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Spatial and non-spatial model-based protection procedures for the release of business microdata

机译:基于空间和非空间模型的保护过程,用于发布业务微数据

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摘要

In this paper we discuss methodology for the safe release of business microdata. In particular we extend the model-based protection procedure of Franconi and Stander (2002, The Statistician 51: 1-11) by allowing the model to take account of the spatial structure underlying the geographical information in the microdata. We discuss the use of the Gibbs sampler for performing the computations required by this spatial approach. We provide an empirical comparison of these non-spatial and spatial disclosure limitation methods based on the Italian sample from the Community Innovation Survey. We quantify the level of protection achieved for the released microdata and the error induced when various inferences are performed. We find that although the spatial method often induces higher inferential errors, it almost always provides more protection. Moreover the aggregated areas from the spatial procedure can be somewhat more spatially smooth, and hence possibly more meaningful, than those from the non-spatial approach. We discuss possible applications of these model-based protection procedures to more spatially extensive data sets.
机译:在本文中,我们讨论了安全发布业务微数据的方法。特别是,我们通过允许模型考虑微数据中地理信息基础的空间结构,扩展了Franconi和Stander(2002,The Statistician 51:1-11)基于模型的保护程序。我们讨论使用吉布斯采样器执行这种空间方法所需的计算。我们基于来自社区创新调查的意大利样本,对这些非空间和空间披露限制方法进行了经验比较。我们量化了对释放的微数据实现的保护级别以及执行各种推断时引起的错误。我们发现,尽管空间方法通常会导致较高的推断错误,但几乎总是提供更多的保护。此外,与非空间方法相比,来自空间过程的聚合区域在空间上可以更加平滑,因此可能更有意义。我们讨论了这些基于模型的保护程序在空间上更广泛的数据集上的可能应用。

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