Privacy-Preserving Multidimensional BigData Analytics overBigDataLakes: Models,Techniques,Algorithms

dc.contributor.authorSoufargi, Selim
dc.contributor.authorFortino, Giancarlo
dc.contributor.authorCuzzocrea, Alfredo
dc.date.accessioned2026-04-10T07:21:43Z
dc.date.issued2024-05-15
dc.descriptionUniversità della Calabria. Dipartimento di ingegneria Informatica, Modellistica, Elettronica e Sistemistica. Dottorato di ricerca in: Information and Communication Technologies. Ciclo XXXVI
dc.description.abstractIt iswellestablishedthathealthinformationprivacyisofcrucialvalueand importancetothegoodexecutionofanalyticalprocesses.Theroleofanalyt- ics, ontheotherhand,isalsoknowntobecriticalforprecisionmedicineas wellasforaccuratehealthcarerecommendations.Whiledataanalyticstryto uncoverpatternsintheunderlyinghealthdatatosupportdecisionmaking, privacy,priorly,ensuresthatthesedataarenotexposingsensitiveinforma- tion abouttheindividualsonwhichtheanalyticalprocessisbeingapplied. Unfortunately,existingresearchworksusuallyputemphasisonsolvingei- ther dataprivacyordataanalyticsissuesinsuchawaythatleadstopoor analytical outcomesintermsofaccuracyfordecisionmakingsupport.This challengemotivatesourneedforajointparadigmbetweendataprivacyand data analyticstoenhancethecapabilitiesofcurrentanalysisofhealthcare data toeventuallyenableprecisionmedicine.Indeed,ajointparadigmwould involvethecreationofalgorithmsthatconsiderafullyintegratedprocessthat enables dataanalyticswhilepreventingthedisclosureofidentityinformation. In thisthesis,weproposeseveralalgorithms,frameworksandtechniquesthat speci callyaddressthepreviousmattersandchallengesindatalakecontexts. Indeed, weaimatdevelopingprivacy-preservingdataanalyticstechniquesin big datalakeenvironmentsbasedondi erentkindsofdatatypesandsettings. In fact,dependingonthegoaloftheprivacypreservinganalyticaltasks,we proposetailoredframeworksthat,weargue,e ectivelyande cientlysupport the creationofhealthrelatedrecommendationsandthus,intheQUALITOP context,supportqualityoflifeaftertreatmentsforcancerpatients.
dc.identifier.urihttp://hdl.handle.net/10955/5759
dc.language.isoen
dc.publisherUniversità della Calabria
dc.relation.ispartofseriesING-INF/05
dc.subjectBig data. Big data lakes. Big data privacy. Big data analytics
dc.titlePrivacy-Preserving Multidimensional BigData Analytics overBigDataLakes: Models,Techniques,Algorithms
dc.typeThesis

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