Anonymization method based on sparse coding for power usage data

Keiya Haradat, Yuta Ohnot, Yuichi Nakamurat, Hiroaki Nishit
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Abstract

In recent years, there have been rapid increases in the number of network-connected devices such as computers, smartphones, and Internet of Things devices. Thus, large amounts of data have been accumulated such as locational data, website search histories, and power usage data. These data are used in various types of services. However, these data cannot be used easily for secondary purposes in some countries because of privacy problems. Therefore, privacy protection is necessary to apply these data in secondary uses where data anonymization is the usual solution. Many conventional methods are used for anonymizing power usage data, but the conventional method has three problems. First, it cannot anonymize time-series data. Second, the information loss is so large in the conventional method that the anonymized data are no longer suitable for secondary uses. Third, the conventional method cannot preserve the type of electrical appliance used. In this study, we propose a method for anonymizing power demand data, where sparse coding is used to solve the three problems that affect the conventional method. The proposed method can anonymize time series-data and it allows data to be analyzed at a chosen time. The proposed method was used to anonymize power usage data from the Urban Design Center Misono (UDCMi) and the experimental error rate decreased compared with the conventional method. The dictionary produced using the proposed method represents the electrical appliance data.
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基于稀疏编码的电力使用数据匿名化方法
近年来,计算机、智能手机、物联网设备等联网设备的数量迅速增加。因此,积累了大量的数据,如位置数据、网站搜索历史、电力使用数据等。这些数据用于各种类型的服务。然而,由于隐私问题,这些数据在一些国家不能轻易用于次要目的。因此,为了将这些数据应用于次要用途,隐私保护是必要的,在次要用途中,数据匿名化是通常的解决方案。许多传统的方法用于匿名化电力使用数据,但传统的方法有三个问题。首先,它不能匿名化时间序列数据。其次,传统方法的信息丢失较大,使得匿名数据不再适合二次使用。第三,传统的方法不能保留所使用的电器的类型。在本研究中,我们提出了一种匿名化电力需求数据的方法,其中使用稀疏编码来解决影响传统方法的三个问题。该方法可以对时间序列数据进行匿名化处理,并允许在选定的时间对数据进行分析。将所提出的方法用于匿名化来自Misono城市设计中心(UDCMi)的电力使用数据,与传统方法相比,实验错误率降低。使用所提出的方法生成的字典表示电器数据。
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