The purpose of Secure Multi-Party Computation is to enable protocol participants to compute a public function of their private inputs while keeping their inputs secret, without resorting to any trusted third party. However, opening the public output of such computations inevitably reveals some information about the private inputs. We propose a measure generalising both Rényi entropy and g-entropy so as to quantify this information leakage. In order to control and restrain such information flows, we introduce the notion of function substitution which replaces the computation of a function that reveals sensitive information with that of an approximate function.We exhibit theoretical bounds for the privacy gains that this approach provides and...
ABSTRACT In releasing data with sensitive information, a data owner usually has seemingly conflictin...
A vast number of online services is based on users contributing their personal information. Examples...
Privacy-Preserving Data Publishing (PPDP) deals with the publication of microdata while preserving p...
Secure Multi-Party Computation is a domain of Cryptography that enables several participants to comp...
The problem of reliable function computation is extended by imposing privacy, secrecy, and storage c...
The total variation distance is proposed as a privacy measure in an information disclosure scenario ...
The total variation distance is proposed as a privacy measure in an information disclosure scenario ...
The problem of reliable function computation is extended by imposing privacy, secrecy, and storage c...
We consider interactive computation of randomized functions between two users with the following pri...
Information about the system state is obtained through noisy sensor measurements. This data is coded...
International audienceSecure information flow is the problem of ensuring that the information made p...
Privacy-preserving data release is about disclosing information about useful data while retaining th...
Privacy and security have rapidly emerged as first order design constraints. Users now demand more p...
Across our digital lives, two powerful forces of data utility and data privacy push and pull against...
A privacy-utility tradeoff is developed for an arbitrary set of finite-alphabet source distributions...
ABSTRACT In releasing data with sensitive information, a data owner usually has seemingly conflictin...
A vast number of online services is based on users contributing their personal information. Examples...
Privacy-Preserving Data Publishing (PPDP) deals with the publication of microdata while preserving p...
Secure Multi-Party Computation is a domain of Cryptography that enables several participants to comp...
The problem of reliable function computation is extended by imposing privacy, secrecy, and storage c...
The total variation distance is proposed as a privacy measure in an information disclosure scenario ...
The total variation distance is proposed as a privacy measure in an information disclosure scenario ...
The problem of reliable function computation is extended by imposing privacy, secrecy, and storage c...
We consider interactive computation of randomized functions between two users with the following pri...
Information about the system state is obtained through noisy sensor measurements. This data is coded...
International audienceSecure information flow is the problem of ensuring that the information made p...
Privacy-preserving data release is about disclosing information about useful data while retaining th...
Privacy and security have rapidly emerged as first order design constraints. Users now demand more p...
Across our digital lives, two powerful forces of data utility and data privacy push and pull against...
A privacy-utility tradeoff is developed for an arbitrary set of finite-alphabet source distributions...
ABSTRACT In releasing data with sensitive information, a data owner usually has seemingly conflictin...
A vast number of online services is based on users contributing their personal information. Examples...
Privacy-Preserving Data Publishing (PPDP) deals with the publication of microdata while preserving p...