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Privacy Preserving Similarity Evaluation of Time Series Data
Speaker: Dr. George Kollios Boston University Title: "Privacy Preserving Similarity Evaluation of Time Series Data" Date: Monday, 17 March 2014 Time: 4:00pm - 5:00pm Venue: Lecture Theater F (near lifts 25/26), HKUST Abstract: In this talk, I will discuss some recent results on privacy preserving evaluation of the similarity between two time series that belong to two different parties. The goal is the compute the similarity between the two time series without revealing each time series to the other party. We use the Dynamic Time Warping distance to define the similarity between two time series and we present a protocol that tries to hide both the original time series and the dynamic programming matrix that is used to compute the similarity. In addition, we need to hide the path in the matrix that gives the optimal solution. The protocol combines partial homomorphic encryption and random offsets. However, our protocol, although it is orders of magnitude faster than other existing methods, leaks some information and I will discuss an idea to describe and quantify this leakage. An experimental evaluation on some real datasets show that the proposed approach is very promising. In addition, if time permits, I will discuss some recent results on a database-friendly encryption scheme for range queries. ******************** Biography: George Kollios is an Associate Professor in the Computer Science Department at Boston University in Boston, Massachusetts. He received his Diploma in Electrical and Computer Engineering in 1995 from the National Technical University of Athens, Greece; and the M.Sc. and Ph.D. degree in Computer Science from Polytechnic University (now NYU-Poly), New York in 1998 and 2000 respectively. His research interests include temporal and spatio-temporal indexing, data mining, database security, multimedia indexing, and approximation algorithms for large-scale data management problems. His research has been supported by NSF, including an NSF CAREER Award, and IARPA. He is a member of ACM and IEEE Computer Society.