Differentially Private Data Analysis of Social Networks via Restricted Sensitivity
Jeremiah Blocki, Avrim Blum, Anupam Datta, Or Sheffet

TL;DR
This paper introduces restricted sensitivity for differentially private data analysis, leveraging prior beliefs about dataset structure to improve accuracy, especially in social network queries, while maintaining privacy.
Contribution
It defines restricted sensitivity as an alternative to global and smooth sensitivity, enabling more accurate private analysis based on dataset hypotheses, with applications to social network queries.
Findings
Restricted sensitivity can be significantly lower than smooth sensitivity.
Efficient methods are developed for graphs of bounded degree.
The approach improves accuracy when the dataset matches the assumed hypothesis.
Abstract
We introduce the notion of restricted sensitivity as an alternative to global and smooth sensitivity to improve accuracy in differentially private data analysis. The definition of restricted sensitivity is similar to that of global sensitivity except that instead of quantifying over all possible datasets, we take advantage of any beliefs about the dataset that a querier may have, to quantify over a restricted class of datasets. Specifically, given a query f and a hypothesis H about the structure of a dataset D, we show generically how to transform f into a new query f_H whose global sensitivity (over all datasets including those that do not satisfy H) matches the restricted sensitivity of the query f. Moreover, if the belief of the querier is correct (i.e., D is in H) then f_H(D) = f(D). If the belief is incorrect, then f_H(D) may be inaccurate. We demonstrate the usefulness of this…
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