Litcius/Paper detail

Privacy-preserving data publishing: an information-driven distributed genetic algorithm

Yong-Feng Ge, Hua Wang, Jinli Cao, Yanchun Zhang, Xiaohong Jiang

2024World Wide Web27 citationsDOIOpen Access PDF

Abstract

Abstract The privacy-preserving data publishing (PPDP) problem has gained substantial attention from research communities, industries, and governments due to the increasing requirements for data publishing and concerns about data privacy. However, achieving a balance between preserving privacy and maintaining data quality remains a challenging task in PPDP. This paper presents an information-driven distributed genetic algorithm (ID-DGA) that aims to achieve optimal anonymization through attribute generalization and record suppression. The proposed algorithm incorporates various components, including an information-driven crossover operator, an information-driven mutation operator, an information-driven improvement operator, and a two-dimensional selection operator. Furthermore, a distributed population model is utilized to improve population diversity while reducing the running time. Experimental results confirm the superiority of ID-DGA in terms of solution accuracy, convergence speed, and the effectiveness of all the proposed components.

Topics & Concepts

Computer scienceCrossoverOperator (biology)PopulationData publishingGeneralizationData miningGenetic algorithmConvergence (economics)PublishingMachine learningMathematicsChemistryPolitical scienceSociologyEconomic growthEconomicsGeneTranscription factorMathematical analysisDemographyRepressorLawBiochemistryPrivacy-Preserving Technologies in DataMobile Crowdsensing and CrowdsourcingPrivacy, Security, and Data Protection