SoK- Differential Privacy as a Causal Property
Offered By: IEEE via YouTube
Course Description
Overview
Explore a comprehensive analysis of differential privacy as a causal property in this 16-minute IEEE conference talk. Delve into formal models comparing associative and causal views of differential privacy, uncovering how the causal perspective offers a simpler characterization without requiring data point independence assumptions. Examine the limitations of the associative view, the relationships among various definitions, and how differential privacy can be represented programmatically. Investigate the differing ranges of effects, common sources of confusion, and how differential privacy bounds effect sizes on changed knowledge. Gain insights into where else differential privacy principles can be found and understand the two main types of privacy discussed. Enhance your understanding of this critical concept in data privacy and its implications for statistical analysis, experimental design, and scientific research.
Syllabus
Sok: Differential Privacy as a Causal Property
Probablity of outputs
A limitation of differential privacy
Relationships among definitions
Represented as a program
Differing ranges of effects
Common source of confusion
Bounds effect size on change knowledge
Differential privacy also found in
Two types of privacy
Taught by
IEEE Symposium on Security and Privacy
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