BEPIS is an experimental approach on realizing Epsilon-Differential-Privacy as data anonymization technique for graph database, e.g. Neo4j.
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Updated
May 3, 2020 - Python
BEPIS is an experimental approach on realizing Epsilon-Differential-Privacy as data anonymization technique for graph database, e.g. Neo4j.
In this project we add differential privacy into an openset recognizer.to implement DP we use opacus library.
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