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Bayesian disclosure risk assessment: predicting small frequencies in contingency tables

机译:贝叶斯披露风险评估:预测列联表中的小频率

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摘要

We propose an approach for assessing the risk of individual identification in the release of categorical data. This requires the accurate calculation of predictive probabilities for those cells in a contingency table which have small sample frequencies, making the problem somewhat different from usual contingency table estimation, where interest is generally focused on regions of high probability. Our approach is Bayesian and provides posterior predictive probabilities of identification risk. By incorporating model uncertainty in our analysis, we can provide more realistic estimates of disclosure risk for individual cell counts than are provided by methods which ignore the multivariate structure of the data set.
机译:我们提出了一种方法,用于评估在发布分类数据时个人识别的风险。这要求对列联表中样本频率较小的那些单元格进行准确的预测概率计算,从而使该问题与通常的列联表估计有所不同,后者通常将注意力集中在高概率区域。我们的方法是贝叶斯方法,提供了识别风险的后验预测概率。通过将模型不确定性纳入我们的分析中,与忽略数据集多元结构的方法所提供的方法相比,我们可以为单个单元格计数提供更现实的披露风险估计。

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