差异隐私和 SPARQL

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Semantic Web Pub Date : 2023-12-11 DOI:10.3233/sw-233474
C. Buil-Aranda, Jorge Lobo, Federico Olmedo
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引用次数: 1

摘要

差分隐私是一个框架,它提供了正式的工具,用于开发访问数据库和回答统计查询的算法,并具有可量化的准确性和隐私保证。差分隐私概念的定义与数据模型和查询语言无关。大多数差分隐私结果是在聚合查询(如计数或查找最大值或平均值)和聚合分组查询(如创建直方图)中获得的。迄今为止,框架研究使用的数据模型通常是关系模型和查询语言 SQL。然而,对于需要连接的 SQL 查询,有效实现差异隐私的方法非常有限。这严重限制了在 RDF 知识图谱和 SPARQL 查询中应用差分隐私。由于 RDF 数据的简单性质,访问 RDF 图的大多数有用查询都需要大量使用连接。最近,新的差分隐私技术已经开发出来,可以应用于 SQL 中的多种类型连接,并取得了合理的结果。这就提出了一个问题:这些新成果是否可以应用到 RDF 和 SPARQL 中。在本文中,我们提出了一种算法,该算法可以回答一大类 SPARQL 查询中的计数查询,如果 RDF 图附带有关其结构的语义信息,则该算法可以保证差分隐私。我们已经实现了我们的算法并进行了多次实验,证明了我们的方法在大型图数据库中的可行性。我们的目标是提出一种方法,将其作为实现 SPARQL 和 RDF 差异隐私的扩展和其他实现的垫脚石。
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Differential privacy and SPARQL
Differential privacy is a framework that provides formal tools to develop algorithms to access databases and answer statistical queries with quantifiable accuracy and privacy guarantees. The notions of differential privacy are defined independently of the data model and the query language at steak. Most differential privacy results have been obtained on aggregation queries such as counting or finding maximum or average values, and on grouping queries over aggregations such as the creation of histograms. So far, the data model used by the framework research has typically been the relational model and the query language SQL. However, effective realizations of differential privacy for SQL queries that required joins had been limited. This has imposed severe restrictions on applying differential privacy in RDF knowledge graphs and SPARQL queries. By the simple nature of RDF data, most useful queries accessing RDF graphs will require intensive use of joins. Recently, new differential privacy techniques have been developed that can be applied to many types of joins in SQL with reasonable results. This opened the question of whether these new results carry over to RDF and SPARQL. In this paper we provide a positive answer to this question by presenting an algorithm that can answer counting queries over a large class of SPARQL queries that guarantees differential privacy, if the RDF graph is accompanied with semantic information about its structure. We have implemented our algorithm and conducted several experiments, showing the feasibility of our approach for large graph databases. Our aim has been to present an approach that can be used as a stepping stone towards extensions and other realizations of differential privacy for SPARQL and RDF.
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来源期刊
Semantic Web
Semantic Web COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCEC-COMPUTER SCIENCE, INFORMATION SYSTEMS
CiteScore
8.30
自引率
6.70%
发文量
68
期刊介绍: The journal Semantic Web – Interoperability, Usability, Applicability brings together researchers from various fields which share the vision and need for more effective and meaningful ways to share information across agents and services on the future internet and elsewhere. As such, Semantic Web technologies shall support the seamless integration of data, on-the-fly composition and interoperation of Web services, as well as more intuitive search engines. The semantics – or meaning – of information, however, cannot be defined without a context, which makes personalization, trust, and provenance core topics for Semantic Web research. New retrieval paradigms, user interfaces, and visualization techniques have to unleash the power of the Semantic Web and at the same time hide its complexity from the user. Based on this vision, the journal welcomes contributions ranging from theoretical and foundational research over methods and tools to descriptions of concrete ontologies and applications in all areas. We especially welcome papers which add a social, spatial, and temporal dimension to Semantic Web research, as well as application-oriented papers making use of formal semantics.
期刊最新文献
Wikidata subsetting: Approaches, tools, and evaluation An ontology of 3D environment where a simulated manipulation task takes place (ENVON) Sem@ K: Is my knowledge graph embedding model semantic-aware? Using semantic story maps to describe a territory beyond its map NeuSyRE: Neuro-symbolic visual understanding and reasoning framework based on scene graph enrichment
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