Differential Privacy at the US Census
Data Skeptic6 Nov 2020

Differential Privacy at the US Census

Simson Garfinkel, Senior Computer Scientist for Confidentiality and Data Access at the US Census Bureau, discusses his work modernizing the Census Bureau disclosure avoidance system from private to public disclosure avoidance techniques using differential privacy. Some of the discussion revolves around the topics in the paper Randomness Concerns When Deploying Differential Privacy.

WORKS MENTIONED:


Check out: https://simson.net/page/Differential_privacy


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