Title
Ontology-Based Quality Evaluation of Value Generalization Hierarchies for Data Anonymization.
Abstract
In privacy-preserving data publishing, approaches using Value Generalization Hierarchies (VGHs) form an important class of anonymization algorithms. VGHs play a key role in the utility of published datasets as they dictate how the anonymization of the data occurs. For categorical attributes, it is imperative to preserve the semantics of the original data in order to achieve a higher utility. Despite this, semantics have not being formally considered in the specification of VGHs. Moreover, there are no methods that allow the users to assess the quality of their VGH. In this paper, we propose a measurement scheme, based on ontologies, to quantitatively evaluate the quality of VGHs, in terms of semantic consistency and taxonomic organization, with the aim of producing higher-quality anonymizations. We demonstrate, through a case study, how our evaluation scheme can be used to compare the quality of multiple VGHs and can help to identify faulty VGHs.
Year
Venue
Field
2015
privacy in statistical databases
Ontology (information science),Ontology,Data mining,Information retrieval,Computer science,Categorical variable,Data anonymization,Semantic consistency,Data publishing,Hierarchy,Semantics,Database
DocType
Volume
Citations 
Journal
abs/1503.01812
3
PageRank 
References 
Authors
0.44
17
4
Name
Order
Citations
PageRank
Vanessa Ayala-Rivera1183.96
Patrick McDonagh2385.11
Thomas Cerqueus34510.23
Liam Murphy471.61