In 1977 Dalenius articulated a desideratum for statistical databases: nothing about an individual should be learnable from
the database that cannot be learned without access to the database. We give a general impossibility result showing that a
formalization of Dalenius’ goal along the lines of semantic security cannot be achieved. Contrary to intuition, a variant
of the result threatens the privacy even of someone not in the database. This state of affairs suggests a new measure, differential privacy, which, intuitively, captures the increased risk to one’s privacy incurred by participating in a database. The techniques
developed in a sequence of papers [8, 13, 3], culminating in those described in [12], can achieve any desired level of privacy
under this measure. In many cases, extremely accurate information about the database can be provided while simultaneously
ensuring very high levels of privacy.