scholarly journals PP-OMDS: An Effective and Efficient Framework for Supporting Privacy-Preserving OLAP-based Monitoring of Data Streams

Author(s):  
Alfredo Cuzzocrea ◽  
Assaf Schuster ◽  
Gianni Vercelli
2019 ◽  
Vol 87 ◽  
pp. 101570 ◽  
Author(s):  
M.A.P. Chamikara ◽  
P. Bertok ◽  
D. Liu ◽  
S. Camtepe ◽  
I. Khalil

2019 ◽  
Vol 65 ◽  
pp. 423-456
Author(s):  
Ferdinando Fioretto ◽  
Pascal Van Hentenryck

Many applications of machine learning and optimization operate on data streams. While these datasets are fundamental to fuel decision-making algorithms, often they contain sensitive information about individuals, and their usage poses significant privacy risks. Motivated by an application in energy systems, this paper presents OptStream, a novel algorithm for releasing differentially private data streams under the w-event model of privacy. OptStream is a 4-step procedure consisting of sampling, perturbation, reconstruction, and post-processing modules. First, the sampling module selects a small set of points to access in each period of interest. Then, the perturbation module adds noise to the sampled data points to guarantee privacy. Next, the reconstruction module re-assembles non-sampled data points from the perturbed sample points. Finally, the post-processing module uses convex optimization over the privacy-preserving output of the previous modules, as well as the privacy-preserving answers of additional queries on the data stream, to improve accuracy by redistributing the added noise. OptStream is evaluated on a test case involving the release of a real data stream from the largest European transmission operator. Experimental results show that OptStream may not only improve the accuracy of state-of-the-art methods by at least one order of magnitude but also supports accurate load forecasting on the privacy-preserving data.


IEEE Access ◽  
2018 ◽  
Vol 6 ◽  
pp. 23648-23658 ◽  
Author(s):  
Jinyan Wang ◽  
Chaoji Deng ◽  
Xianxian Li

Author(s):  
Abhinay Pandya ◽  
Panos Kostakos ◽  
Hassan Mehmood ◽  
Marta Cortes ◽  
Ekaterina Gilman ◽  
...  

2014 ◽  
pp. 85-90
Author(s):  
Vladimir A. Oleshchuk

We propose to use pattern matching on data streams from sensors in order to monitor and detect events of interest. We study a privacy preserving pattern matching problem where patterns are specified as sequences of constraints on input elements. We propose a new privacy preserving pattern matching algorithm over an infinite alphabet A where a pattern P is given as a sequence { pi , pi ,..., pim } 1 2 of predicates pi j defined on A . The algorithm addresses the following problem: given a pattern P and an input sequence t, find privately all positions i in t where P matches t. The privacy preserving in the context of this paper means that sensor measurements will be evaluated as predicates ( ) pi ej privately, that is, sensors will not need to disclose the measurements ( ) ( ) ( j )


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