私有索引机制的一种组合方法

IF 0.6 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of Digital Forensics Security and Law Pub Date : 2022-01-01 DOI:10.15394/jdfsl.2022.1790
Pranita Desai, V. Shelake
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引用次数: 0

摘要

私有索引是一组用于分析相似或类似研究数据的方法。这在数据库中用于跟踪键及其值。本研究的主要课题是记录链接中的私有索引,以保证数据的安全。由于在大多数国家或数据库中无法访问唯一的个人识别号码或社会安全号码,因此数据链接仅限于诸如出生日期和姓名等属性,以区分记录的数量和它们所代表的现实生活实体。出于安全考虑,需要对这些标识符进行加密。保护隐私的记录链接,经常用于连接来自不同公司的几个数据库中的私人数据,防止敏感信息暴露给其他公司。本研究采用经典索引与新索引相结合的方法对数据进行评价。就隐私而言,组合方法比典型的标准索引更安全。多比特树索引以多种方式对可比较的数据进行分组,它创建了一个可扩展的树状结构,在空间和时间上都很灵活,因为它避免了对冗余块结构的需要。因为要比较的记录对号是两个文件记录号的笛卡尔积,所以所需的工作量随着文件中要比较的记录数量的增加而增加。本研究的评估结果表明,组合方法在要链接的数据库数量、数据库大小和所需时间方面具有可扩展性。
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A Combined Approach For Private Indexing Mechanism
Private indexing is a set of approaches for analyzing research data that are similar or resemble similar ones. This is used in the database to keep track of the keys and their values. The main subject of this research is private indexing in record linkage to secure the data. Because unique personal identification numbers or social security numbers are not accessible in most countries or databases, data linkage is limited to attributes such as date of birth and names to distinguish between the number of records and the real-life entities they represent. For security reasons, the encryption of these identifiers is required. Privacy-preserving record linkage, frequently used to link private data within several databases from different companies, prevents sensitive information from being exposed to other companies. This research used a combined method to evaluate the data, using classic and new indexing methods. A combined approach is more secure than typical standard indexing in terms of privacy. Multibit tree indexing, which groups comparable data in many ways, creates a scalable tree-like structure that is both space and time flexible, as it avoids the need for redundant block structures. Because the record pair numbers to compare are the Cartesian product of both the file record numbers, the work required grows with the number of records to compare in the files. The evaluation findings of this research showed that combined method is scalable in terms of the number of databases to be linked, the database size, and the time required.
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来源期刊
Journal of Digital Forensics Security and Law
Journal of Digital Forensics Security and Law COMPUTER SCIENCE, INFORMATION SYSTEMS-
自引率
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发文量
5
审稿时长
10 weeks
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