Message d'état

PURL test ID: finland

Proximity Measurement for Hierarchical Categorical Attributes in Big Data

TitreProximity Measurement for Hierarchical Categorical Attributes in Big Data
Publication TypeJournal Article
Year of Publication2021
AuthorsZ. Ouazzani, E, Braeken, A, H. Bakkali, E
JournalSecurity and Communication Networks
Volume2021
Mots-clésBig data, Categorical attributes, Data utilities, Hierarchical data, Hybrid techniques, Information loss, Large database, Privacy by design, Sensitive informations, Various attacks
Abstract

Nearly most of the organizations store massive amounts of data in large databases for research, statistics, and mining purposes. In most cases, much of the accumulated data contain sensitive information belonging to individuals which may breach privacy. Hence, ensuring privacy in big data is considered a very important issue. The concept of privacy aims to protect sensitive information from various attacks that may violate the identity of individuals. Anonymization techniques are considered the best way to ensure privacy in big data. Various works have been already realized, taking into account horizontal clustering. The L-diversity technique is one of those techniques dealing with sensitive numerical and categorical attributes. However, the majority of anonymization techniques using L-diversity principle for hierarchical data cannot resist the similarity attack and therefore cannot ensure privacy carefully. In order to prevent the similarity attack while preserving data utility, a hybrid technique dealing with categorical attributes is proposed in this paper. Furthermore, we highlighted all the steps of our proposed algorithm with detailed comments. Moreover, the algorithm is implemented and evaluated according to a well-known information loss-based criterion which is Normalized Certainty Penalty (NCP). The obtained results show a good balance between privacy and data utility. © 2021 Zakariae El Ouazzani et al.

URLhttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85111105073&doi=10.1155%2f2021%2f6612923&partnerID=40&md5=a1855aa8b73f4bcdebad1b181b25c7ac
DOI10.1155/2021/6612923
Revues: 

Partenaires

Localisation

Suivez-nous sur

         

    

Contactez-nous

ENSIAS

Avenue Mohammed Ben Abdallah Regragui, Madinat Al Irfane, BP 713, Agdal Rabat, Maroc

  Télécopie : (+212) 5 37 68 60 78

  Secrétariat de direction : 06 61 48 10 97

        Secrétariat général : 06 61 34 09 27

        Service des affaires financières : 06 61 44 76 79

        Service des affaires estudiantines : 06 62 77 10 17 / n.mhirich@um5s.net.ma

        CEDOC ST2I : 06 66 39 75 16

        Résidences : 06 61 82 89 77

Contacts

    

    Compteur de visiteurs:640,316
    Education - This is a contributing Drupal Theme
    Design by WeebPal.