Distributed data is ubiquitous in
modern information driven applications. With multiple sources of data, the natural
challenge is to determine how to collaborate effectively across proprietary
organizational boundaries while maximizing the utility of collected
information. Since using only local data gives suboptimal utility, techniques
for privacy-preserving collaborative knowledge discovery must be developed.
Existing cryptography-based work for privacy-preserving data mining is still
too slow to be effective for large scale datasets to face today's big data
challenge. Previous work on Random Decision Trees (RDT) shows that it is
possible to generate equivalent and accurate models with much smaller cost. We
exploit the fact that RDTs can naturally fit into a parallel and fully
distributed architecture, and develop protocols to implement privacy-preserving
RDTs that enable general and efficient distributed privacy-preserving knowledge
discovery.
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