
title_short COMPARISON OF SURVIVAL ANALYSIS USING ACCELERATED FAILURE TIME MODEL AND COX MODEL FOR RECIDIVIST CASE
title_sort comparison of survival analysis using accelerated failure time model and cox model for recidivist case
topic accelerated failure time
aic
bic
cox ph
recidivist
regression
stratified cox
url https://ojs3.unpatti.ac.id/index.php/barekeng/article/view/14965
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AT muhammadrozzaqhamidi comparisonofsurvivalanalysisusingacceleratedfailuretimemodelandcoxmodelforrecidivistcase
AT utriwenimukhaiyar comparisonofsurvivalanalysisusingacceleratedfailuretimemodelandcoxmodelforrecidivistcase