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A Study of Negative Surveys with Background Knowledge

机译:背景知识的负调查研究

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摘要

Negative survey is a privacy-preserving model for collecting sensitive data. In real-world applications, we usually have some background knowledge about the survey or the participants. Moreover, it is also reasonable to collect some non-sensitive information about the survey or participants and use this information as background knowledge in the negative survey to estimate more accurate aggregated results. However, most of previous works have not investigated the usage of background knowledge in negative surveys. In this paper, we investigate the usage of a special kind of background knowledge in the negative survey. Specifically, the background knowledge is the range of the sum of the aggregated results for multiple categories, which is presented as an interval. We introduce a method for estimating aggregated results from the data collected from the negative survey with the background knowledge. Experimental results show that more accurate aggregated results could be estimated by using the background knowledge and our method is effective.
机译:负面调查是一种用于收集敏感数据的隐私保留模型。在现实世界应用中,我们通常对调查或参与者进行一些背景知识。此外,还可以合理地收集有关调查或参与者的一些非敏感信息,并在负面调查中使用此信息作为背景知识来估计更准确的聚合结果。然而,以前的大多数作品都没有调查在负调查中使用背景知识的使用情况。在本文中,我们调查了在负面调查中的特殊背景知识的使用情况。具体地,背景知识是多个类别的聚合结果的总和的范围,其被呈现为间隔。我们介绍一种估计从负面调查所收集的数据的聚合结果的方法,以及背景知识。实验结果表明,通过使用背景知识可以估计更准确的聚合结果,我们的方法是有效的。

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