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This presentation outlines a formal model for K-anonymity, a technique designed to protect individual privacy in data sharing contexts. We explore the computation of K-minimal generalization, which minimizes data distortion while ensuring anonymity. The presentation discusses preferences related to the released tables to maintain utility in data while achieving anonymity. In an interconnected society where data dissemination is prevalent, understanding these privacy-preserving methods is crucial for responsible data use and sharing.
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