A Prototype For Learning Privacy-Preserving Data Publising
Name
Rain Oksvort
Abstract
Our data gets collected every day by governments and different organizations for data mining. It is often not known who the receiving part of data is and whether data receiver can be trusted. Therefore it is necessary to anonymize data in a way what it would be not possible to identify persons from released data sets. This master thesis will discuss different threats to privacy, discuss and compare different privacy-preserving methods to mitigate these threats. The thesis will give an overview of different possible implementations for these privacy-preserving methods. The other output of this thesis is educational purpose software that allows students to learn and practice privacy-preserving methods. The final part of this thesis is a validation of designed software.
Graduation Thesis language
English
Graduation Thesis type
Master - Software Engineering
Supervisor(s)
Raimundas Matulevičius
Defence year
2017