Distribution System for Japanese Synthetic Population Data with Protection Level

T. Murata, S. Date, Yusuke Goto, T. Hanawa, Takuya Harada, M. Ichikawa, Lee Hao, M. Munetomo, Akiyoshi Sugiki
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Abstract

In this paper, we introduce a distribution system of synthesized data of Japanese population using Interdisciplinary Large-scale Information Infra-structures in Japan. Synthetic population is synthesized based on the statistics of the census that are conducted by the government and publicly released. Therefore, the synthesized data have no privacy data. However, it is easy to estimate the compositions of households, working status in a certain area from the synthetic population. Therefore, we currently distribute the synthesized data only for public or academic purposes. For academic purposes, it is important to encourage scholars or researchers to use a large-scale data of households, we define protection levels for the attributes in the synthetic populations. According to the protection levels, we distribute the data with proper attributes to those who try to use them. We encourage researchers to use the synthetic populations to be familiar to large-scale data processing.
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日本具有保护等级的综合人口数据分布系统
本文介绍了一种基于跨学科大规模信息基础设施的日本人口综合数据分布系统。综合人口是根据政府进行并公开发布的人口普查统计数据综合而成的。因此,合成数据没有隐私数据。然而,从综合人口中很容易估计出某一地区的家庭组成、工作状况。因此,我们目前仅为公共或学术目的分发合成数据。出于学术目的,鼓励学者或研究人员使用大规模的家庭数据是很重要的,我们定义了合成群体中属性的保护水平。根据保护级别,我们将具有适当属性的数据分发给试图使用它们的人。我们鼓励研究人员使用合成种群来熟悉大规模数据处理。
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