Comparison of methods used for filling partially unobserved contingency tables

M. Kot, B. Kamiński
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Abstract

In this article, we investigate contingency tables where the entries containing small counts are unknown for data privacy reasons. We propose and test two competitive methods for estimating the unknown entries: our modification of the Iterative Proportional Fitting Procedure (IPFP), and one of the Monte Carlo Markov Chain methods called Shake-and-Bake. We use simulation experiments to test these methods in terms of time complexity and the accuracy of searching the space of feasible solutions. To simplify the estimation procedure, we propose to pre-process partially unknown contingency tables with simple heuristics and dimensionality-reduction techniques to find and fill all trivial entries. Our results demonstrate that if the number of missing cells is not very large, the pre-processing is often enough to find fillings for the unknown values in contingency tables. In the cases where simple heuristics are insufficient, the Shake-and-Bake technique outperforms the modified IPFP in terms of time complexity and the accuracy of searching the space of feasible solutions.
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用于填写部分未观察到的列联表的方法比较
在本文中,我们研究列联表,其中包含小计数的条目由于数据隐私原因是未知的。我们提出并测试了两种用于估计未知条目的竞争性方法:我们对迭代比例拟合程序(IPFP)的修改,以及一种称为Shake-and-Bake的蒙特卡罗马尔可夫链方法。通过仿真实验验证了这些方法的时间复杂度和搜索可行解空间的准确性。为了简化估计过程,我们建议使用简单的启发式和降维技术对部分未知列联表进行预处理,以查找和填充所有平凡条目。我们的结果表明,如果缺失单元格的数量不是很大,预处理通常足以在列联表中找到未知值的填充。在简单启发式算法不足的情况下,Shake-and-Bake技术在时间复杂度和搜索可行解空间的准确性方面优于改进的IPFP。
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