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Measuring fertility through mobile‒phone based household surveys: Methods, data quality, and lessons learned from PMA2020 surveys

机译:通过基于移动电话的家庭调查来测量生育率:方法,数据质量和从PMA2020测量的经验教训

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摘要

Background: PMA2020 is a survey platform with resident enumerators using mobile phones. Instead of collecting full birth history, total fertility rates (TFR) have been measured with a limited number of questions on recent births. Employing new approaches provides opportunities to test and advance survey methods. Objective: This study aims to assess the quality of fertility data in PMA2020 surveys, focusing on bias introduced from the questionnaire and completeness and distribution of birth month and year, and to estimate TFR adjusted for identified data quality issues. Methods: To assess underestimation from the questionnaire, we simulated births that would be counted using the PMA2020 questionnaires compared to births identified from full birth history. We analyzed the latest Demographic and Health Surveys in ten countries where PMA2020 surveys have been implemented. We assessed the level of reporting completeness for birth month and year and heaping of birth month, analyzing 39 PMA2020 surveys. Finally, TFR were calculated and adjusted for biases introduced from the questionnaire and heaping in birth month. Results: Simple questions introduced minor bias from undercounting multiple births, which was expected and correctable. Meanwhile, incomplete reporting of birth month was relatively high, and the default value of January in data collection software systematically moved births with missing months out of the reference period. On average across the 39 surveys, TFR increased by 1.6Š and 2.4Š, adjusted for undercounted multiple births and heaping on January, respectively. Contribution: This study emphasizes the importance of enumerator training and provides critical insight in software programming in surveys using mobile technologies.
机译:背景:PMA2020是使用手机的驻留枚举器的调查平台。在最近出生的问题上以有限的问题进行了测量,而不是收集全诞生历史,而不是收集全诞生历史。采用新方法提供了测试和提前调查方法的机会。目的:本研究旨在评估PMA2020调查中的生育数据质量,专注于从调查问卷和出生月份和分发的偏差,并估算了所确定的数据质量问题的TFR调整。方法:为了评估来自调查问卷的低估,我们模拟了与从全诞生历史中识别的出生相比使用PMA2020问卷计算的出生。我们分析了在已实施PMA2020调查的十个国家的最新人口和健康调查。我们评估了出生月份报告完整性和出生月份的灌浆水平,分析了39 PMA2020调查。最后,计算并调整了从问卷中引入的偏差和出生月份堆积的偏差。结果:简单的问题介绍了欠额外诞生的轻微偏见,预计和可纠正。同时,出生月的不完全报告相对较高,1月份的默认值在数据收集软件中系统地移动了参考时期的缺失月份的出生。平均在39次调查中,TFR增加了1.6中和2.4中,分别调整了欠款的多个诞生和1月份。贡献:本研究强调了枚举者培训的重要性,并提供了使用移动技术调查的软件编程的关键洞察。

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