加纳婴儿死亡率抽样估计中的随机不确定性估计

Q3 Social Sciences
A. Kposowa, Jack D Baker, D. Swanson
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引用次数: 0

摘要

作者:Kposowa, A;贝克,J;摘要:©2019-IOS Press及作者。版权所有。婴儿死亡率(IMR)是一项重要的人口卫生统计数据,常被用作衡量一个国家健康状况的指标之一。在许多缺乏适当的生命登记系统的国家,采用抽样方法来估计内部死亡率。然而,对这种方法的评估很少,文献中也没有对这些估计的imr背后的随机不确定性进行评估。随机不确定性反映了这样一个事实,即即使在一个小群体中,随着时间的推移,潜在的IMR是恒定的,其经验观察也有可能出现年度波动,即使它是通过对有关事件的完整计数来测量的。在本研究中,提出了一种可用于评估这种随机不确定性的方法。为此目的,我们以加纳作为案例研究。该方法是一种β -二项模型,对其进行了描述和有效性测试,并使用2014年加纳13个样本地区的基于样本的IMR估计值进行了说明。因此,我们描述的关于基于样本的IMR估计修正的方法旨在考虑随机不确定性,同时保留与抽样不确定性有关的信息。在将该方法应用于加纳时,我们发现基于样本的IMR估计在考虑随机不确定性方面表现良好,并且可以应用于其他地方。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating the stochastic uncertainty in sample-based estimates of infant mortality in Ghana
Author(s): Kposowa, A; Baker, J; Swanson, DA | Abstract: © 2019-IOS Press and the authors. All rights reserved. The Infant Mortality Rate (IMR) is an important population health statistic often used as one of the indicators of the health status of a nation. In many countries lacking adequate vital registration systems, sample methods are used to estimate IMRs. However, evaluations of this approach are rare and the literature contains no assessments of the stochastic uncertainty underlying these estimated IMRs. Stochastic uncertainty reflects the fact that even where the underlying IMR is constant in a small population over time, there is a likelihood of yearly fluctuation in its empirical observations even if it is measured from a complete count of the events of interest. In this study a method is presented that can be used to assess this stochastic uncertainty. We use the country of Ghana as a case study for this purpose. The method, a beta-binomial model, is described, tested for validity, and illustrated using 2014 sample-based estimates of IMR for 13 sample regions in Ghana. As such, the approach we described regarding the revision of sample-based IMR estimates is aimed at taking into account of the stochastic uncertainty while preserving the information concerning the uncertainty due to sampling. In applying the method to Ghana, we find that the sample-based IMR estimates perform well in accounting for stochastic uncertainty and could be applied elsewhere.
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来源期刊
Journal of Economic and Social Measurement
Journal of Economic and Social Measurement Social Sciences-Social Sciences (all)
CiteScore
1.60
自引率
0.00%
发文量
4
期刊介绍: The Journal of Economic and Social Measurement (JESM) is a quarterly journal that is concerned with the investigation of all aspects of production, distribution and use of economic and other societal statistical data, and with the use of computers in that context. JESM publishes articles that consider the statistical methodology of economic and social science measurements. It is concerned with the methods and problems of data distribution, including the design and implementation of data base systems and, more generally, computer software and hardware for distributing and accessing statistical data files. Its focus on computer software also includes the valuation of algorithms and their implementation, assessing the degree to which particular algorithms may yield more or less accurate computed results. It addresses the technical and even legal problems of the collection and use of data, legislation and administrative actions affecting government produced or distributed data files, and similar topics. The journal serves as a forum for the exchange of information and views between data producers and users. In addition, it considers the various uses to which statistical data may be put, particularly to the degree that these uses illustrate or affect the properties of the data. The data considered in JESM are usually economic or social, as mentioned, but this is not a requirement; the editorial policies of JESM do not place a priori restrictions upon the data that might be considered within individual articles. Furthermore, there are no limitations concerning the source of the data.
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