Local Node Differential Privacy
Sofya Raskhodnikova, Adam Smith, Connor Wagaman, Anatoly Zavyalov

TL;DR
This paper introduces a novel framework for node differential privacy in graphs within the local model, enabling accurate graph statistic queries while establishing optimality and lower bounds.
Contribution
It develops a new algorithmic framework based on the blurry degree distribution for accurate, private graph analysis in the local model, matching central model accuracy in some cases.
Findings
Framework accurately answers degree distribution queries.
Algorithms match central model accuracy for certain problems.
Lower bounds demonstrate the optimality of the proposed algorithms.
Abstract
We initiate an investigation of node differential privacy for graphs in the local model of private data analysis. In our model, dubbed LNDP*, each node sees its own edge list and releases the output of a local randomizer on this input. These outputs are aggregated by an untrusted server to obtain a final output. We develop a novel algorithmic framework for this setting that allows us to accurately answer arbitrary linear queries about the input graph's degree distribution. Our framework is based on a new object, called the blurry degree distribution, which closely approximates the degree distribution and has lower sensitivity. Instead of answering queries about the degree distribution directly, our algorithms answer queries about the blurry degree distribution. This framework yields accurate LNDP* algorithms for the edge count, PMF and CDF of the degree distribution, and other graph…
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