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Use of Auxiliary Information in Risk Estimation

机译:在风险估算中使用辅助信息

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In the release of microdata files, reidentification of a record implies disclosure of the values of a possibly large set of sensitive variables. When microdata files are released by statistical Agencies, a careful assessment of the associated disclosure risk is therefore required. In order for an informed decision to be made, maximising accuracy and precision of the risk estimators is crucial. Clearly such characteristics will affect the risk assessment process and Agencies should choose the estimator that performs best. In fact, estimators may perform poorly, especially for those records whose real risk is higher. To improve estimation, we propose to introduce external information, arising from a previous census as is done in the context of small area estimation (see [10]). In [4] we considered SPREE - type estimators that use the association structure observed at a previous census (see [9]); in this paper we consider models that use the structure of a population contingency table while allowing for smooth variation of the latter. To assess the statistical properties of this estimator and compare it with alternative approaches, we show results of a simulation study that is based on a complex sampling scheme, typical of most households surveys in Italy. Comparison is made with a simple SPREE estimator and a Skinner-type estimator [13,6], applied to a complex sampling scheme.
机译:在释放Microdata文件中,记录的重新登封意味着披露可能大量的敏感变量的值。当统计机构发布Microdata文件时,因此需要对相关披露风险进行仔细评估。为了获得明智的决定,最大化风险估计的准确性和精度至关重要。显然,这种特征会影响风险评估过程,机构应该选择表现最好的估算。事实上,估算者可能表现不佳,特别是对于那些真正风险更高的记录。为了改善估计,我们建议引入外部信息,从上一个人口普查中出现,就像在小面积估计的上下文中所做的那样(见[10])。在[4]中,我们考虑使用在以前的人口普查中观察到的关联结构的狂欢型估算(见[9]);在本文中,我们考虑使用人口应急表的结构的模型,同时允许后者的平滑变化。为了评估该估算器的统计特性并将其与替代方法进行比较,我们展示了基于复杂的采样方案的模拟研究的结果,意大利大多数家庭调查的典型。使用简单的狂欢估计和Skinner型估计器[13,6]进行比较,应用于复杂的采样方案。

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