lowlinkability
Lowlinkability is a property of a system or dataset in which it is difficult to associate multiple data points, events, or records with the same entity, such as an individual or account. It aims to prevent the linking of disparate observations to a single source, thereby reducing the risk of re-identification or sensitive inferences. Lowlinkability is closely related to the concepts of unlinkability and anonymity and is often pursued to protect privacy in digital environments.
In practice, lowlinkability is relevant in data publishing, analytics, online tracking, and network privacy. In data
Common approaches to achieve lowlinkability include data minimization, pseudonymization, and anonymization, sometimes complemented by aggregation and
Measuring linkability is an area of study in privacy research and security. Trade-offs between data utility