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Taylor linearization sampling errors and design effects for poverty measures and other complex statistics

机译:贫困测度和其他复杂统计数据的泰勒线性化抽样误差和设计效果

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A systematic procedure for the derivation of linearized variables for the estimation of sampling errors of complex nonlinear statistics involved in the analysis of poverty and income inequality is developed. The linearized variable extends the use of standard variance estimation formulae, developed for linear statistics such as sample aggregates, to nonlinear statistics. The context is that of cross-sectional samples of complex design and reasonably large size, as typically used in population-based surveys. Results of application of the procedure to a wide range of poverty and inequality measures are presented. A standardized software for the purpose has been developed and can be provided to interested users on request. Procedures are provided for the estimation of the design effect and its decomposition into the contribution of unequal sample weights and of other design complexities such as clustering and stratification. The consequence of treating a complex statistic as a simple ratio in estimating its sampling error is also quantified. The second theme of the paper is to compare the linearization approach with an alternative approach based on the concept of replication, namely the Jackknife repeated replication (JRR) method. The basis and application of the JRR method is described, the exposition paralleling that of the linearization method but in somewhat less detail. Based on data from an actual national survey, estimates of standard errors and design effects from the two methods are analysed and compared. The numerical results confirm that the two alternative approaches generally give very similar results, though notable differences can exist for certain statistics. Relative advantages and limitations of the approaches are identified.
机译:开发了一种系统化的程序,用于推导线性变量,用于估计参与贫困和收入不平等分析的复杂非线性统计数据的抽样误差。线性化变量将标准方差估计公式的使用扩展到非线性统计数据,该标准方差估计公式是为线性统计(例如样本集合)开发的。上下文是设计复杂且尺寸较大的横截面样本,通常用于基于人口的调查。介绍了将该程序应用于各种贫困和不平等措施的结果。已经开发了用于该目的的标准化软件,并可根据要求将其提供给感兴趣的用户。提供了用于估计设计效果并将其分解为不相等的样本权重和其他设计复杂度(例如聚类和分层)的贡献的程序。还量化了将复杂统计量作为简单比率来估计其抽样误差的结果。本文的第二个主题是将线性化方法与基于复制概念的替代方法(即折刀重复复制(JRR)方法)进行比较。描述了JRR方法的基础和应用,其说明与线性化方法的说明类似,但细节略有减少。根据实际的全国调查数据,对两种方法的标准误和设计效果的估计值进行了分析和比较。数值结果证实,虽然某些统计数据可能存在显着差异,但两种替代方法通常可得出非常相似的结果。确定了方法的相对优势和局限性。

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