אירועים והרצאות בפקולטה למדעי המחשב ע"ש הנרי ומרילין טאוב
יום ראשון, 04.01.2009, 12:00
חדר 337, בניין טאוב למדעי המחשב
We consider private data analysis in the setting in which a trusted and trustworthy curator,
having obtained a large data set containing private information, releases to the public a
"sanitization'' of the data set that simultaneously protects the privacy of the individual
contributors of data and offers utility to the data analyst. We focus on the case where the
process is non-interactive; once the sanitization has been released the original data and the
curator play no further role.
Blum et al. [STOC '08] showed a remarkable result: for any collection of counting predicate queries,
the exponential mechanism of McSherry and Talwar [FOCS '07] can be used to (inefficiently) generate
a synthetic data set that maintains approximately correct fractional counts for all of the queries,
while ensuring a strong privacy guarantee.
In this work we investigate the computational complexity of such non-interactive privacy mechanisms,
mapping the boundary between feasibility and infeasibility. We show:
1. For any polynomial-size query set C and polynomial-size data universe, an efficient algorithm
for generating a privacy-preserving synthetic data-set that maintains approximate fractional counts,
even when the size of the original dataset is sub-polynomial in |C|.
2. When either the query set or the data universe are super-polynomial, assuming one-way functions exist,
there is no efficient method for releasing a privacy-preserving synthetic data-set that maintains
approximate fractional counts. This also indicates that it is unlikely that the exponential mecahnism
can, in general, be implemented efficiently.
3. Turning to the potentially easier problem of privately generating an arbitrary data structure
(not necessarily synthetic data) from which it is possible to approximate counts, there is a tight
connection between hardness of sanitization and the existence of traitor tracing schemes.
Joint work with Cynthia Dwork, Moni naor, Omer Reingold and Salil Vadhan.