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A software package for the application of probabilistic anonymisation to sensitive individual-level data: a proof of principle with an example from the ALSPAC birth cohort study
2018
Longitudinal and life course studies
Individual-level data require protection from unauthorised access to safeguard confidentiality and security of sensitive information. Risks of disclosure are evaluated through privacy risk assessments and are controlled or minimised before data sharing and integration. The evolution from 'Micro Data Laboratory' traditions (i.e. access in controlled physical locations) to 'Open Data' (i.e. sharing individual-level data) drives the development of efficient anonymisation methods and protection
doi:10.14301/llcs.v9i4.478
fatcat:7ryydcc7rnghdm63wm444lafpe