Anonygator: Privacy and Integrity Preserving Data Aggregation
Abstract
Data aggregation is a key aspect of many distributed
applications, such as distributed sensing, performance monitoring, and
distributed diagnostics. In such settings, user anonymity is a key
concern of the participants. In the absence of an assurance of
anonymity, users may be reluctant to contribute data such as their
location or configuration settings on their computer. In this paper, we
present the design, analysis, implementation, and evaluation of
Anonygator, an anonymity-preserving data aggregation service for
large-scale distributed applications. Anonygator uses anonymous routing
to provide user anonymity by disassociating messages from the hosts that
generated them. It prevents malicious users from uploading
disproportionate amounts of spurious data by using a light-weight
accounting scheme. Finally, Anonygator maintains overall system
scalability by employing a novel distributed tree-based data aggregation
procedure that is robust to pollution attacks. All of these components
are tuned by a customization tool, with a view to achieve specific
anonymity, pollution resistance, and efficiency goals. We have
implemented Anonygator as a service and have used it to prototype three
applications, one of which we have evaluated on PlanetLab. The other two
have been evaluated on a local testbed.
Domains
Digital Libraries [cs.DL]Origin | Files produced by the author(s) |
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