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A segmented regression model for event history data: an application to the fertility patterns in Italy

机译:事件历史数据的分段回归模型:在意大利的生育率模式中的应用

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摘要

We propose a segmented discrete-time model for the analysis of event history data in demographic research. Through a unified regression framework, the model provides estimates of the effects of explanatory variables and jointly accommodates flexibly non-proportional differences via segmented relationships. The main appeal relies on ready availability of parameters, changepoints, and slopes, which may provide meaningful and intuitive information on the topic. Furthermore, specific linear constraints on the slopes may also be set to investigate particular patterns. We investigate the intervals between cohabitation and first childbirth and from first to second childbirth using individual data for Italian women from the Second National Survey on Fertility. The model provides insights into dramatic decrease of fertility experienced in Italy, in that it detects a 'common' tendency in delaying the onset of childbearing for the more recent cohorts and a 'specific' postponement strictly depending on the educational level and age at cohabitation.
机译:我们提出了一种细分的离散时间模型,用于人口统计研究中的事件历史数据分析。通过统一的回归框架,该模型提供了对解释变量影响的估计,并通过分段关系共同适应了灵活的非比例差异。主要吸引力在于参数,更改点和斜率的随时可用,这可以提供有关该主题的有意义且直观的信息。此外,还可以设置斜率上的特定线性约束以研究特定模式。我们使用第二次全国生育率调查中意大利妇女的个人数据调查同居与第一次分娩之间以及第一次分娩至第二次分娩之间的间隔。该模型提供了洞悉意大利经历的生育力急剧下降的见解,因为它发现了一个新的趋势,即推迟了最近一批人的生育周期,并严格地根据同居的受教育程度和年龄,确定了“特定”的推迟。

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