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A unified mathematical programming framework for different statistical disclosure limitation methods

机译:适用于不同统计披露限制方法的统一数学编程框架

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This paper concerns statistical disclosure control methods to minimize information loss while keeping small the disclosure risk from different data snoopers. This issue is of primary importance in practice for statistical agencies when publishing data. It is assumed that the sensitive data have been identified by practitioners in the statistical offices, and the paper addresses the secondary problem of protecting these data with different methods, all defined in a unified mathematical framework. A common definition of protection is used in four different methodologies. Two integer linear programming models described in the literature for the cell suppression methodology are extended to work also for the controlled rounding methodology. In addition, two relaxed variants are presented using two associated linear programming models, called partial cell suppression and partial controlled rounding, respectively. A final discussion shows how to combine the four methods and how to implement a cutting-plane approach for the exact and heuristic resolution of the combinatorial problems in practice. This approach was implemented in ARGUS, a software package of disclosure limitation tools.
机译:本文涉及统计披露控制方法,以最大程度地减少信息丢失,同时保持来自不同数据侦听器的披露风险较小。对于发布数据的统计机构,此问题在实践中至关重要。假定敏感数据已由统计部门的从业人员识别,并且本文解决了用不同方法保护这些数据的第二个问题,所有方法均在统一的数学框架中定义。四种不同的方法使用了通用的保护定义。文献中针对细胞抑制方法描述的两个整数线性规划模型被扩展为也适用于受控舍入方法。此外,使用两个相关联的线性编程模型分别提出了两个宽松的变体,分别称为部分单元抑制和部分控制的舍入。最后的讨论显示了如何结合这四种方法,以及如何为实现组合问题的精确和启发式解决方案实施切平面方法。该方法已在ARGUS(披露限制工具的软件包)中实施。

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