ABSTRACT:-
This paper considers a cloud
computing setting in which similarity querying of metric data is outsourced to
a service provider. The data is to be revealed only to trusted users, not to
the service provider or anyone else. Users query the server for the most
similar data objects to a query example. Outsourcing offers the data owner
scalability and a low-initial investment. The need for privacy may be due to
the data being sensitive (e.g., in medicine), valuable (e.g., in astronomy), or
otherwise confidential. Given this setting, the paper presents techniques that
transform the data prior to supplying it to the service provider for similarity
queries on the transformed data. Our techniques provide interesting trade-offs
between query cost and accuracy. They are then further extended to offer an
intuitive privacy guarantee. Empirical studies with real data demonstrate that
the techniques are capable of offering privacy while enabling efficient and
accurate processing of similarity queries.
Keywords:- IEEE Project 2012,
Data Mining Titles, Cloud Computing Titles, Networking Titles,
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