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Open AccessBook ChapterDOI

Our data, ourselves: privacy via distributed noise generation

TLDR
In this paper, a distributed protocol for generating shares of random noise, secure against malicious participants, was proposed, where the purpose of the noise generation is to create a distributed implementation of the privacy-preserving statistical databases described in recent papers.
Abstract
In this work we provide efficient distributed protocols for generating shares of random noise, secure against malicious participants. The purpose of the noise generation is to create a distributed implementation of the privacy-preserving statistical databases described in recent papers [14,4,13]. In these databases, privacy is obtained by perturbing the true answer to a database query by the addition of a small amount of Gaussian or exponentially distributed random noise. The computational power of even a simple form of these databases, when the query is just of the form ∑if(di), that is, the sum over all rows i in the database of a function f applied to the data in row i, has been demonstrated in [4]. A distributed implementation eliminates the need for a trusted database administrator. The results for noise generation are of independent interest. The generation of Gaussian noise introduces a technique for distributing shares of many unbiased coins with fewer executions of verifiable secret sharing than would be needed using previous approaches (reduced by a factor of n). The generation of exponentially distributed noise uses two shallow circuits: one for generating many arbitrarily but identically biased coins at an amortized cost of two unbiased random bits apiece, independent of the bias, and the other to combine bits of appropriate biases to obtain an exponential distribution.

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Citations
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Posted Content

On the hardness of the Learning with Errors problem with a discrete reproducible error distribution

TL;DR: This work provides a variant of the Learning with Errors problem that is hard based on conjecturally hard lattice problems and uses a discrete error distribution that is similar to the continuous Gaussian distribution in that it is closed under convolution.
Journal ArticleDOI

Privacy attacks against deep learning models and their countermeasures

TL;DR: In this paper, the authors introduce a survey about the attacks that could be launched against the shared models and the countermeasures that can be taken to preserve the privacy of the sensitive data that is used for the training process.
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Crypt$\epsilon$: Crypto-Assisted Differential Privacy on Untrusted Servers.

TL;DR: This work proposes a system and programming framework that achieves the accuracy guarantees and algorithmic expressibility of the central model without any trusted data collector like in the local model, and demonstrates Crypt's feasibility for practical DP analysis with extensive empirical evaluations on real datasets.
Posted Content

Privacy-preserving Q-Learning with Functional Noise in Continuous State Spaces

TL;DR: This work considers differentially private algorithms for reinforcement learning in continuous spaces, such that neighboring reward functions are indistinguishable, and shows rigorous privacy guarantees by a series of analyses on the kernel of the noise space, the probabilistic bound of such noise samples, and the composition over the iterations.
Posted Content

Closure Properties for Private Classification and Online Prediction

TL;DR: It is proved close to optimal bounds that circumvents this suboptimal dependency on the Littlestone dimension and improved bounds on the sample complexity of private learning are derived algorithmically via transforming a private learners for the original class $\cH$ to a private learner for the composed class~$\cH'$.
References
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Book ChapterDOI

Calibrating noise to sensitivity in private data analysis

TL;DR: In this article, the authors show that for several particular applications substantially less noise is needed than was previously understood to be the case, and also show the separation results showing the increased value of interactive sanitization mechanisms over non-interactive.
Journal ArticleDOI

The Byzantine Generals Problem

TL;DR: The Albanian Generals Problem as mentioned in this paper is a generalization of Dijkstra's dining philosophers problem, where two generals have to come to a common agreement on whether to attack or retreat, but can communicate only by sending messengers who might never arrive.
Book ChapterDOI

The Byzantine generals problem

TL;DR: In this article, a group of generals of the Byzantine army camped with their troops around an enemy city are shown to agree upon a common battle plan using only oral messages, if and only if more than two-thirds of the generals are loyal; so a single traitor can confound two loyal generals.
Journal Article

Calibrating noise to sensitivity in private data analysis

TL;DR: The study is extended to general functions f, proving that privacy can be preserved by calibrating the standard deviation of the noise according to the sensitivity of the function f, which is the amount that any single argument to f can change its output.
Proceedings ArticleDOI

How to play ANY mental game

TL;DR: This work presents a polynomial-time algorithm that, given as a input the description of a game with incomplete information and any number of players, produces a protocol for playing the game that leaks no partial information, provided the majority of the players is honest.