Comparison of Survival Forests in Analyzing First Birth Interval

M. Saadati, A. Bagheri
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引用次数: 5

Abstract

Arezoo Bagheri, Applied statistics. Associate professor of National Population Studies & Comprehensive Management Institute, Tehran, Iran. arezoo.bagheri@psri.ac.ir Abstract Background and objectives: Application of statistical machine learning methods such as ensemble based approaches in survival analysis has been received considerable interest over the past decades in time-to-event data sets. One of these practical methods is survival forests which have been developed in a variety of contexts due to their high precision, non-parametric and non-linear nature. This article aims to evaluate the performance of survival forests by comparing them with Cox-proportional hazards (CPH) model in studying first birth interval (FBI). Methods: A cross sectional study in 2017 was conducted by the stratified random sampling and a structured questionnaire to gather the information of 610, 15-49-year-old married women in Tehran. Considering some influential covariates on FBI, random survival forest (RSF) and conditional inference forest (CIF) were constructed by bootstrap sampling method (1000 trees) using R-language packages. Then, the best model is used to identify important predictors of FBI by variable importance (VIMP) and minimal depth measures. Results: According to prediction accuracy results by out-of-bag (OOB) C-index and integrated Brier score (IBS), RSF outperforms CPH and CIF in analyzing FBI (C-index of 0.754 for RSF vs 0.688 for CIF and 0.524 for CPH and IBS of 0.076 for RSF vs 0.086 for CIF and 0.107 for CPH). Woman’s age was the most important predictor on FBI. Conclusion: Applying suitable method in analyzing FBI assures the results which be used for making policies to overcome decrement in total fertility rate.
第一胎生育间隔分析中生存林的比较
Arezoo Bagheri,应用统计学。伊朗德黑兰国家人口研究与综合管理研究所副教授。arezoo.bagheri@psri.ac.ir摘要背景和目标:在过去的几十年里,统计机器学习方法的应用,如基于集成的方法在生存分析中的应用,在时间到事件的数据集中受到了相当大的关注。其中一种实用的方法是生存森林,由于其高精度、非参数和非线性的性质,在各种情况下发展起来。本文旨在通过与Cox-proportional hazards (CPH)模型的比较,对初生间隔期(FBI)的成活率进行评价。方法:2017年采用分层随机抽样和结构化问卷的横断面研究方法,收集德黑兰地区15-49岁已婚女性610人的信息。考虑到一些影响FBI的协变量,利用r语言包,采用自举抽样方法(1000棵树)构建了随机生存森林(RSF)和条件推理森林(CIF)。然后,利用最佳模型通过变量重要性(VIMP)和最小深度度量来识别FBI的重要预测因子。结果:根据袋外(OOB) c指数和综合Brier评分(IBS)的预测准确度结果,RSF对FBI的预测优于CPH和CIF (RSF的c指数为0.754,CIF为0.688,CPH为0.524;IBS的RSF为0.076,CIF为0.086,CPH为0.107)。女性的年龄是FBI最重要的预测因素。结论:采用合适的方法对联邦调查局进行分析,可以为制定政策提供依据,以克服总生育率的下降。
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