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Privug: Using Probabilistic Programming for Quantifying Leakage in
  Privacy Risk Analysis

Privug: Using Probabilistic Programming for Quantifying Leakage in Privacy Risk Analysis

17 November 2020
Raúl Pardo
Willard Rafnsson
Christian W. Probst
Andrzej Wasowski
    PILM
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Papers citing "Privug: Using Probabilistic Programming for Quantifying Leakage in Privacy Risk Analysis"

2 / 2 papers shown
Title
Exact and Efficient Bayesian Inference for Privacy Risk Quantification
  (Extended Version)
Exact and Efficient Bayesian Inference for Privacy Risk Quantification (Extended Version)
Rasmus C. Rønneberg
Raúl Pardo
Andrzej Wasowski
16
0
0
31 Aug 2023
Privacy with Good Taste: A Case Study in Quantifying Privacy Risks in
  Genetic Scores
Privacy with Good Taste: A Case Study in Quantifying Privacy Risks in Genetic Scores
Raúl Pardo
Willard Rafnsson
Gregor Steinhorn
D. Lavrov
T. Lumley
Christian W. Probst
I. Ziedins
Andrzej Wasowski
11
2
0
26 Aug 2022
1