Differentially Private Selection using Smooth Sensitivity
Akito Yamamoto, Tetsuo Shibuya

TL;DR
This paper introduces a new differentially private selection mechanism leveraging smooth sensitivity, offering improved accuracy over traditional methods by providing rigorous theoretical guarantees and efficient noise generation techniques.
Contribution
It proposes a novel mechanism using smooth sensitivity for private selection, with theoretical proofs, improved noise generation, and empirical validation showing higher accuracy.
Findings
Higher accuracy than global sensitivity-based methods.
Theoretical guarantees of strict privacy.
Efficient noise generation algorithms.
Abstract
With the growing volume of data in society, the need for privacy protection in data analysis also rises. In particular, private selection tasks, wherein the most important information is retrieved under differential privacy are emphasized in a wide range of contexts, including machine learning and medical statistical analysis. However, existing mechanisms use global sensitivity, which may add larger amount of perturbation than is necessary. Therefore, this study proposes a novel mechanism for differentially private selection using the concept of smooth sensitivity and presents theoretical proofs of strict privacy guarantees. Simultaneously, given that the current state-of-the-art algorithm using smooth sensitivity is still of limited use, and that the theoretical analysis of the basic properties of the noise distributions are not yet rigorous, we present fundamental theorems to improve…
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Taxonomy
TopicsGame Theory and Applications · Experimental Behavioral Economics Studies · Auction Theory and Applications
