理解荷兰妇女生育意愿中的不确定性叙述:神经主题建模方法

IF 3 2区 社会学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Social Science Computer Review Pub Date : 2024-08-24 DOI:10.1177/08944393241269406
Xiao Xu, Anne Gauthier, Gert Stulp, Antal van den Bosch
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引用次数: 0

摘要

生育意愿的不确定性是理解当代生育决策趋势及其结果的主要障碍。根据收入、种族和住房条件等结构性因素对这种不确定性进行量化被认为是不够的。最近提出的主观叙述框架为衡量生育决策和不确定性背后的因素开辟了一条新途径。通过调查,可以用开放式问题(OEQs)引出此类叙述。然而,分析开放式问题的答案通常需要大量的人工编码,这对样本量造成了限制。自然语言处理(NLP)技术可以帮助研究人员以更少的人力掌握回答背后的基本推理。在本研究中,我们使用自动神经主题建模方法,识别并解释了荷兰妇女关于生育意愿不确定性的叙述背后的主题和题材。我们使用语境化主题模型 (CTM)(一种使用预先训练的荷兰语表征的神经主题模型)进行分析。结果显示,在有关生育计划的叙述中,有九个话题占据主导地位,其中年龄和健康相关问题最为突出。此外,我们还发现,生育意愿的不确定性并不一致,因为因现实生活限制而感到不确定的妇女和根本没有生育计划的妇女所强调的叙述内容大相径庭。
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Understanding Narratives of Uncertainty in Fertility Intentions of Dutch Women: A Neural Topic Modeling Approach
Uncertainty in fertility intentions is a major obstacle to understanding contemporary trends in fertility decision-making and its outcomes. Quantifying this uncertainty by structural factors such as income, ethnicity, and housing conditions is recognized as insufficient. A recently proposed framework on subjective narratives has opened up a new way to gauge factors behind fertility decision-making and uncertainty. Through surveys, such narratives can be elicited with open-ended questions (OEQs). However, analyzing answers to OEQs typically involves extensive human coding, imposing constraints on sample size. Natural Language Processing (NLP) techniques assist researchers in grasping aspects of the underlying reasoning behind responses with much less human effort. In this study, using automatic neural topic modeling methods, we identify and interpret topics and themes underlying the narratives on fertility intention uncertainty of women in the Netherlands. We used Contextualized Topic Models (CTMs), a neural topic model using pre-trained representations of Dutch language, to conduct our analyses. Our results show that nine topics dominate the narratives about fertility planning, with age and health-related issues as the most prominent ones. In addition, we found that uncertainty in fertility intentions is not homogeneous, as women who feel uncertain due to real-life constraints and those who have no fertility plans at all put their stress on vastly different narratives.
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来源期刊
Social Science Computer Review
Social Science Computer Review 社会科学-计算机:跨学科应用
CiteScore
9.00
自引率
4.90%
发文量
95
审稿时长
>12 weeks
期刊介绍: Unique Scope Social Science Computer Review is an interdisciplinary journal covering social science instructional and research applications of computing, as well as societal impacts of informational technology. Topics included: artificial intelligence, business, computational social science theory, computer-assisted survey research, computer-based qualitative analysis, computer simulation, economic modeling, electronic modeling, electronic publishing, geographic information systems, instrumentation and research tools, public administration, social impacts of computing and telecommunications, software evaluation, world-wide web resources for social scientists. Interdisciplinary Nature Because the Uses and impacts of computing are interdisciplinary, so is Social Science Computer Review. The journal is of direct relevance to scholars and scientists in a wide variety of disciplines. In its pages you''ll find work in the following areas: sociology, anthropology, political science, economics, psychology, computer literacy, computer applications, and methodology.
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